Post on 07-Feb-2018
INTRASEASONAL OSCILLATIONSAND INTERANNUAL VARIABILITY OF
THE INDIAN SUMMER MONSOON
A thesis submitted for the award of the degree ofDoctor of Philosophy
in theFaculty of Engineering
by
R. S. AJAYA MOHAN
Centre for Atmospheric and Oceanic SciencesIndian Institute of Science
Bangalore 560 012INDIA
NOVEMBER 2001
Dedicated to My Parents
”I looked forward to the coming of the monsoon and I became a watcher of skies,waiting to spot the heralds the preceded the attack. A few showers came. Oh! thatwas nothing, I was told; the monsoon has yet to come. Heavier rains followed, butI ignored them and waited for some extraordinary happening. While I waited I learntfrom various people that the monsoon had definitely come and established itself. Wherewas the pomp and circumstance and the glory of the attack, and the combat betweencloud and land, and the surging and lashing sea? Like a thief in the night the monsoonhad come to Bombay, as well it might have done in Allahabad or elsewhere. Anotherillusion gone”
Jawaharlal Nehru, The monsoon comes to Bombay, 1939
Contents
Acknowledgements i
Abstract iii
Acronyms viii
List of Figures ix
1 Introduction 11.1 Objectives . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . 81.2 Datasets . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . 9
1.2.1 Reanalysis Data . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . 91.2.2 NOAA Outgoing Long wave Radiation (OLR) Dataset . . . . . . . 101.2.3 Precipitation Datasets . . . . . . . . . . . . . . . . . . . . . . . . . . 111.2.4 Statistics of Low Pressure Systems . . . . . . . . . . . . . . . . . . . 12
2 Basic Characteristics of Monsoon Intraseasonal Oscillations 132.1 Methodology . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . 132.2 Propagation Characteristics . . . . . . . . . . . . . . . . . . . . . . . . . . . 162.3 A Circulation Criterion for ’Active’ and ’Break’ Phases . . . . . . . . . . . 192.4 Mean Structure of ISOs . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . 212.5 Meridional Bimodality of ISO Spatial Structure . . . . . . . . . . . . . . . . 302.6 Discussions and Conclusions . . . . . . . . . . . . . . . . . . . . . . . . . . 32
3 Intraseasonal Oscillations and Interannual Variability of the Indian SummerMonsoon 343.1 A Common Spatial Mode of Intraseasonal and Interannual Variability . . 343.2 Probability of ’Active’/’Break’ Conditions and Seasonal Mean Monsoon . 403.3 Interannual Variations of ISO Activity and Seasonal Mean Monsoon . . . 503.4 Discussions and Conclusions . . . . . . . . . . . . . . . . . . . . . . . . . . 51
4 Estimate of Potential Predictability of Monthly and Seasonal Means in Tropicsfrom Observations 554.1 Introduction . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . 554.2 Estimation of Potential Predictability of Monthly Means . . . . . . . . . . . 58
4.2.1 Methodology . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . 584.2.2 Estimation of ’Internal’ and ’External’ Interannual Variances . . . . 654.2.3 Potential Predictability of Monthly Means . . . . . . . . . . . . . . 68
4.3 Potential Predictability of Seasonal means . . . . . . . . . . . . . . . . . . . 764.4 Discussions and Conclusions . . . . . . . . . . . . . . . . . . . . . . . . . . 82
4.5 Appendix : Procedure for Estimating ’Climate Noise’ . . . . . . . . . . . . 85
5 Clustering of Synoptic Systems During the Indian Summer Monsoon by In-traseasonal Oscillations 875.1 Introduction . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . 875.2 Wet and Dry Spells and Clustering of LPS . . . . . . . . . . . . . . . . . . . 895.3 Monsoon Intraseasonal Oscillation Index . . . . . . . . . . . . . . . . . . . 915.4 Clustering of Genesis of LPS by Intraseasonal Oscillations . . . . . . . . . 915.5 Summary and Conclusions . . . . . . . . . . . . . . . . . . . . . . . . . . . 95
6 Conclusions 96
Bibliography 100
Acknowledgments
I am fortunate to have got a chance to work with Prof B. N. Goswami. The vastness
of his knowledge and his abundant enthusiasm to seek new results has always been
a source of encouragement to me. His critical appraisals and encouragement of inde-
pendent thought during discussions have contributed immensely to the course of this
thesis. It helped smoothen many hurdles. His calm and collective approach was invalu-
able in putting things in the right perspective. He shall always remain in my mind as a
model of an intelligent, enthusiastic and hardworking man-of-science.
Many thanks are due to the faculty in CAOS, especially Prof Sengupta and Prof
Srinivasan for many informal discussions and encouragement. The cheerful and help-
ful people in CAOS, supporting staff, project staff and students deserve appreciation.
Rama, Padma, Mohan, Raja and Shiva were always obliging despite their strenuous
work load. Thanks are due to Natraj, Rajasekhar and Srinivas for helping me in solving
system related problems. It was a pleasure to work with Rajendran, Sajani, Anagani,
Janakiraman, J V S Raju, Salil, Arindam, Chandru and Pallav. Informal discussions/chat
with Retish, Prince, Francis, Vinoj and Simi both within the department and in Raf-
fique’s Tea-kiosk is fondly acknowledged. No words can express my gratitude to Manu
as she has been a constant source of support and encouragement.
I would like to acknowledge interactions with Prof N. Balakrishnan for I have learned
a lot from him. His vision and cool and collected approach was indeed impressive. I
will be failing in my duty, if I do not thank Prof G. Padmanabhan - He taught me how
simple and straightforward a human being should be.
I am grateful to Prof M. Ghil, Dr M. Kimoto and Dr A. Robertson for providing
information regarding probability density estimation.
Thanks are due to the faculty in Department of Atmospheric Science, Cochin Uni-
versity of Science & Technology, especially Prof Mohan Kumar for encouraging me to
take up a research career.
Acknowledgements ii
I cherish the brief interaction with Bharataratna Dr A.P.J Abdul Kalam. His words
’Only strength respects strength’ gave me a fresh sense of enthusiasm to work for this
great country.
Working for Students’ council helped me understand problems of others and gave
me ample opportunity to interact with all kinds of people. This was also an oppor-
tunity to befriend many. I would like to acknowledge the support and friendship of
Saishankar, Rajkumar, Vasan, Ganesh, Guruprasad, Pratap Jayaprakash, John, Dhruba
and Suresh. Special thanks are due to Brar and Suma for, they offered good company.
Thanks are due to the the ’famous mallu gang’ as the friendship they offered is
matchless. Cheers to Venu, Anoop (simplan) and Bijoy. It is pleasure to have friends like
Anil (kunz), Hari (healy), Glomin (RC), Anil (aavi), Suresh (kumily), Manoj (neergosh),
Prabhu, Randhir (kuru), Baiju, Ajayan, Sameen, John, Vinay and Vinod. Thanks are
also due to Pappan and Pappy, Suresh (cobra) and Sridevi, Sunoj and Viji. Let me
acknowledge the support offered by Sriram.
Finally, my deepest sense of gratitude go to my parents and my family for their
goodwill and blessings. I am grateful to my father for sharing all my worries and hap-
piness. Without his constant encouragement this thesis would not have been possible.
Innumerable phone calls gave me a feeling that I am at home, away from home. I shall
always strive to rise up to his expectations.
Thanks to all the unknown faces that continue to develop and strive for free soft-
ware. Working with ”LINUX”, ”GrADS” and ”LATEX” and numerous other free soft-
ware made life easier in the pursuit of this thesis. Thanks are due to SERC for high
power computing.
Last but not least, let me thank Indian Institute of Science and Council of Scientific
and Industrial Research for providing financial support.
Abstract
Several modeling studies show that the predictability of the seasonal mean Indian
summer monsoon is limited due to a significant fraction of the interannual variability of
the seasonal mean being governed by internal chaotic dynamics. What causes the inter-
nal low frequency variations of the Indian summer monsoon? One possible candidate
is the monsoon intraseasonal oscillations (ISOs). Indian summer monsoon has vigorous
intraseasonal oscillations in the form of ’active’ and weak (or ’break’) spells of monsoon
rainfall within the summer monsoon season. These ’active’ and ’break’ spells of the
monsoon are associated with fluctuations of the tropical convergence zone. Temporally
ISOs of the Indian summer monsoon represent two preferred bands of periods, one be-
tween 10 and 20 days and the other between 30 and 60 days. As the separation between
the dominant ISO periods and the season is not large, the statistics of the ISOs could,
in principle, influence the seasonal mean monsoon and it’s interannual variability. To
the extent that the ISOs are intrinsically chaotic and unpredictable, the predictability of
the Indian summer monsoon would depend on relative contribution of the ISOs to the
seasonal mean compared to the more predictable externally forced component.
Therefore, it is of great importance to establish (a) whether there exits a physical
basis for monsoon ISOs to influence the seasonal mean. (b) Even if there exits a physi-
cal basis for the ISOs to influence the seasonal mean, is there an empirical evidence of
association between some statistics of the ISOs and interannual variability of the Indian
summer monsoon? (c) If such an association between monsoon ISOs and the seasonal
mean monsoon exits, it would be desirable to make quantitative estimate of the extent
to which ISOs influence the seasonal mean and its interannual variability. The primary
objectives of this study are to address these three issues using sufficiently long homoge-
neous daily circulation and convection data. Although spatial and temporal structures
of the monsoon ISOs have been examined extensively, the relationship between ISOs
and interannual variability has received little attention in the past. The existing litera-
ture on the subject is critically reviewed in Chapter 1.
Abstract iv
In an attempt to establish the physical basis for the ISOs to influence the seasonal
mean, we first examine the similarity between the spatial structure of the ISOs and the
seasonal mean. The large scale nature of the Indian summer monsoon ISOs and rela-
tionship between circulation and convection on this time scale are investigated using
42-years (1956-1997) daily circulation data from NCEP/NCAR reanalysis and satellite
derived outgoing long wave radiation data for the period 1974-1997. Traditionally, ’ac-
tive’ and ’break’ conditions or the dry and wet spells of the monsoon ISO are defined
based on continental precipitation. Arguing that the dry and wet spells are part of large
scale fluctuations associated with the ISO, a circulation based criterion is devised to de-
fine ’active’ and ’break’ monsoon conditions using zonal winds at 850 hPa over the Bay
of Bengal. Although the ISOs vary in intensity and period, it is shown that, the under-
lying spatial structure of a typical ISO cycle in circulation and convection is invariant
over the years and is constructed using a composite technique. Typical ISOs have large
scale horizontal structure similar to the seasonal mean and intensifies (weakens) the
mean flow during it’s ’active’ (’break’) phase. A typical ’active’ (’break’) phase is also
associated with enhanced (decreased) cyclonic low-level vorticity and convection and
anomalous upward (downward) motion in the northern position of the tropical con-
vergence zone (TCZ) and decreased (increased) convection and anomalous downward
(upward) motion in the southern position of the TCZ. The cycle evolves with a north-
ward propagation of the TCZ and convection from the southern to the northern position
of the TCZ. Thus the ISOs result in spinning up (or spinning down) of the large scale
mean monsoon circulation in it’s extreme phases. (Chapter 2)
A physical basis for ISOs to influence the seasonal mean and it’s interannual vari-
ability is established when it is shown that the intraseasonal and interannual variations
are governed by a common mode of spatial variability. The spatial pattern of standard
deviation of intraseasonal and interannual variability of low-level vorticity is shown to
be similar. The spatial pattern of the dominant mode of ISO variability of the low-level
winds is also shown to be similar to that of the interannual variability of the seasonal
mean winds. The similarity between the spatial patterns of the two variability indi-
cates that higher frequency of occurrence of ’active’ (’break’) conditions would result in
’stronger’ (’weaker’) than normal seasonal mean. This possibility is tested by calculat-
ing probability density function (PDF) of the ISO activity in the low-level vorticity repre-
sented by the two dominant empirical orthogonal functions (EOFs). The PDF estimates
for ’strong’ monsoon years and ’weak’ monsoon years are shown to be asymmetric in
Abstract v
both the cases. It is seen that the ’strong’ (’weak’) monsoon years are associated with
higher probability of occurrence of ’active’ (’break’) conditions. This result is further
supported by calculation of PDF of ISO activity from combined vorticity and outgoing
long wave radiation. This result, indicates that the frequency of intraseasonal pattern
determine the seasonal mean. As the ISOs are essentially chaotic, it raises an important
question on predictability of the Indian summer monsoon. (Chapter 3)
Having shown that the ISOs can influence the seasonal mean and its interannual
variability, the next objective is to make quantitative estimates of potential predictabil-
ity of the monsoon climate. A measure of potential predictability of the monthly and
seasonal means in a place could be obtained from the ratio of variances associated with
the ’external’ to the ’internal’ components. A method of separating the ’external’ com-
ponent arising from contributions from slowly varying boundary forcing from the ’in-
ternal’ components (e.g. intraseasonal oscillations) that determines the potential pre-
dictability of the monthly mean tropical climate is proposed. Based on 33 years of daily
low-level wind observations and 24 years of satellite observations of outgoing long
wave radiation, we show that the Indian monsoon climate is marginally predictable
on monthly time scales as the contribution from the boundary forcing in this region
is comparable to that from the internal dynamics. It is further shown that excluding
the Indian monsoon region, the predictable region is larger and predictability is higher
in the tropics during northern summer. Even though the boundary forced variance is
large during northern winter, the predictable region is smaller as the internal variance is
larger and covers a larger region during northern winter due to stronger intraseasonal
activity. It is also shown that most of the internal low frequency variability in the Indian
summer monsoon region arise from the ISOs. (Chapter 4)
An estimate of potential predictability for the Northern Hemisphere summer and
winter seasons in the tropics has also been made using an established method of esti-
mating ’climate noise’. Even on seasonal mean time scales, we show that the Indian
monsoon climate is only marginally predictable as the contribution of the boundary
forcing in this region is relatively low and that of the internal dynamics is relatively
large. (Chapter 4)
While the monsoon ISOs seem to lead to decrease in the predictability of monthly
or seasonal mean monsoon climate, it is possible that the same ISOs lead to extended
range prediction of spells of synoptic activity. We recall that the seasonal mean mon-
soon is strengthened in one phase of the ISOs (active phase) while it is weakened in
Abstract vi
another (’break’) phase of the monsoon. The main rain bearing system during the mon-
soon season are the Low Pressure Systems (LPS) consisting of lows and depressions.
Since the genesis of the LPS depends on the horizontal shear and low-level vorticity, it
is possible that more LPS form in the active phase relative to the break phase. In other
words, large scale circulation associated with the ISOs could modulate the frequency
of genesis of LPS. We examined how the LPS are modulated by the intraseasonal oscil-
lations. Using more than 40 years of LPS genesis statistics and daily circulation data,
here we show that the dry and wet spells are the result of clustering of lows and de-
pressions caused by modulation of the large scale monsoon flow by the intraseasonal
oscillations. The slow evolution of the ISOs may permit extended range prediction of
the ISO phases and through them dry and wet spells of the Indian summer monsoon
(Chapter 5). Major results and outstanding issues are discussed in Chapter 6.
Publications
1. B.N Goswami and R.S Ajaya Mohan, 2001: Intraseasonal Oscillations and Int
erannual Variability of Indian Summer Monsoon. J.Climate, 14, 1180 -1198.
2. B.N Goswami and R.S. Ajaya Mohan, 2001: Estimate of Predictability of Monthly
Means in Tropics from Observations. Curr.Sci., 80, 56-63.
3. R. S. Ajaya Mohan and B.N. Goswami, 2000: A Common spatial mode for in-
traseasonal and interannual variation and predictability of the Indian Summer
Monsoon. Curr.Sci., 79, 1106-1111.
4. B.N Goswami and R.S. Ajaya Mohan, 2001: Intra-seasonal Oscillations and pre-
dictability of the Indian summer monsoon. Proc.Ind.Nat.Sci.Aca., 67A (3), 369-383.
5. B.N Goswami, R.S Ajaya Mohan, Prince K Xavier and D. Sengupta 2001: Cluster-
ing of low-pressure systems during the Indian summer monsoon by Intraseasonal
Oscillations, Geophys.Res.Letts, 30, 1431, doi:10.1029/2002GL016734.
6. R. S. Ajaya Mohan and B. N. Goswami 2003: Potential predictability of the Asian
Summer Monsoon on Monthly and Seasonal Time Scales, Meteorol.Atmos.Phys.,
84, 83-100.
7. B.N Goswami and R.S Ajaya Mohan, 2005: Multi-scale interactions and pre-
dictability of the Indian summer monsoon, section 3 in Nonequillibrium Phenomena
Abstract vii
in Plasmas, Eds. Sharma, A. Surjalal, Kaw Predhiman, K, IX, 347p, ISBN: 1-4020-
3108-4, Springer, USA.
Acronyms
AGCM Atmospheric General Circulation Model
AMIP Atmospheric General Circulation Model Intercomparison Project
CEOF Combined Empirical Orthogonal Function
CMAP Climate prediction center Merged Analysis of Precipitation
DJF December-January-February
ENSO El Nino-Southern Oscillation
EOF Empirical Orthogonal Function
JJA June-July-August
JJAS June-July-August-September
IMD India Meteorological Department
IMR All India Monsoon Rainfall Index
ISOs Intraseasonal oscillations
LPS Low Pressure Systems
MISI Monsoon Intraseasonal Oscillation Index
MTV Monsoon Trough Vorticity
NCAR National Center for Atmospheric Research
NCEP National Centers for Environmental Prediction
NH Northern Hemisphere
OLR Outgoing Long wave Radiation
PC Principal Component
PDF Probability Density Function
SD Standard Deviation
TCZ Tropical Convergence Zone
U850 Low level zonal winds (850 hPa)
U200 Upper level zonal winds (200 hPa)
Z700 Geopotential height (700 hPa)
List of Figures
2.1 Climatological mean (JJAS) monsoon winds (ms−1) and precipitation (mm.day−1).
(a) 850 hPa vector winds, (b) Relative vorticity at 850 hPa (10−6s−1), (c) 200 hPa
vector winds, (d) Precipitation from Xie and Arkin [1997]. . . . . . . . . . . . . . 14
2.2 Some examples of raw time series of zonal winds at 850 hPa at a few selected
points during 1990. (Left panels) Daily zonal winds (ms−1) with the annual cy-
cle (annual and semi-annual harmonics, green lines). (Right panels) Anomalous
daily zonal winds (ms−1). . . . . . . . . . . . . . . . . . . . . . . . . . . . . . 15
2.3 Examples of spectra of zonal winds and OLR for a typical year (1984) at a typical
point (90◦E, 10◦N). . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . 15
2.4 An example illustrating the horizontal scale and vertical structure of the domi-
nant ISO mode. (a) Lag-zero correlations of the 850 hPa 30-60 day filtered zonal
winds with respect to a reference point (85◦E, 10◦N). (b) Lag-zero correlations
between 30-60 day filtered zonal winds at 850 hPa and 200 hPa at each grid
point. Correlations are calculated between May 1 and October 31 of 1990. Cor-
relations exceeding 0.2 are significant at 95% confidence level. . . . . . . . . . . 17
2.5 (a) Correlations between 30-60 day filtered zonal winds at 850 hPa with respect
to that at a reference point (85◦E, 10◦N) at different lead/lags averaged over
(80◦E-90◦E) for 1990. (b) Same as (a) but for 30-60 day filtered OLR. Starting
contour is ±0.1 and contour interval is 0.2. . . . . . . . . . . . . . . . . . . . . . 18
2.6 (a) Correlations between 30-60 day filtered zonal winds at 850 hPa with respect
to that at a reference point (85◦E, 10◦N) at different lead/lags averaged over
(10◦N-20◦N) for 1990. (b) Same as (a) but for 30-60 day filtered OLR. Starting
contour is ±0.1 and contour interval is 0.2. . . . . . . . . . . . . . . . . . . . . 18
List of Figures x
2.7 (a) An example of 30-60 day filtered zonal winds for 1986 at a reference point
(90◦E, 15◦N). The thin horizontal lines correspond to +1 and -1 standard devi-
ations. ’Active’ (’break’) days are defined as days for which the filtered zonal
winds at the reference point are greater than +1 S.D (or less than -1 S.D). (b) 12-
year (1978-1989) mean precipitation difference (mm.day−1) between all ’active’
and ’break’ composites. Contours are ±(1, 3, 5, 7, 9, 11, 13, 15). . . . . . . . . . . 20
2.8 (a,b) Climatological mean composite vector wind anomalies (ms−1) at 850 hPa
corresponding to ’active’ and ’break’ conditions for the 30-60 day mode and
(c,d) associated relative vorticity (10−6s−1). The climatological mean composite
is calculated by averaging all ’active’ and ’break’ conditions occurring during
the 20-year period (1978-1997). Shading in the upper panels indicates regions
with anomalies significant above 90% confidence level. . . . . . . . . . . . . . . 21
2.9 Climatological mean composite vector wind anomalies (ms−1) corresponding
to ’active’ and ’break’ conditions for the 30-60 day mode (a,b) at 500 hPa and
(c,d) at 200 hPa. The climatological mean composite is calculated by averaging
all ’active’ and ’break’ conditions occurring during the 20-year period (1978-
1997). Shading indicates regions with anomalies significant above 90% confi-
dence level. . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . 22
2.10 Climatological mean composite OLR anomalies (Wm−2) corresponding to ’ac-
tive’ and ’break’ conditions. ’Active’ and ’break’ composites are constructed
using unfiltered OLR anomalies and the same ’active’ and ’break’ dates defined
by 30-60 day filtered zonal wind anomalies as used in Figure 2.8. OLR anomalies
above 5 Wm−2 are significant above 90% confidence level. . . . . . . . . . . . . 23
2.11 Climatological mean composite pressure vertical velocity anomalies (ω) at 500
hPa (hPas−1). Again the same ’active’ and ’break’ dates chosen from 30-60 day
filtered zonal wind anomalies for the 20-year period (1978-1997) as used in Fig-
ure 2.8 and Figure 2.10 are used. . . . . . . . . . . . . . . . . . . . . . . . . . . 24
2.12 Climatological mean composite vector wind anomalies (ms−1) at 850 hPa and
associated relative vorticity (10−6s−1) corresponding to eight phases of evolu-
tion of the 30-60 day mode for the period 1979-1989. The phase-1 corresponds
to the days when the filtered zonal wind anomalies at the reference point is zero
and increasing toward positive values. . . . . . . . . . . . . . . . . . . . . . . . 27
List of Figures xi
2.13 Climatological mean composite OLR anomalies (Wm−2) corresponding to eight
phases of evolution of the 30-60 day mode for the period 1979-1997. Eight com-
posite phases are constructed using unfiltered OLR anomalies and the same
dates defined by 30-60 day filtered zonal winds as used in Figure 2.12. . . . . . . 28
2.14 (a,b) Climatological mean composite vector wind anomalies (ms−1) at 850 hPa
corresponding to ’active’ and ’break’ conditions for the 10-20 day mode and
(c,d) associated relative vorticity (10−6s−1). The climatological mean composite
is calculated by averaging all ’active’ and ’break’ conditions occurring during
the 20-year period (1978-1997). . . . . . . . . . . . . . . . . . . . . . . . . . . . 29
2.15 Meridional bimodality of spatial structure of the dominant ISO. (a) Scatter plot
of daily 30-60 day filtered vorticity at 850 hPa (10−6s−1) over a northern band
(70◦E-100◦E, 12◦N-22◦N) and a southern band (70◦E-100◦E, 5◦S-10◦N) during
1 June to 30 September for 19 years (1979-1997). (b) Scatter plot of 30-60 day
filtered OLR anomalies (Wm−2) averaged over the northern TCZ (70◦E-100◦E,
12◦N-22◦N) and the southern TCZ (70◦E-100◦E, 0◦-12◦S) during 1 June to 30
September for 18 years (1979-1997, excluding 1994). . . . . . . . . . . . . . . . . 29
2.16 (a) Scatter plot of 30-60 day filtered relative vorticity at 850 hPa (10−6s−1) and
OLR (Wm−2) anomalies averaged over a box (85◦E-95◦E, 12◦N-22◦N) of the
northern TCZ during 1 May to 31 October for 19 years (1979-1997). (b) same
as (a) but averaged over a box (85◦E-95◦E, 0◦-12◦S) of the southern TCZ. . . . . . 31
3.1 Geographical distribution of intraseasonal and interannual activity. (a) Mean
standard deviation of ISO filtered relative vorticity (10−6s−1) at 850 hPa during
1 June to 30 September for 20 years (1978-1997). (b) Interannual standard devi-
ation of seasonal mean relative vorticity (JJAS, 10−6s−1) based on the same 20
years. . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . 37
3.2 First EOF of the intraseasonal and interannual 850 hPa winds. (a) Intraseasonal
EOFs are calculated with ISO filtered winds for the summer months (1 June to
30 September) for a period of 20 years (1978-1997). (b) Interannual EOFs are
calculated with the seasonal mean (JJAS) winds for 40-year period (1958-1997).
Units of vector loading are arbitrary. (c) Relation between IMR and interannual
PC1. Filled bars indicate interannual PC1 and the unfilled bar represent IMR.
Both time series are normalized by their own standard deviation. Correlation
between the two time series is shown. . . . . . . . . . . . . . . . . . . . . . . . 38
List of Figures xii
3.3 Ratio between standard deviation of interannual variation of ISO activity and
interannual variation of the seasonal mean. (a) Relative vorticity at 850 hPa. (b)
OLR. Contours are (0.3, 0.4, 0.6, 0.8, 1.0). . . . . . . . . . . . . . . . . . . . . . . 39
3.4 First two EOFs of the daily ISO filtered 850 hPa vorticity from 1 June to 30
September. (a) EOF1 and (b) EOF2 for seven ’strong’ years (c) EOF1 and (d)
EOF2 for ten ’weak’ years (e) EOF1 and (f) EOF2 for ’all’ (20 years from 1978 to
1997) years. Arbitrary EOF loadings have been multiplied by a factor of 100. . . . 42
3.5 Evidence of change in regimes of ISOs during ’strong’ and ’weak’ monsoon
years. Illustrated are two-dimensional PDFs of the ISO state vector spanned by
two dominant EOFs of low-level vorticity. PDFs are calculated with principal
components normalized by their own standard deviation and taking the sum-
mer days (1 June to 30 September) for (a) 7 ’strong’ monsoon years (b) 10 ’weak’
monsoon years (c) 20 combined ’strong’, ’weak’ and ’normal’ years (1978-1997).
The smoothing parameter used is h=0.6 and PDFs are multiplied by a factor 100.
The first two EOFs (not shown) are different in ’strong’, ’weak’ and ’all’ years
but are related to ’active’ and ’break’ conditions. The origin of the plots corre-
sponds to a very weak state representing a transition between the two states (as
in the ’all’ case). . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . 43
3.6 Geographical patterns of the dominant regimes for low-level relative vorticity
(10−6s−1) shown in Figure 3.5. (a) ’strong’ monsoon years (b) ’weak monsoon
years (c) ’all’ years. . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . 44
3.7 The monsoon trough vorticity (MTV) and the Indian Monsoon Rainfall (IMR)
for a 40-year period (1958-1997). MTV is defined as the seasonal mean vorticity
(JJAS) averaged in the domain 40◦E-90◦E and 10◦N-30◦N. Both time series are
normalized by their own standard deviation. Correlation between the two time
series is shown. . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . 45
3.8 First two CEOFs of the daily ISO filtered 850 hPa vorticity and OLR from 1 June
to 30 September. (a) CEOF1 and (b) CEOF2 for six ’strong’ years (c) CEOF1 and
(d) CEOF2 for six ’weak’ years (e) CEOF1 and (f) CEOF2 for ’all’ (20 years from
1978 to 1997) years. Arbitrary EOF loadings have been multiplied by a factor of
100. . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . 47
3.9 Same as Figure 3.5 but based on the state vector defined by the first two com-
bined EOF of low-level vorticity and OLR. . . . . . . . . . . . . . . . . . . . . . 48
List of Figures xiii
3.10 Geographical patterns of the dominant regimes shown in Figure 3.9. (a) ’strong’
monsoon years (b) ’weak monsoon years (c) ’all’ years. OLR patterns are shown
as shaded contours (Wm−2) while the corresponding low-level vorticity are
shown in contours (10−6s−1). . . . . . . . . . . . . . . . . . . . . . . . . . . . . 49
3.11 (a) Time series of ISO activity index (blue) and All India Monsoon Rainfall Index
(IMR, black) normalized by it’s own standard deviation for a 44-year period
(1954-1997). . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . 51
4.1 An illustration of variations of the annual cycle from year to year. The annual
cycle of zonal winds (ms−1) at 850 hPa at a point (80◦E, 5◦N) are shown for 20
years. . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . 60
4.2 First combined EOF of mean monthly ’external’ anomalies for the period Jan-
uary 1979 to December 1997 (228 months). (a) Zonal winds EOF at 850 hPa, (b)
OLR EOF and (c) PC1 (solid line) and Nino3 SST anomalies (dashed line). Both
the time series are normalized by their own standard deviation. Units of the
EOFs are arbitrary. . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . 63
4.3 Time-longitude section of mean monthly ’external’ anomalies of zonal wind at
850 hPa (ms−1) and OLR (Wm−2) averaged around equator (5◦S-5◦N). . . . . . 64
4.4 Monthly variance of zonal winds (m2s−2) at 850 hPa based on 396 months for the
period January 1965 to December 1997. (a) Total variance (b) ’external’ variance
and (c) ’internal’ variance. . . . . . . . . . . . . . . . . . . . . . . . . . . . . . 66
4.5 Same as Figure 4.4 but for OLR for the period January 1980 to December 1999
(240 months). Units, (Wm−2)2. . . . . . . . . . . . . . . . . . . . . . . . . . . . 67
4.6 Estimates of ’F’ ratios for zonal winds at 850 hPa (a) for all northern hemisphere
summer months (June-July-August) and (b) for all northern hemisphere winter
months (December-January-February). . . . . . . . . . . . . . . . . . . . . . . . 69
4.7 The ’external’ variance of zonal winds at 850 hPa (m2s−2) during (a) NH sum-
mer months (JJA) and (b) NH winter months (DJF). . . . . . . . . . . . . . . . . 70
4.8 The ’internal’ variance of zonal winds at 850 hPa (m2s−2) during (a) NH summer
months (JJA) and (b) NH winter months (DJF). . . . . . . . . . . . . . . . . . . 70
4.9 Estimates of ’F’ ratios for zonal winds at 200 hPa (a) for all northern hemisphere
summer months (JJA) and (b) for all northern hemisphere winter months (DJF). . 72
4.10 Estimates of ’F’ ratios for OLR (a) for all northern hemisphere summer months
(JJA) and (b) for all northern hemisphere winter months (DJF). . . . . . . . . . . 72
List of Figures xiv
4.11 Estimates of ’F’ ratios for geopotential height at 700 hPa (a) for all northern hemi-
sphere summer months (JJA) and (b) for all northern hemisphere winter months
(DJF). . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . 73
4.12 The ’external’ variance of geopotential height at 700 hPa (gpm2) during (a) NH
summer months (JJA) and (b) NH winter months (DJF). . . . . . . . . . . . . . . 74
4.13 The ’internal’ variance of geopotential height at 700 hPa (gpm2) during (a) NH
summer months (JJA) and (b) NH winter months (DJF). . . . . . . . . . . . . . . 74
4.14 The ’internal’ variance of (a) zonal winds at 850 hPa (m2s−2) and (b) OLR (Wm−2)2
based on all months after removing the higher frequencies with period shorter
than 10 days. . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . 76
4.15 Estimates of ’F’ ratios for zonal winds at 850 hPa for (a) NH summer season
(JJA) (b) NH winter season (DJF). . . . . . . . . . . . . . . . . . . . . . . . . . . 77
4.16 Estimates of ’climate noise’ for zonal winds at 850 hPa for (a) NH summer sea-
son (JJA) (b) NH winter season (DJF). . . . . . . . . . . . . . . . . . . . . . . . 78
4.17 Estimates of ’F’ ratios for zonal winds at 200 hPa for (a) NH summer season
(JJA) (b) NH winter season (DJF). . . . . . . . . . . . . . . . . . . . . . . . . . . 79
4.18 Estimates of ’F’ ratios for OLR for (a) NH summer season (JJA) (b) NH
winter season (DJF). . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . 79
4.19 Estimates of ’F’ ratios for geopotential height at 700 hPa for (a) NH summer
season (JJA) (b) NH winter season (DJF). . . . . . . . . . . . . . . . . . . . . . . 81
4.20 Estimates of ’climate noise’ for geopotential height at 700 hPa for (a) NH sum-
mer season (JJA) (b) NH winter season (DJF). . . . . . . . . . . . . . . . . . . . 81
5.1 Genesis dates of LPS between 1 June and 30 September of all years during 1979
to 1993 over the monsoon trough as a function of normalized departure of pre-
cipitation over the trough from the seasonal mean. . . . . . . . . . . . . . . . . 89
5.2 Leading Empirical Orthogonal Functions ( (a) EOF1 & (b) EOF2) of 10-80 day
filtered wind anomalies (ms−1) at 850 hPa between June 1 and September 30 for
the period 1964-1973. (c) Normalized time series of PC1 and PC2 for ten years
(each year has 122 days). (d) Normalized Monsoon Intraseasonal Oscillation
Index (MISI) for 10 years. Periods of MISI > +1 (MISI< -1) correspond to active
(break) phases of the monsoon. It may be noted that positive (negative) phase
of MISI represents enhancement (weakening) of the EOF1 pattern. . . . . . . . . 90
List of Figures xv
5.3 Histogram of genesis of synoptic events (lows & depressions) for the Indian
monsoon region (50◦E-100◦E, Eq-30◦N) during June to September for the period
1954-1993 as a function of normalized MISI. . . . . . . . . . . . . . . . . . . . . 92
5.4 Total (climatology+composite anomaly) relative vorticity (10−6s−1) at 850 hPa
during the (a) ’Active’ ISO phase (MISI > +1) and (b) ’Break’ ISO phase (MISI <
-1). Dark dots indicate the position of the genesis of the LPS during active and
break phases. . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . 93
5.5 Composites based on active and break days as defined by the ISO index, MISI.
(a) ’Active’ minus ’Break’ composite wind anomalies (ms−1) and associated rel-
ative vorticity (10−6s−1) at 850 hPa during the 40 year period (1954-1993). Only
vectors significant at 95% confidence level are displayed. Positive contours are
shaded and negative contours are not shown. (b) ’Active’ minus ’Break’ com-
posite precipitation anomalies (mm.day−1) during 1979-1993. . . . . . . . . . . 94
Chapter 1
Introduction
The seasonal mean summer monsoon precipitation over the Indian continent and
neighbouring region is the lifeline of the agrarian economy of the region. A weak or late
monsoon can have disastrous consequences on productivity of the crops upon which
millions of people rely on for their sustenance [Swaminathan, 1987]. The monsoons,
which returns with remarkable regularity each summer provides rainfall needed for
60% of World’s population. The importance of Asian summer monsoon in the global cir-
culation and climate predictability is widely recognized. Monsoon displays substantial
interannual variability, which has profound socio-economic consequences. Prediction
of seasonal mean monsoon precipitation, therefore assumes great importance.
Statistical prediction of some gross features of the Indian summer monsoon (e.g. all
India monsoon rainfall, IMR) have been moderately successful during the decade of
80’s [Krishakumar et al., 1995], but have failed during the decade of 90’s. This is due
to the fact that correlation between IMR and many predictors undergo low frequency
decadal variation. The dynamical seasonal prediction of the Indian summer monsoon
has thus far remained elusive [Brankovic and Palmer, 2000]. However, dynamical sea-
sonal prediction of monsoons could be beneficial due to a variety of reasons.
• Ensembles of forecast can potentially yield information on probability of ’strong’
and ’weak’ monsoon.
• It can give more accurate information on regionality of anomalous rainfall and
circulation compared to statistical methods.
Hence, it is important to identify and understand the factors that may be limiting our
current level of predictability.
The predictability of the tropical climate (specially Indian summer monsoon), de-
pends on the relative contribution of ’external’ slowly varying boundary forcing and
1 Introduction 2
’internal’ dynamics (intraseasonal oscillations) to the interannual variability [Charney
and Shukla, 1981]. Following the seminal work of Charney and Shukla [1981] and Shukla
[1981], during the past two decades, it was shown that climate in large part of the tropics
is primarily determined by slowly varying sea surface temperature (SST) where poten-
tial for making dynamical forecasts several seasons in advance exists (e.g. Latif et al.
[1998]). However, during the same period it has been also recognized that there are
regions within the tropics, climate of which is not strongly governed by the anomalous
boundary conditions. The Indian summer monsoon is such a system [Brankovic and
Palmer, 1997; Webster et al., 1998; Goswami, 1998].
What limits the simulation and predictability of the Indian summer monsoon? Re-
search during that past decade has identified two possible explanations. The first is
that model errors in the mean monsoon simulations are still substantial enough that the
signal being sought is smaller than the systematic bias. Charney and Shukla [1981] sug-
gested that low frequency boundary forcing (e.g. sea surface temperature) predisposes
the monsoon system towards a dry or wet state. In other words anomalous bound-
ary conditions may provide potential predictability. If this is true, model simulations
should be able to capture interannual variability of the Indian summer monsoon and
hence could produce fairly good forecasts. But in reality, this is not the case as most
models find the simulation of mean monsoon precipitation extremely difficult and have
even greater difficulty in simulating the interannual variability of the Indian summer
monsoon rainfall [Sperber and Palmer, 1996; Gadgil and Sajani, 1998; Goswami, 1998]. If
the ’external’ slowly varying boundary forcing (e.g. sea surface temperature, soil mois-
ture etc) determine the predictability of monsoons, there is a clear need to improve the
model simulations, before any conclusive statements could be made about the dynam-
ical seasonal predictability of the Indian summer monsoon.
The second explanation involves the role of intraseasonal variability and the sugges-
tion that it introduces a chaotic element into the prediction of seasonal mean anomalies.
During the established phase of the monsoon, circulation pattern undergoes significant
variations associated with a pronounced northward excursion of the tropical conver-
gence zone (TCZ) which brings the monsoon intermittently from an ’active’ into an
inactive (’break’) phase over the continent. The change in precipitation distribution be-
tween ’active’ and ’break’ phases of monsoon is substantial [Webster et al., 1998] and it is
therefore quite possible that intraseasonal variability could have a significant influence
on the seasonal mean monsoon precipitation.
1 Introduction 3
The Indian summer monsoon has vigorous intraseasonal oscillations in the form of
’active’ and weak (or ’break’) spells of monsoon rainfall within the summer monsoon
season [Ramamurthy, 1969]. These ’active’ and ’break’ spells of the monsoon are associ-
ated with fluctuations of the tropical convergence zone (TCZ) [Yasunari, 1979, 1980, 1981;
Sikka and Gadgil, 1980]. The TCZ over the Indian monsoon region represents the as-
cending branch of the regional Hadley circulation. Intraseasonal oscillations (ISOs) are
essentially manifestation of fluctuations of the regional Hadley circulation. These fluc-
tuations initially seen in Indian station data [Keshavamurthy, 1973; Dakshinamurthy and
Keshavamurthy, 1976] were later shown to be related to coherent fluctuations of the re-
gional Hadley circulation [Krishnamurti and Subrahmanyam, 1982; Murakami et al., 1984;
Mehta and Krishnamurti, 1988; Hartmann and Michelson, 1989]. The ISOs of the Indian
summer monsoon have two preferred bands of periods [Krishnamurti and Bhalme, 1976;
Krishnamurti and Ardunay, 1980; Yasunari, 1980]. One band has periods between 10 and
20 days while the other band contains periods between 30 and 60 days. The 30-60 day
mode has a northward and eastward propagation over the monsoon region while the
10-20 day mode has a clear westward propagation and a weak northward propagation.
The seasonal summer mean monsoon precipitation (and associated circulation) is
a result of the shift of the seasonal mean position of the TCZ to about 25◦N during
boreal summer from a mean position south of the equator during boreal winter. The
seasonal summer mean (June-September, JJAS) precipitation distribution has a major
zone of large precipitation along the monsoon trough extending to the north Bay-of-
Bengal. There is also a secondary zone of precipitation maximum south of the equator
(between 0◦ and 10◦S) over the warm waters of the Indian Ocean. These two maxima
in seasonal mean precipitation represent two favored locations of the TCZ during the
summer monsoon season [Sikka and Gadgil, 1980; Goswami, 1994]. The ISOs are fluctua-
tions of the TCZ between the two favored locations within the monsoon season. In the
intraseasonal time scales, the TCZ form repeatedly over the ocean and moves north-
ward, persists for a while over the monsoon trough before decaying and regenerating
over the ocean. The tendency of the TCZ to persist over the monsoon trough results in
larger residence time over the continent leading to larger seasonal mean precipitation
over the land and a weaker one over the ocean. Therefore, there is a possibility that the
statistics of the ISOs influence the seasonal mean monsoon. If the ISOs indeed influence
the seasonal mean significantly, the part of the seasonal mean governed by the ISOs
would be unpredictable as ISOs are basically governed by internal dynamics [Webster,
1 Introduction 4
1983; Goswami and Shukla, 1984; Keshavamurthy et al., 1986] and are chaotic in nature. If
the ISOs do contribute significantly to the seasonal mean, the interannual variability of
the seasonal mean monsoon is expected to have a significant component arising from
internal dynamics. Several recent modeling studies show that indeed a significant frac-
tion of the interannual variability of the Indian summer monsoon may be governed by
internal dynamics [Harzallah and Sadourny, 1995; Rowell et al., 1995; Stern and Miyakoda,
1995; Goswami, 1998]. Most of the studies do not provide any insight regarding the ori-
gin of the internally generated interannual variability. Based on a series of sensitivity
studies with a GCM and a dynamical system model, Goswami [1997] indicates that the
modulation of the energetic intraseasonal oscillations by the annual cycle could give
rise to an internal quasi-biennial oscillation in the tropical atmosphere. These argu-
ments and the modeling studies set the stage to ask the question: Do the ISOs really
influence the seasonal mean monsoon? If so, how and to what extent?
Unfortunately, how and to what extent the ISOs influence the seasonal mean circu-
lation and precipitation has not been clearly established from observations. Not many
studies have actually addressed this question. Mehta and Krishnamurti [1988] examined
the interannual variability of the 30-50 day mode in the winds at 850 hPa and 200 hPa
for the period 1980 to 1984 using European Center for Medium Range Weather Forecasts
(ECMWF) operational analysis. They mainly examined the variations in the northward
propagation characteristics and did not attempt to relate these to the seasonal mean.
Hartmann and Michelson [1989] used 70 year (1901-1970) record of daily precipitation for
3700 stations distributed over whole India and created annual cycle of daily precipita-
tion at 1◦ × 1◦ blocks. They find statistically significant peak in the daily precipitation
around 40-50 day period over most of India south of 23◦N and the oscillations have a
northward propagation. This study did not address the interannual variability of the
ISOs. Singh and Kriplani [1990] and Singh et al. [1992] used long records of daily rainfall
data over the Indian continent and examined the 30-50 day oscillation. They found that
ISOs has largest amplitude over the western central India around 20◦N and can explain
upto 25% of 5-day averaged rainfall. They concluded that these oscillations have large
interannual variability in intensity and period and does not seem to be related with
overall performance of monsoon or phases of ENSO. They, however, could not come to
a clear conclusion regarding relationship between the ISOs and the interannual variabil-
ity of the Indian monsoon rainfall. Rao et al. [1990] used daily IR data from INSAT-1B for
the monsoon period of 1986 and 1987. After creating daily averages from three hourly
1 Introduction 5
observations, they calculated fractional cloud cover in each 2.5◦×2.5◦ boxes from the IR
brightness temperature. The fractional cloudiness shows a periodicity of 30-50 days in
both years up to 20◦N. Based on only two years, it was not possible to conclude much on
the interannual variability of this mode. Ahlquist et al. [1990] studied radiosonde obser-
vations at 12 Indian stations between 1951 and 1978. They examined ISOs with period
longer than 10 days but did not try to relate the ISOs with the interannual variability
of the monsoon. De and Natu [1994] examined upper wind data for six radiosonde sta-
tions at 850, 700, 500 and 300 hPa levels for the years 1979 to 1984 and 1987. They also
find that 30-50 day mode has considerable interannual variability and that the mode
becomes more significant during normal and excess rainfall years. Here, the sample
size is small to arrive at a robust result regarding interannual variability. Kondragunta
[1990] used daily OLR for the summer period form NOAA polar orbiting satellite for
eight years (1975 to 1983) and studied the interannual variability of the ISO over the
whole Asian region. He finds that intraseasonal oscillations occur on three time scales,
30-60 day, 10-20 day and less than 10 days. Fennessy and Shukla [1994] using GCM sim-
ulations of the Indian monsoon for 1988 and 1987 showed that the spatial structures of
the interannual variability of the seasonal mean and that of the intraseasonal variability
in their model simulations were quite similar. Ferranti et al. [1997] studied the relation-
ship between intraseasonal and interannual variability over the monsoon region using
data from five 10-year simulations of the ECMWF GCM differing only in their initial
conditions. They examined simulated precipitation and 850 hPa relative vorticity in
detail and showed that monsoon fluctuations within a season and between different
years have a common mode of variability with a bi-modal meridional structure in the
precipitation. While the common mode of variability is qualitatively consistent with
fluctuations of the TCZ in the two favored locations, their results suffer from some sys-
tematic errors inherent in the ECMWF GCM simulation of the Indian summer monsoon.
The model underestimates precipitation over the north Bay of Bengal and the monsoon
trough zone. This systematic error reflects in their interannual mode having appreciable
amplitude only east of 80◦E both in precipitation and low-level vorticity. Webster et al.
[1998] discusses mean circulation pattern at 850 hPa associated with ’active’ and ’break’
conditions based on ECMWF operational analysis for 14-year (1980-1993) and brings
out the large scale nature of these circulation anomalies. No attempt to relate these pat-
terns to the seasonal mean was, however, made. In another recent study Goswami et al.
[1998] studied daily surface winds from National Centers for Environmental Prediction
1 Introduction 6
(NCEP)/National Center for Atmospheric Research (NCAR) reanalysis for ten years
(1987-1996) and showed that the spatial structures of the intraseasonal mode and that
of the dominant interannual mode are strikingly similar.
Annamalai et al. [1999] examined the relationship between the intraseasonal oscilla-
tions and interannual variability using NCEP/NCAR reanalysis and ECMWF reanal-
ysis (ERA) for the period 1979-95. While the primary objective of the study was to
compare NCEP/NCAR reanalysis and ERA, they also identified a dominant mode of
intraseasonal variability which captures the active/break cycles of the monsoon. How-
ever, they could not clearly identify a common dominant mode that described intrasea-
sonal and interannual variability. They have tried to find the relationship between in-
terannual and intraseasonal variability by using a one dimensional probability density
function (PDF) of the principal component of the dominant ISO mode. Clear differ-
ence in probability of occurrence of ’active’/’break’ phases in two contrasting years
also could not be identified. Statistical significance of results could not be ascertained
due to small sample size.
Sperber et al. [2000] investigated the relationship between the relationship between
subseasonal and interannual variability of the Asian summer monsoon using 40 years
of NCEP/NCAR Reanalysis. They have confirmed that a common mode of variabil-
ity exists on subseasonal and interannual time scales. PDF of principal components
did not show any bimodality. Further they have shown that PDF is systematically and
significantly perturbed towards negative (positive) values in weak (strong) monsoon
years. However, they also mention that only a subset of subseasonal modes are sys-
tematically perturbed either by ENSO or in weak/strong monsoon years, suggesting
that predictability is likely to be limited by the chaotic, internal variability of the mon-
soon system. The PDF of the subseasonal modes are biased towards positive (negative)
side during strong (weak) years only if the low frequency interannual variations of the
seasonal mean are not removed.
Krishnamurthy and Shukla [2000] has used gridded rainfall dataset (1901-1970) to ana-
lyze the intraseasonal and interannual variability of the summer monsoon rainfall over
India. They have found that the nature of intraseasonal variability is not different dur-
ing the years of major droughts or major floods. They have also found that there is con-
siderable variability in the spatial patterns of the rainfall anomalies over India on both
daily and seasonal time scales. Their results indicate that the dominant mode (leading
EOF) of the daily rainfall anomalies has a spatial pattern different from the dominant
1 Introduction 7
mode of seasonal anomalies. The variances of the daily rainfall anomalies over India
are about 50-100 times larger than those of the seasonal rainfall anomalies. To relate
intraseasonal and interannual variability they have used a correlation analysis between
the daily and the seasonal anomalies and have found that there is a signature of the sea-
sonal anomaly pattern throughout the monsoon season. The frequency distributions of
the correlations involving daily anomalies that include the seasonal anomalies clearly
show a bias toward positive correlations and do not reveal any bimodality. The fre-
quency distribution do not show any bias, if the low frequency interannual variations
of the seasonal mean are removed.
Recently, Lawrence and Webster [2001] have examined the interannual variations of
the ISO using out-going long wave radiation (OLR) data for the period 1975-1997. By
developing an index representing seasonally averaged ISO activity, they have found
that summertime ISO activity exhibits an inverse relationship with Indian monsoon
strength. They concluded that the ISO activity is uncorrelated with any other leading
SST variability including the ENSO.
A conceptual model of how the ISOs influence the seasonal mean and interannual
variability of the Indian monsoon was proposed by Goswami [1994]. The conceptual
model is based on the similarity between the spatial structure of the dominant ISO mode
and that of the interannual variability. The seasonal summer mean (June-September,
JJAS) precipitation distribution has a major zone of large precipitation along the mon-
soon trough extending to the north Bay-of-Bengal (see Figure 2.1(d)) and a secondary
zone of precipitation maximum south of the equator (between 0◦ and 10◦S) over the
warm waters of the Indian Ocean. These two maxima in the seasonal mean precipitation
represent two favored locations of the TCZ during the summer monsoon season [Sikka
and Gadgil, 1980; Goswami, 1994]. The ISOs are fluctuations of the TCZ between the two
locations and repeated propagation from the southern to the northern position within
the monsoon season. During a typical ’active’ condition, the northern TCZ is stronger
and the southern one is weaker with stronger cyclonic vorticity and enhanced convec-
tion over the northern location with stronger anticyclonic vorticity and decreased con-
vection over the southern one. The situation reverses during a typical ’break’ condition.
Higher probability of occurrence of ’active’ like (’break’ like) conditions during a mon-
soon season could, therefore give rise to stronger (weaker) than normal seasonal mean
monsoon and precipitation. It may be noted that the ISOs are not purely sinusoidal
oscillations. Due to the broadband nature of their spectrum, the intensity as well as the
1.1 Objectives 8
duration of the ’active’ phases in a season could be different from those of the ’break’
phases. Moreover, the number of ’active’ and ’break’ spells within a monsoon season
(June 1 - September 30) may be different depending on the initial phase. These fac-
tors may lead to asymmetry in the probability density functions (PDF). Our conceptual
model is similar, to the one proposed by Palmer [1994]. However, in contrast to Palmer
[1994] who proposes that the asymmetry in the PDF is forced only by external forcing,
we claim that the asymmetry could arise even without external forcing.
1.1 Objectives
The background presented above lead us to the following conclusions. Low-frequency
(LF) large amplitude ISO with period around 10-20 days and 30-60 days are integral
part of Indian summer monsoon. Therefore, the phase, amplitude and period of these
ISOs can influence the seasonal mean monsoon. ISOs are driven by internal dynamics,
involving primarily feed back between organized convection and dynamics. A concep-
tual picture of the variability of these LF oscillations envisages competition between the
continental TCZ and oceanic TCZ.
While the considerations presented above are all plausible, there has been no reliable
quantitative estimate of how and to what extent ISO influence the seasonal mean and
it’s variability. As a result, the present study is undertaken with the following specific
objectives.
• The primary objective of the present study is to use sufficiently long daily obser-
vation to bring out how and to what extent the ISOs of the Indian monsoon affect
the seasonal mean and its interannual variability. The conceptual model proposed
above is used as the working hypothesis. The primary objective may be achieved
in two parts. Firstly, we bring out the underlying common spatial structure of
the dominant ISO in all years and compare it with the spatial structure of the sea-
sonal mean and interannual variability of the Indian monsoon. Secondly, attempt
is made to relate probability of occurrence of the ISO pattern to the interannual
variability of the seasonal mean. To achieve this goal a homogeneous data set for
a long enough period is essential so that the statistics of the ISOs and that of the
interannual variability of the seasonal mean could be reliably estimated. Many
earlier studies used data only for a short period as a result of which the interan-
nual variability of the circulation could not be reliably estimated. (Chapter 2 and
1.2 Datasets 9
Chapter 3)
• Having shown that the ISOs can influence the seasonal mean and its interannual
variability, the next objective is to make quantitative estimates of predictability of
the monsoon climate. A measure of potential predictability of the monthly and
seasonal means at a place could be obtained from the ratio of variances associated
with the external to the internal components. Using long homogeneous data sets,
attempts will be made to estimate the ’internal’ variability of monthly and sea-
sonal climate. The potential predictability of the Indian monsoon region will be
compared with that of other regions in the tropics. (Chapter4)
• The ISOs of the monsoon lead to strengthening (weakening) of the seasonal mean
monsoon in their active (break) phase. While this fact results in interannual vari-
ations of the seasonal mean monsoon at one end of the spectrum, it may modu-
late the statistics of the monsoon synoptic disturbances at another end. The main
rain bearing system during the monsoon season are Low Pressure Systems (LPS)
consisting of lows and depressions. Since the genesis of the LPS depends on the
horizontal shear and low-level vorticity, it is possible that more LPS may form in
active phase relative to the break phase. In other words, large scale circulation
associated with the ISOs could modulate the frequency of genesis of LPS. There-
fore one objective of our study will be to investigate how the synoptic events are
modulated by the ISOs. (Chapter 5)
1.2 Datasets
A brief description of the different datasets used in the study is provided below.
1.2.1 Reanalysis Data
The National Centers for Environmental Prediction/National Center for Atmospheric
Research (NCEP/NCAR) 40-year Reanalysis data is a research quality data set suitable
for weather and short-term climate research. The NCEP/NCAR Reanalysis Project uses
a Global Data Assimilation System (GDAS), along with the observations from 1957 to
the present to produce global meteorological fields through dynamically and thermo-
dynamically consistent interpolations to support the needs of the climate research com-
munity [Kalnay et al., 1996]. The project began in 1991 and involves the recovery and
quality control of historical land surface, ship, rawinsonde, aircraft, pibal, satellite and
1.2 Datasets 10
other data. These data are then assimilated with a GDAS that is kept unchanged over
the reanalysis period 1957-96, to avoid spurious climate jumps or trends. The project
uses a frozen state-of-the-art global data assimilation system and a data base as com-
plete as possible. The model used here is a T62 model (equivalent to a horizontal reso-
lution of 210 km) with 28 vertical levels. Thus, any output variable in the reanalysis is
a blend of observations and model. The fidelity of any variable to reality depends on
the accuracy and density of observations as well as on the performance of the analysis
scheme itself. The reliability of the parameters have been increased with the addition
of delayed observations, provided by different countries and organizations. Output
variables are classified into four categories; A, B, C and D; depending on the relative
influence of the observations and/or the model. A variable belongs to category ‘A’ (e.g.
wind, upper-air temperature) if it is strongly influenced by observed data and, hence,
reliable. The designation ‘B’ (e.g. SST, air temperature at 2 m, specific humidity at 2
m, relative humidity) indicates that although the variable is directly affected by obser-
vational data, the model also has a strong influence on it. A category ‘C’ variable (e.g.
cloud, precipitation, latent heat flux, sensible heat flux) indicates that there are no ob-
servations directly affecting the variable, so it is solely derived from the model. The
letter ‘D’ (e.g. ice concentration, plant resistance, land sea mask) represents a field that
is fixed from climatological values and does not depend on model.
This study uses daily averaged zonal (u) and meridional components (v) of reanaly-
sis winds at various pressure levels (surface, 850 hPa, 500 hPa and 200 hPa and geopo-
tential height at 700 hPa). To accurately estimate interannual variability, we have also
used monthly mean winds at the same levels for a 42-year period (1956-1997).
1.2.2 NOAA Outgoing Long wave Radiation (OLR) Dataset
One proxy for tropical rainfall measurements or deep tropical convection is the OLR
data at the top of the atmosphere. Twenty four years (1974-1997) years of daily averaged
OLR estimates from NOAA satellites [Salby et al., 1991; Gruber and Krueger, 1984] were
used in this study. Data gap periods (January 1974 to May 1974 and March 1978 to De-
cember 1978) were avoided. Missing values were owing to satellite problems, archival
problems or incomplete global coverage.These satellites uses AVHRR (Advanced Very
High Resolution Radiometer) which has unique characteristics of spectral response, im-
age geometry, frequency of spectral coverage and accessibility that makes it useful for
applications in oceanography and meteorology. OLR data are available in (2.5◦ × 2.5◦)
1.2 Datasets 11
latitude-longitude grid boxes.
Daily interpolated OLR data set (2.5◦ × 2.5◦) for the same period (1974-1997) were
also used for this study. This data set is taken from NOAA-CIRES Climate Diagnostics
Center (CDC), Boulder, USA, from their website at http://www.cdc.noaa.gov/. Data
gaps were filled with temporal and spatial interpolations; details of the interpolation
technique can be found in Liebmann and Smith [1996].
1.2.3 Precipitation Datasets
Monthly, pentad and daily precipitation datasets were used to substantiate some of
the results presented in this study. For monthly precipitation, Climate Prediction Center
Merged Analysis of Precipitation (CMAP) data [Xie and Arkin, 1997] were used. CMAP
is a gridded global monthly precipitation constructed on a 2.5◦ latitude-longitude grid
for a 17-year period from 1979 to 1995 by merging several kinds of information sources
with different characteristics. The sources include guage-observations, estimates of pre-
cipitation inferred from a variety of satellite observations. Satellite estimates come from
infrared as well as microwave sensors. First, the satellite estimates are combined using a
weighted average where weights are proportional to the estimated errors of the various
estimates. The weighted average is then merged with the guage observations. CMAP
provides very useful information for climate analysis and can be used to investigate
annual and interannual variability in large scale precipitation.
CMAP pentad data for a 15-year period from 1979-1993 were also used. The pentad
CMAP essentially uses the same algorithm and input data as monthly CMAP [Xie and
Arkin, 1997]. The version we use is based on a blend of guage data with satellite prod-
ucts including the GOES (Geostationary Operational Environmental Satellite) precipitation
index based on geostationary infrared data, Microwave Sounding Unit, OLR based pre-
cipitation index, SSM/I (Special Sensor Microwave/Imager) scattering and SSM/I emis-
sion. A detailed description of the pentad dataset is in preparation.
Daily gridded rainfall data over the Indian continent for a 12-year period from 1978
to 1989 was also utilized. The daily rainfall data was originally compiled by Singh et al.
[1992] at 2.5◦ latitude-longitude grids based on daily rainfall at 365 stations uniformly
distributed over the country. The original data reported in Singh et al. [1992] were later
extended to 1989. The version we use was regridded to 1.25◦× 1.25◦ latitude-longitude
boxes by Mike Fennessy of the Center for Ocean-Land-Atmosphere-Studies (COLA,
1999, personal communication).
1.2 Datasets 12
1.2.4 Statistics of Low Pressure Systems
The dates and location of genesis of all lows, depressions and cyclones during April-
November for a 40-year period from 1954 to 1993 over the Indian monsoon region (50◦E-
100◦E, Eq-35◦N) were collected from various sources. For the Indian monsoon region,
data were based on reports from the India Meteorological Department (IMD). Data for
the first 30 years were taken from Mooley and Shukla’s [Mooley and Shukla, 1987, 1989]
compilation based on IMD’s daily weather reports. Data for the next 10 years (1984-
1993) were compiled from seasonal weather summaries published by IMD in Mausam.
For example, data for 1984 monsoon season can be found from [IMD, 1985].
For categorizing ’strong’ and ’weak’ monsoons we have used the All India Mon-
soon Rainfall index [Parthasarathy et al., 1994]. The IMR is constructed from a weighted
average of 306 stations spread over the whole of the Indian subcontinent.
Chapter 2
Basic Characteristics of MonsoonIntraseasonal Oscillations
In this chapter, the basic characteristics of intraseasonal oscillations of the Indian
summer monsoon are examined. The characteristics of monsoon ISOs such as their
horizontal and vertical structures and meridional and zonal propagation characteristics
have been previously studied extensively (see references cited in the Introduction). Our
objective here is not to repeat the results of the earlier studies. However, earlier studies
used limited number of years. As a result, it is not well established whether differ-
ent phases of the dominant ISO mode possess spatial patterns that are common to all
events. Our aim here is to bring out the underlying mean feature of the dominant ISO
mode that is invariant over the years. We have examined these characteristics of both
ISO modes for each year of the 20-year period (1978-1997). The general characteristics
of the 30-60 day mode and 10-20 day are consistent with most of the earlier studies.
Therefore, some of the important features are only briefly summarized here.
2.1 Methodology
The climatological summer mean (June-September, JJAS) circulation at lower and
upper atmosphere and associated mean low-level vorticity are shown in Figure 2.1(a,b,c).
The seasonal mean precipitation is shown in Figure 2.1(d). It may be noted that the neg-
ative mean vorticity between the equator and 10◦S (Figure 2.1(b)) represents a region
of cyclonic vorticity in the Southern Hemisphere and is coincident with the seasonal
precipitation maximum. The circulation, convection and precipitation in the monsoon
region are characterized by a strong seasonal cycle. An example of zonal winds at 850
hPa at a few selected points for 1990 is shown in Figure 2.2. The annual cycle is defined
by the sum of the annual and semi-annual harmonics (green solid lines in Figure 2.2).
2.1 Methodology 14
Figure 2.1: Climatological mean (JJAS) monsoon winds (ms−1) and precipitation (mm.day−1).(a) 850 hPa vector winds, (b) Relative vorticity at 850 hPa (10−6s−1), (c) 200 hPa vector winds,(d) Precipitation from Xie and Arkin [1997].
The daily anomalies after removing the annual cycle are shown in the right panel. The
annual cycle, which is essentially driven by external conditions, has year to year varia-
tions that manifest in the interannual variations of the seasonal mean. In many studies,
daily anomalies are constructed by removing the climatological mean for each day from
the daily observations. In a particular year, the annual cycle may be significantly differ-
ent from the climatological mean annual cycle. This would introduce an additional bias
in the daily anomalies during the monsoon season. This bias can give rise to asymmetry
in the PDF of the ISOs that may not be intrinsic to the ISOs but may be related to the
external forcing changes. Since we are interested in the role of intraseasonal oscillations
in modifying the summer mean, we would like to avoid aliasing of any statistics of the
ISOs due to possible year to year variation of the annual cycle itself. This is achieved by
calculating the annual cycle for each year based on the data for that year alone and by
calculating the daily anomalies after removing the annual cycle of each year.
The intraseasonal oscillations are identified by estimating the spectra of zonal and
2.1 Methodology 15
Figure 2.2: Some examples of raw time series of zonal winds at 850 hPa at a few selected pointsduring 1990. (Left panels) Daily zonal winds (ms−1) with the annual cycle (annual and semi-annual harmonics, green lines). (Right panels) Anomalous daily zonal winds (ms−1).
0 50 100 1500
0.5
1
1.5
2
Period (days)
Pow
er *
Fre
quen
cy Zonal wind
0 50 100 1500
50
100
150
Period (days)
Pow
er *
Fre
quen
cy OLR
Figure 2.3: Examples of spectra of zonal winds and OLR for a typical year (1984) at a typicalpoint (90◦E, 10◦N).
meridional winds as well as OLR anomalies. Power spectra are calculated from anomaly
time series between May 1 and October 31 (184 days) using Tukey lag window method
[Chatfield, 1980]. An example of spectra for zonal winds and OLR at a point in north
Bay-of-Bengal for 1984 is shown in Figure 2.3. This example shows two strong peaks,
one with period around 36 days and the other with period around 16 days. Similar,
power spectral estimates are made for each year and at all latitudes between 30◦S and
30◦N along a number of longitudes (e.g. 70◦E, 80◦E, 90◦E). From these estimates, the
most prevalent dominant periods are chosen. It is noted that the dominant periods
2.2 Propagation Characteristics 16
Year Mode I Mode II1978 25 121979 42 171980 33 131981 42 161982 42 141983 25 141984 36 161985 33 121986 42 121987 30 101988 42 201989 40 141990 42 161991 42 201992 34 141993 32 141994 30 121995 42 201996 32 121997 42 12
Table 2.1: Period in days corresponding to the two peaks in the spectra for differentyears
found from the winds agree well with those found from OLR. The dominant periods
found in each year of the 20-year period (1978-1997) are listed in Table-I. The domi-
nant periodicity in each of the two bands show considerable variation from one year
to another. To study the detailed structure and characteristics of the two intraseasonal
oscillations Butterworth band pass filter [Murakami, 1979] with peak response around
the dominant periods are used.
2.2 Propagation Characteristics
The 30-60 day mode has a large horizontal scale (half wavelength of 70◦-80◦ lon-
gitude) as seen from the point-correlation map of the 30-60 day filtered zonal winds
with respect to those at a reference point (85◦E, 10◦N; Figure 2.4(a)). The mode has a
first baroclinic vertical structure close to the equator and over the Indian monsoon re-
gion as seen from correlations between 30-60 day filtered zonal winds at 850 hPa and
200 hPa (Figure 2.4(b)). The horizontal scale and vertical structure of the mode shown
in the example (Figure 2.4) is representative of other years. The 30-60 day mode is
2.2 Propagation Characteristics 17
Figure 2.4: An example illustrating the horizontal scale and vertical structure of the dominantISO mode. (a) Lag-zero correlations of the 850 hPa 30-60 day filtered zonal winds with respectto a reference point (85◦E, 10◦N). (b) Lag-zero correlations between 30-60 day filtered zonalwinds at 850 hPa and 200 hPa at each grid point. Correlations are calculated between May 1 andOctober 31 of 1990. Correlations exceeding 0.2 are significant at 95% confidence level.
known to have a northward and eastward propagation in the Indian monsoon region
[Yasunari, 1979, 1980]. This is demonstrated in Figure 2.5, where lag correlation of the
30-60 day filtered zonal winds at 850 hPa and OLR with respect to the same fields at
a reference point (85◦E, 10◦N) for the year 1990 averaged over a longitude belt (80◦E-
90◦E) are plotted as a function of latitude. Northward propagation north of the equator
and a tendency for southward propagation south of the equator are seen in zonal winds
as well as in OLR. Webster et al. [1998] also referred to such northward propagation in
the northern hemisphere and southward propagation in the southern hemisphere of the
dominant ISO. The correlation represents an average picture of the 3-4 episodes of the
oscillation during the summer monsoon season. On individual episodes, it is seen that
not all episodes are associated with a clean northward propagation (not shown). The
character of the northward propagation (e.g. speed of propagation) also vary from one
year to another. On the average the 30-60 day mode has an eastward propagation in the
monsoon region (50◦E-110◦E). As in the case of northward propagation, the eastward
propagation may not be clear in each individual episode and has considerable year to
2.2 Propagation Characteristics 18
Figure 2.5: (a) Correlations between 30-60 day filtered zonal winds at 850 hPa with respect tothat at a reference point (85◦E, 10◦N) at different lead/lags averaged over (80◦E-90◦E) for 1990.(b) Same as (a) but for 30-60 day filtered OLR. Starting contour is ±0.1 and contour interval is0.2.
Figure 2.6: (a) Correlations between 30-60 day filtered zonal winds at 850 hPa with respect tothat at a reference point (85◦E, 10◦N) at different lead/lags averaged over (10◦N-20◦N) for 1990.(b) Same as (a) but for 30-60 day filtered OLR. Starting contour is ±0.1 and contour interval is0.2.
2.3 A Circulation Criterion for ’Active’ and ’Break’ Phases 19
year variability (Figure 2.6). The 10-20 day mode on the average has clear westward
propagation in the monsoon region. It is either stationary or northward propagating in
the meridional direction (figure not shown).
2.3 A Circulation Criterion for ’Active’ and ’Break’ Phases
Traditionally ’active’ and ’break’ monsoon conditions are defined based on a precip-
itation criterion [Ramamurthy, 1969]. Here, we propose a criterion to define ’active’ and
’break’ monsoon conditions based on a circulation index. Such a circulation based def-
inition of ’active’ and ’break’ monsoon may be useful for various purposes. During an
’active’ phase of the Indian monsoon, typically there is more precipitation over central
India and a stronger monsoon trough [Ramamurthy, 1969]. As a result we may expect
westerly zonal winds south of the monsoon trough to strengthen. Opposite is expected
during a ’break’ phase. With this consideration in mind, we propose a circulation based
definition of ’active’ and ’break’ monsoon conditions. A reference point just south of the
monsoon trough at (90◦E, 15◦N) is selected for this purpose and the 30-60 day filtered
zonal winds at 850 hPa are plotted (Figure 2.7(a)). The days for which the filtered zonal
winds at 850 hPa is greater than +1 standard deviation (as shown by the thin solid line,
i.e. stronger westerly anomalies) are considered as ’active’ days, while those for which
it is less than -1 standard deviation (i.e. stronger easterly anomalies) are considered as
’break’ days. The method of defining ’active’ and ’break’ conditions is somewhat simi-
lar to the one used by Webster et al. [1998] where they also used a zonal wind criterion
over the north Bay-of-Bengal but used a fixed cut off anomaly (+3 ms−1 or -3 ms−1)
to define ’active’ and ’break’ conditions. Our method of defining ’active’ and ’break’
also bears similarity with the one used by Krishnamurti and Subrahmanyam [1982] for the
year 1979 where they used filtered zonal winds at a point in ’Arabian Sea’ to define ’ac-
tive’ and ’break’ episodes. The identification of the ’active’ and ’break’ days is not very
sensitive to small changes in the position of the reference point. It can be noted that in
Figure 2.7(a) between June 1 and September 30 of this particular year, there were two
’active’ and three ’break’ episodes. The ’active’ and ’break’ days are thus identified for
all years.
To test whether our criterion for defining ’active’ and ’break’ monsoon conditions
is related to the traditional precipitation based criterion, we calculated daily precipita-
tion composites for all ’active’ and ’break’ days defined by the circulation criterion for
2.3 A Circulation Criterion for ’Active’ and ’Break’ Phases 20
Figure 2.7: (a) An example of 30-60 day filtered zonal winds for 1986 at a reference point (90◦E,15◦N). The thin horizontal lines correspond to +1 and -1 standard deviations. ’Active’ (’break’)days are defined as days for which the filtered zonal winds at the reference point are greater than+1 S.D (or less than -1 S.D). (b) 12-year (1978-1989) mean precipitation difference (mm.day−1)between all ’active’ and ’break’ composites. Contours are ±(1, 3, 5, 7, 9, 11, 13, 15).
the period 1978 and 1989 during June 1 to September 30. This is the period for which
gridded daily rainfall data over India was available to us. The precipitation difference
between ’active’ and ’break’ composites is shown in Figure 2.7(b). It is clear that the
pattern of precipitation anomalies during ’active’ (’break’) conditions is identical to the
dominant empirical orthogonal function (EOF) of daily (or pentad) rainfall [Singh and
Kriplani, 1990; Krishnamurthy and Shukla, 2000] with an ’active’ monsoon condition be-
ing associated with enhancement of precipitation over most of continental India except
a small region in south eastern India and another in north eastern corner. Thus, the ’ac-
tive’ and ’break’ monsoon conditions defined by our circulation criterion captures the
2.4 Mean Structure of ISOs 21
dominant mode of intraseasonal precipitation variability over the Indian continent and
hence are essentially same as those defined by traditional precipitation criterion.
As the low-level jet over Somali is also usually strengthened (weakened) during an
’active’ (’break’) condition, one could also select a reference point in Arabian Sea (e.g.
60◦E, 10◦N) and 850 hPa zonal wind to define the ISOs.
2.4 Mean Structure of ISOs
Figure 2.8: (a,b) Climatological mean composite vector wind anomalies (ms−1) at 850 hPa cor-responding to ’active’ and ’break’ conditions for the 30-60 day mode and (c,d) associated relativevorticity (10−6s−1). The climatological mean composite is calculated by averaging all ’active’and ’break’ conditions occurring during the 20-year period (1978-1997). Shading in the upperpanels indicates regions with anomalies significant above 90% confidence level.
In this section, the underlying common spatial patterns associated with different
phases of the dominant ISO modes are isolated. To obtain the mean spatial pattern
common to all episodes of the dominant ISO variability, we use 20-year data of circu-
lation and OLR (1978-1997). The phase composite technique [Murakami and Nakazawa,
2.4 Mean Structure of ISOs 22
1985; Murakami et al., 1984] is followed to illustrate the common mode of evolution of
the oscillations. Having defined the ’active’ and ’break’ days as described in section
2.3, averaged vector wind anomalies at 850 hPa associated with all the ’active’ and
’break’ phases of the 30-60 day mode are calculated within a year. A climatological
mean composite ’active’ phase constructed by averaging ’active’ composites of all 20
years is shown in Figure 2.8 together with the associated composite relative vorticity
pattern. The composite of all ’break’ phases is also shown in Figure 2.8. These com-
posites (means) and similar composites to be described later are tested for statistical
significance using a Student t-test by using the inter-event variability as a measure of
standard error. Level of statistical significance is noted in some of these figures. The sig-
nificant coherent large wind anomalies that emerge after averaging over about eighty
’active’ (’break’) episodes over a period of twenty years, shows that all ’active’ (’break’)
Figure 2.9: Climatological mean composite vector wind anomalies (ms−1) corresponding to’active’ and ’break’ conditions for the 30-60 day mode (a,b) at 500 hPa and (c,d) at 200 hPa.The climatological mean composite is calculated by averaging all ’active’ and ’break’ conditionsoccurring during the 20-year period (1978-1997). Shading indicates regions with anomalies sig-nificant above 90% confidence level.
2.4 Mean Structure of ISOs 23
phases possess a common spatial pattern of variability. The other important feature
that emerges from the composite is the large zonal scale of the circulation changes asso-
ciated with ’active’ (’break’) phases of the Indian monsoon extending from about 50◦E
to 120◦E. During the ’active’ phase, the mean monsoon circulation is strengthened and
the monsoon trough cyclonic vorticity is enhanced north of 10◦N (compare with Figure
2.1(a,b)). The anticyclonic vorticity is enhanced between equator and 10◦N and cy-
clonic vorticity is weakened in the southern hemisphere. The mean composite 850 hPa
wind anomalies corresponding to ’active’ and ’break’ conditions (Figure 2.8) is consis-
tent with the pattern shown in Webster et al. [1998]. The climatological mean composite
’active’ and ’break’ phase vector wind anomalies at 500 hPa and 200 hPa are shown
in Figure 2.9. At 500 hPa during ’active’ phase, the vector wind anomalies bear close
resemblance with those at 850 hPa with cross-equatorial flow and enhancement of mon-
soon trough vorticity. At 200 hPa, the vorticity anomalies over the monsoon trough have
become anticyclonic and the equatorial wind anomalies are generally out of phase with
those at 850 hPa consistent with a first baroclinic mode vertical structure for this mode.
The composite picture of ’active’ and ’break’ conditions described above is consis-
tent with a seesaw between the two favorable positions of the TCZ as mentioned in
the Introduction. If this scenario is correct, there should be enhanced convection in the
northern position and decreased convection in the southern position during an ’active’
Figure 2.10: Climatological mean composite OLR anomalies (Wm−2) corresponding to ’active’and ’break’ conditions. ’Active’ and ’break’ composites are constructed using unfiltered OLRanomalies and the same ’active’ and ’break’ dates defined by 30-60 day filtered zonal windanomalies as used in Figure 2.8. OLR anomalies above 5 Wm−2 are significant above 90% con-fidence level.
2.4 Mean Structure of ISOs 24
Figure 2.11: Climatological mean composite pressure vertical velocity anomalies (ω) at 500 hPa(hPas−1). Again the same ’active’ and ’break’ dates chosen from 30-60 day filtered zonal windanomalies for the 20-year period (1978-1997) as used in Figure 2.8 and Figure 2.10 are used.
phase while it should be the other way round during a ’break’ phase. Figure 2.10 sup-
ports this conjecture where composite of unfiltered OLR anomalies for all ’active’ and
’break’ days are plotted. The ’active’ and ’break’ days used in the composite are exactly
the same days defined by the 30-60 day filtered zonal winds at the reference point as
in the circulation composite. Coherence of the OLR anomalies averaged over 20 years
of ’active’ and ’break’ conditions defined by the circulation criterion shows that there
is a close relationship between circulation and convection associated with ’active’ and
’break’ conditions. A notable feature of the composites is that the meridional seesaw
of the convection anomalies is consistent with the low-level vorticity anomalies. It is
also worth noting that even after averaging over approximately eighty active (break)
episodes, fluctuations of OLR anomalies up to ±15 Wm−2 is seen over the two pre-
ferred regions. This means that, notwithstanding some variation in the intensity and
mean position of the TCZ from one ’active’ (’break’) episode to another, there exists a
common mean position of the TCZ during a typical ’active’ (’break’) episode. During
individual years it is not unusual to see ±25 Wm−2 OLR anomalies over either of the
zones.
To put the dynamical link between low-level cyclonic vorticity and convection on a
stronger footing, climatological mean composites of unfiltered pressure vertical veloc-
ity (ω) anomalies at 500 hPa corresponding to the same ’active’ and ’break’ days over
the full 20-year period were also constructed. It is seen in Figure 2.11 that, enhanced
(decreased) convection seen in Figure 2.10 are clearly associated with upward (down-
2.4 Mean Structure of ISOs 25
ward) motion in both ’active’ and ’break conditions. Location and spatial pattern of
the vertical velocity anomalies correspond well with those of the convection anoma-
lies. Thus, ’active’ (’break’) conditions are associated with a seesaw of the anomalous
regional Hadley circulation.
To illustrate the evolutionary character of the circulation anomalies associated with
the 30-60 day mode, composite vector wind anomalies at 850 hPa and associated rela-
tive vorticity corresponding to eight phases of evolution of the oscillation is shown in
Figure 2.12 for the period (1979-1989). The phase-1 corresponds to days when the fil-
tered zonal wind anomalies at the reference point (90◦E, 15◦N) is zero and increasing
towards positive direction. If T is the period, other phases are progressively T/8 days
apart. In this way phase-3 is our ’active’ phase while phase-7 is our ’break’ phase. The
transition of the vector wind anomalies from ’active’ to ’break’ phase is clear from this
figure. It is also seen that while the ’active’ (’break’) phase defined by us has the largest
horizontal scale, largest wind anomalies in the low-level jet region over the Arabian Sea
may occur about 14 period prior to our ’active’ (’break’) phase. The northward prop-
agation of the TCZ is also depicted clearly from the transition of vorticity in different
phases. Similarly the evolutionary character of OLR for the 30-60 day mode correspond-
ing to the eight phases is illustrated in Figure 2.13. The ’active’ and ’break’ days used
in the composite are exactly the same days defined by the 30-60 day zonal winds at the
reference point as in the circulation composite. Apart from illustrating the northward
propagation of the convection zones, the relationship between convection and vorticity
is revealed from these two figures (Figure 2.12 and Figure 2.13). The movement of the
convection anomalies seems to be in phase with the movement of the vorticity anoma-
lies. The wind anomalies in each phase appear to arise from a linear response to heating
associated with OLR anomalies. For example, the strong south westerly anomaly in the
Somalijet region in phase-2 is consistent with the fact that this phase is characterized by
more OLR anomalies over the continent. Similarly more zonal winds in phase-3 is due
to the fact that this phase is characterized by OLR anomalies over Bay of Bengal and
South China Sea.
The ’active’ and ’break’ composite are constructed for the 10-20 day mode following
a similar procedure. ’Active’ (’break’) conditions are now defined by the 10-20 day fil-
tered zonal winds at 850 hPa being greater than +1 standard deviation (less that -1 S.D)
at the same reference point south of the monsoon trough. Due to it’s shorter period, it is
possible to have 8-10 episodes of ’active’ or ’break’ conditions for this mode during the
2.4 Mean Structure of ISOs 26
summer monsoon season. The climatological mean ’active’, ’break’ composite vector
wind anomalies for the 10-20 day mode based on the entire twenty year period at 850
hPa is shown in Figure 2.14 together with the corresponding relative vorticity. Most
important feature of this mode is that it has a much smaller horizontal scale, confined
mainly to the Bay-of-Bengal. ’Active’ (’break’) conditions are associated with a strong
cyclonic (anticyclonic) vortex at the north Bay-of-Bengal with an anticyclonic (cyclonic)
vortex south of it between 10◦N and the equator. Due to the localized character of the
10-20 day mode, it is unlikely to have a strong influence on the large scale mean cir-
culation. However, depending on the phase relationship between the two ISOs, the
strong cyclonic (anticyclonic) vorticity over the north Bay-of-Bengal associated with the
’active’ (’break) phase of the 10-20 day mode can enhance (weaken) the cyclonic vortic-
ity over the monsoon trough zone associated with the 30-60 day mode [Goswami et al.,
1998]. In this manner, it can indirectly contribute to the mean monsoon circulation.
2.4 Mean Structure of ISOs 27
Figure 2.12: Climatological mean composite vector wind anomalies (ms−1) at 850 hPa andassociated relative vorticity (10−6s−1) corresponding to eight phases of evolution of the 30-60day mode for the period 1979-1989. The phase-1 corresponds to the days when the filtered zonalwind anomalies at the reference point is zero and increasing toward positive values.
2.4 Mean Structure of ISOs 28
Figure 2.13: Climatological mean composite OLR anomalies (Wm−2) corresponding to eightphases of evolution of the 30-60 day mode for the period 1979-1997. Eight composite phases areconstructed using unfiltered OLR anomalies and the same dates defined by 30-60 day filteredzonal winds as used in Figure 2.12.
2.4 Mean Structure of ISOs 29
Figure 2.14: (a,b) Climatological mean composite vector wind anomalies (ms−1) at 850 hPacorresponding to ’active’ and ’break’ conditions for the 10-20 day mode and (c,d) associatedrelative vorticity (10−6s−1). The climatological mean composite is calculated by averaging all’active’ and ’break’ conditions occurring during the 20-year period (1978-1997).
Figure 2.15: Meridional bimodality of spatial structure of the dominant ISO. (a) Scatter plot ofdaily 30-60 day filtered vorticity at 850 hPa (10−6s−1) over a northern band (70◦E-100◦E, 12◦N-22◦N) and a southern band (70◦E-100◦E, 5◦S-10◦N) during 1 June to 30 September for 19 years(1979-1997). (b) Scatter plot of 30-60 day filtered OLR anomalies (Wm−2) averaged over thenorthern TCZ (70◦E-100◦E, 12◦N-22◦N) and the southern TCZ (70◦E-100◦E, 0◦-12◦S) during 1June to 30 September for 18 years (1979-1997, excluding 1994).
2.5 Meridional Bimodality of ISO Spatial Structure 30
2.5 Meridional Bimodality of ISO Spatial Structure
As we hypothesize that the basic period and northward propagation of the mon-
soon ISOs result from the competition between the two favored positions of the TCZ,
the existence of meridional bimodality in low-level circulation and convection would
vindicate our hypothesis. In section 2.4, we showed that the peak phase of the ISO (the
’active’ and ’break’ phases) are characterized by a meridional bimodal structure. In this
section, we demonstrate that the meridional bimodality is characteristic not only of the
peak phases but valid through the evolution of the ISO. The robustness of the merid-
ional bimodality of the low-level vorticity is illustrated in Figure 2.15(a). In this figure,
the daily filtered vorticity over a north band (12◦N-22◦N) and a south band (10◦N-5◦S)
averaged between (70◦E-100◦E) during the northern summer is shown as a scatter dia-
gram for 19 years. The southern belt is part of a larger zone of opposite vorticity. It is
rather striking to note that, the vorticity over the two regions tend to be out of phase on
most days. The correlation between the two time series shown in this figure supports
this conclusion. Based on 19 years of daily values during summer season (June 1 to
September 30, i.e. 122 x 19 days), this correlation is highly significant. One may argue
that the southern favored position of the TCZ is between equator and 10◦S rather than
5◦S and 10◦N. It may be noted that the whole region between 12◦S and 10◦N fluctuates
with anticyclonic (cyclonic) vorticity corresponding to cyclonic (anticyclonic) vorticity
in the monsoon trough zone (Figure 2.8(c,d)). Figure 2.15(b) illustrates that the convec-
tion over the two favored locations indeed tends to fluctuate out of phase with each
other. Figure 2.15(b) shows a scatter diagram of OLR anomalies averaged over the two
preferred locations during the northern summer (June 1 to September 30) for the 18
years (1979-1997, excluding 1994). The correlation between convection anomalies over
the two locations while not very high is highly significant. The fact that there is a bi-
modality of convection over the two locations was also evident in the ’active’/’break’
composites (Figure 2.10). To understand the reason of the scatter in Figure 2.15(b), we
examined ’active’ and ’break’ composites of OLR for individual years. It is found that
(figure not shown) that bimodality of convection is clear in every individual year. How-
ever, there is some shift (east-west or north-south) in the location of the maximum OLR
anomalies over the two bands from one year to another. As we have fixed the position
of the two bands in plotting Figure 2.15(b), the non-stationarity of the band from one
year to another gives rise to the scatter in the plot. The year 1994 was excluded from
2.5 Meridional Bimodality of ISO Spatial Structure 31
the set (1979-1997) as it was found to be anomalous in the sense that the positions of the
northern and southern TCZ were appreciably different from the mean position used in
this scatter diagram.
In section 2.4, we pointed out that there is a close relationship between the low-
level vorticity and convective activity associated with the ISOs. The strength of this
relationship between the low-level relative vorticity and convection is illustrated in Fig-
ure 2.16(a,b). Here, we plot a scatter diagram of relative vorticity anomalies and OLR
anomalies averaged over the northern position of the TCZ (85◦E-95◦E, 12◦N-22◦N) and
the southern position of the TCZ (85◦E-95◦E, 0◦-12◦S). All 19-year data between May 1
to October 31 are used in these scatter plots. The relationship between the two is sig-
nificantly negative over the northern position while it is significantly positive over the
southern position of the TCZ. As the southern position of the TCZ falls in the southern
hemisphere, both the relationship show that cyclonic (anticyclonic) low-level vorticity is
significantly correlated with increase (decrease) of convective activity in both favorable
locations of the TCZ.
Figure 2.16: (a) Scatter plot of 30-60 day filtered relative vorticity at 850 hPa (10−6s−1) and OLR(Wm−2) anomalies averaged over a box (85◦E-95◦E, 12◦N-22◦N) of the northern TCZ during 1May to 31 October for 19 years (1979-1997). (b) same as (a) but averaged over a box (85◦E-95◦E,0◦-12◦S) of the southern TCZ.
2.6 Discussions and Conclusions 32
2.6 Discussions and Conclusions
In this chapter, the basic characteristics of intraseasonal oscillations of the Indian
summer monsoon is examined. We present a conceptual model (chapter 1) to describe
how the ISOs influence the seasonal monsoon. It envisages the ISO arising out of fluc-
tuation of the tropical convergence zone (TCZ) between two favored regions, one over
the monsoon trough (northern TCZ) and other over the equatorial warm waters (south-
ern TCZ). In one extreme of the ISOs (’active’ phase), the TCZ resides over the north-
ern position strengthening the seasonal mean monsoon circulation, enhancing cyclonic
vorticity over the northern TCZ and enhancing convection (and precipitation) over that
location while suppressing convection over the southern position. In the other extreme
(’break’ phase) weakened large scale monsoon flow and weakened cyclonic vorticity
over the northern position keeps the northern position clear of convection and helps
enhance convection over the southern position. A higher probability of occurrence of
’active’ (’break’) conditions in a monsoon season could therefore result in a stronger
(weaker) than normal seasonal mean monsoon.
In order to bring out the influence of the ISOs on the seasonal mean, it is desirable
to separate the externally forced component of the seasonal mean from the internally
forced component. We expect the slowly varying external forcing to give rise to slow
and persistent changes and manifest in the interannual variation of the annual cycle.
Intraseasonal anomalies are constructed in our study by removing the annual cycle of
individual years (sum of annual and semiannual harmonics) from the observations. In
this manner, we have been able to separate the influence of the external forcing on the
ISOs. We believe that this procedure is important in bringing out the intrinsic role of
the ISOs. Some studies define ISO anomalies with respect to climatological daily mean
as annual cycle and hence the ISOs contain the effect of interannual variations of the
annual cycle. This may be one reason why results of some previous studies have been
inconclusive.
Our first objective is to find the mean large scale spatial pattern associated with the
ISOs and compare them with that of the seasonal mean pattern. For this purpose we
have evolved a ’circulation’ criterion for defining ’active’ and ’break’ monsoon condi-
tions. Large scale structure of the mean circulation anomalies associated with the ’ac-
tive’ and ’break’ conditions of the dominant ISO modes are then obtained by construct-
ing composite of filtered 30-60 day or 10-20 day circulation anomalies at all points for
2.6 Discussions and Conclusions 33
all ’active’ and ’break’ days. Climatological mean of all such composites for individual
years is then constructed representing a spatial pattern of the ’active’ and ’break’ phases
that is invariant from year to year. Such climatological mean composites corresponding
to a typical ’active’ (’break’) condition of the 30-60 day mode is associated with a general
strengthening (weakening) of the large scale mean monsoon flow and strengthening
(weakening) of the monsoon trough. It is rather interesting that the circulation changes
are not confined only over the Indian region but extended all the way to east of 120◦E
(South China Sea). The enhanced low-level cyclonic (anticyclonic) vorticity in the north-
ern TCZ during an ’active’ (a ’break’) condition is associated with enhanced (decreased)
ascending motion leading to enhanced (decreased) convection over the northern TCZ
and decreased (enhanced) ascending motion and decreased (enhanced) convection over
the southern TCZ. In other words, the anomalous regional Hadley circulation has as-
cending motion over the northern TCZ and descending motion over the southern TCZ
during an ’active’ condition while the reverse is the case during a ’break’ condition. A
typical evolutionary cycle of the dominant ISO based on composite of circulation and
convection for 20 years (1978-1997) is also constructed that show repeated northward
propagation from the southern position to the northern position (monsoon trough).
On an average sense, the meridional bimodality of the spatial structure of the peak
phases of the dominant ISO is evident in the composites. We also show that there is a
seesaw of low-level vorticity between the two preferred locations of the TCZ on a day-
to-day basis. Whether it is the northern location or the southern location of the TCZ,
low-level anomalous cyclonic vorticity is associated with enhanced convection while
low-level anomalous anticyclonic vorticity is associated with decreased convection es-
tablishing a link between anomalous circulation and convection.
Chapter 3
Intraseasonal Oscillations and InterannualVariability of the Indian Summer Monsoon
In this chapter, the relationship between the intraseasonal oscillations and the inter-
annual variability of the seasonal mean Indian summer monsoon is investigated. An
attempt is made to arrive at some reliable conclusions through a series of detailed in-
vestigation of various aspects of the problem. Daily anomalies in a particular year is
defined as departure of observations from the annual cycle of that year and a Butter-
worth filter is used to isolate the ISO modes (see section 2.1). In order to include the
effect of both the ISO modes and keeping in mind their interannual variations in their
peak period, total intraseasonal activity is defined by a band pass filtered field with
peak response at 35 days and half responses at 15 days and 80 days respectively. For
all the calculations described below, these ISO filtered fields are used to bring out the
relationship between ISO and interannual variability.
3.1 A Common Spatial Mode of Intraseasonal and InterannualVariability
In the previous chapter (section 2.4), it was shown that the large scale structure of
the wind associated with the dominant ISO mode is quite similar to that of the seasonal
mean wind, strengthening and weakening the large scale flow during it’s ’active’ and
’break’ phases respectively. This similarity between the structure of the intraseasonal
variability and the seasonal mean flow provides the basis for our hypothesis that the
ISOs could influence the seasonal mean and it’s interannual variability. In this section,
we provide further evidence that the spatial structure of the intraseasonal variability
and the interannual variability are similar. The geographical distribution of the intrasea-
sonal activity and the interannual variability are compared in Figure 3.1. In this figure,
3.1 A Common Spatial Mode of Intraseasonal and Interannual Variability 35
the standard deviation of ISO filtered 850 hPa relative vorticity averaged over the 20-
year period (1978-1997) and interannual standard deviation of the seasonal mean (JJAS)
relative vorticity based on the same 20-year period are shown. It may be noted that
mean amplitude of intraseasonal activity of this field is two to three times larger than
the interannual variation of the seasonal mean in most places. The similarity of the
geographical distribution of intraseasonal variability and interannual variability of 850
hPa relative vorticity is noteworthy. The correlation between the two patterns is 0.64
over the monsoon region (50◦E-100◦E, 20◦S-30◦N). Both the patterns are characterized
by strong activity in the two favored positions of the TCZ namely a northern position
around the monsoon trough and a southern position between the equator and 10◦S. Re-
gions of higher intraseasonal activity are also regions of larger interannual variability.
What we have shown so far (e.g. the composite, the similarity between the S.D of
ISO and interannual variability of the seasonal mean) are only indicative of a common
mode of variability. To bring out the common spatial pattern of intraseasonal and in-
terannual variability, the following procedure is adopted. An EOF analysis of the ISO
filtered 850 hPa winds from June 1 to September 30 for all 20 years (1978-1997) is carried
out. The first EOF explaining 14.8% of the total intraseasonal variance and represent-
ing the dominant ISO mode is shown in Figure 3.2(a). The dominant interannual mode
is obtained from an EOF analysis of seasonal mean (JJAS) 850 hPa winds for 40 years
(1958-1997). The first EOF explaining 16.8% variance of interannual variability of the In-
dian summer monsoon is shown in Figure 3.2(b). That the interannual EOF1 represents
dominant variability of the Indian summer monsoon is seen from the strong correlation
between PC1 and IMR (r=0.62) shown in Figure 3.2(c). Although there are some mi-
nor differences, the similarity between the spatial patterns of the dominant ISO mode
and the dominant interannual mode is noteworthy. The easterlies south of the equator,
the cross-equatorial flow east of 50◦E, the convergence of air mass from north-west and
south-west over the Arabian Sea around 10◦N, the monsoon trough, the anticyclonic
vortex around 75◦E, 5◦N are all common in both the patterns. The cross equatorial flow
near African coast around equator seen in the interannual mode (Figure 3.2(b)) is not
seen in the intraseasonal mode (Figure 3.2(a)). This is partly due to the fact that the
dominant ISO can not be entirely represented by a single EOF due to its northward
propagating character. The second dominant ISO mode is strongly correlated with the
first at a lag of about 10 days and has large loadings exactly in this region∗. Therefore,
∗The second ISO EOF is not shown here for brevity. But the reader can refer to Chapter 5, Figure 5.2
3.1 A Common Spatial Mode of Intraseasonal and Interannual Variability 36
a common spatial pattern governs both the ISOs and the interannual variability, thus
linking the ISOs with the interannual variability of the Indian monsoon.
While the ISOs may have a common mode of spatial variability with the interannual
variations of the seasonal mean monsoon, they may not have appreciable influence on
the later unless the interannual variations of the ISO activity are significant. Therefore,
we estimate the amplitude of interannual variations of the ISO activity and compare
it with the amplitude of interannual variability of the seasonal mean. The standard
deviation of ISO filtered vorticity at 850 hPa and OLR between June 1 and September
30 is calculated each year at each grid point. The interannual standard deviation of
this intraseasonal standard deviation of each year is calculated based on 20 years (1978-
1997). The interannual standard deviation of seasonal mean (June-September) vorticity
at 850 hPa and OLR are separately calculated. The ratio between the standard deviation
of interannual variations of ISO activity and interannual variation of seasonal mean is
shown in Figure 3.3. It is seen that magnitude and pattern of ratio is similar for both
low-level vorticity and OLR. The equatorial belt (10◦S-10◦N) east of 100◦E is character-
ized by a low ratio, as the interannual variations are stronger in this region. In most
of the Indian monsoon regions the ratio ranges from 0.4 to 0.8. This indicates that the
variations of the ISO activity could account for 20% to 60% of interannual variability
of the seasonal mean in the Indian monsoon region. Thus, we can expect significant
modulation of the seasonal mean monsoon by the ISOs.
3.1 A Common Spatial Mode of Intraseasonal and Interannual Variability 37
Figure 3.1: Geographical distribution of intraseasonal and interannual activity. (a) Mean stan-dard deviation of ISO filtered relative vorticity (10−6s−1) at 850 hPa during 1 June to 30 Septem-ber for 20 years (1978-1997). (b) Interannual standard deviation of seasonal mean relative vor-ticity (JJAS, 10−6s−1) based on the same 20 years.
3.1 A Common Spatial Mode of Intraseasonal and Interannual Variability 38
Figure 3.2: First EOF of the intraseasonal and interannual 850 hPa winds. (a) IntraseasonalEOFs are calculated with ISO filtered winds for the summer months (1 June to 30 September)for a period of 20 years (1978-1997). (b) Interannual EOFs are calculated with the seasonal mean(JJAS) winds for 40-year period (1958-1997). Units of vector loading are arbitrary. (c) Relationbetween IMR and interannual PC1. Filled bars indicate interannual PC1 and the unfilled barrepresent IMR. Both time series are normalized by their own standard deviation. Correlationbetween the two time series is shown.
3.1 A Common Spatial Mode of Intraseasonal and Interannual Variability 39
Figure 3.3: Ratio between standard deviation of interannual variation of ISO activity and inter-annual variation of the seasonal mean. (a) Relative vorticity at 850 hPa. (b) OLR. Contours are(0.3, 0.4, 0.6, 0.8, 1.0).
3.2 Probability of ’Active’/’Break’ Conditions and Seasonal Mean Monsoon 40
3.2 Probability of ’Active’/’Break’ Conditions and Seasonal MeanMonsoon
The fact that spatial pattern associated with the dominant ISO mode has a large spa-
tial scale similar to the interannual variability of the seasonal mean, provides the basis to
the idea that ISOs could influence the seasonal mean. For example, a higher frequency
of occurrence of ’active’ (’break’) conditions within the monsoon season could lead to
strengthening (weakening) of the seasonal mean resulting in a strong (weak) monsoon.
This essentially is the hypothesis proposed in our conceptual model (chapter1). To test
this hypothesis, we calculate probability density functions of the ISOs corresponding to
’strong’ and ’weak’ monsoon years. ’Strong’ and ’weak’ monsoon years are objectively
defined based on whether IMR is greater than 1 S.D or less than -1 S.D. To have enough
sample of such years we use daily data between 1956 and 1997. This period contains
seven strong years (1956, 1959, 1961, 1970, 1975, 1983 and 1988) and ten ’weak’ monsoon
years (1965, 1966, 1968, 1972, 1974, 1979, 1982, 1985, 1986, 1987). As mentioned earlier,
the spatial pattern of the ISOs involve a northward propagating component. As a result,
the evolutionary character of the ’active’ and ’break’ conditions cannot be described by
a single EOF. To estimate the PDF of the ISOs, therefore, it is necessary to include more
than one EOF. In the present study, we estimate the PDF of the ISOs using at least two
EOFs. To obtain the PDF for the ’strong’ (’weak’) years, daily ISO filtered 850 hPa vor-
ticity between June 1 and September 30 for all ’strong’, all ’weak’ and ’all’ (all 20 years
between 1978 and 1997 taken together) years are combined and an EOF analysis is car-
ried out in each case using singular value decomposition technique [Nigam and Shen,
1994]. The first two EOFs in each case are shown in Figure 3.4. It may be noted that the
first EOF in ’strong’ and ’weak’ cases for positive projection coefficients (PC’s) represent
’active’ like and ’break’ like conditions respectively. The PDF of the PC’s in the reduced
phase space defined by the first two EOFs explaining 17% of the total variance of the
’strong’ years (21% for ’weak’ and 15% for ’all’ years) are obtained using a Gaussian ker-
nel estimator [Kimoto and Ghil, 1993; Silverman, 1986] with a smoothing parameter large
enough to detect multi-modality with statistical significance. The smoothing parameter
(h) is selected from the minimum obtained from the least-squares cross validation tech-
nique [Kimoto and Ghil, 1993]. In our case, h usually varies between 0.6 and 0.8. In these
calculations both the PC’s are normalized by the temporal S.D of each of the PC’s.
3.2 Probability of ’Active’/’Break’ Conditions and Seasonal Mean Monsoon 41
The two-dimensional PDF corresponding to ’strong’, ’weak’ and ’all’ years are shown
in Figure 3.5(a), (b) and (c) respectively. For ’strong’ and ’weak’ years the PDF of ISO ac-
tivity is clearly non-Gaussian while in the case of ’all’ years, it is a Gaussian. The spatial
pattern corresponding to the maxima of PDF in each case is constructed using appro-
priate normalization constants for the PC’s and the corresponding EOF1 and EOF2 pat-
terns. In the ’strong’ case we note that the two maxima have almost equal probability.
In the ’weak’ case there are three maxima of the PDF patterns while in the ’all’ case there
is only one maximum. As the number of ’strong’ and ’weak’ monsoon years included in
the PDF calculation are quite large, we expect the maxima of PDFs in Figure 3.5(a) and
Figure 3.5(b) to be robust. To test the statistical significance of these maxima, we created
1000 random sets of time series having same variance and autocorrelation at 1-day lag
equal to those of observed PC1 and PC2 and 2-D PDFs were calculated for each of them.
In Figure 3.5(a) and Figure 3.5(b), shading represents regions where the observed PDF
is significantly greater than the random ones with 90% confidence, i.e. 25 or fewer of
the random PDFs were larger than those shown in Figure 3.5(a) and Figure 3.5(b). The
maxima of the PDFs are found to be statistically significant in each case. In the ’strong’
and ’weak’ cases, we are primarily concerned with the statistical significance of the PDF
maxima representing deviation from Gaussian distribution. Since in the ’all’ case as the
PDF pattern is a Gaussian, similar significance test is not presented. In the ’strong’
case, the maximum with normalized PC1 close to 1 and PC2 close to zero represents a
strong ’active’ condition shown in Figure 3.6(a). The other maximum represents a very
weak ’break’ pattern. Although the two patterns have equal probability, strong ’active’
pattern would have the dominating influence on the seasonal mean. For the ’weak’
case, the maximum with both PC1 and PC2 close to zero represents a transition pattern.
Both the other maxima represent strong ’break’ conditions. One such ’break’ condition
with both PC1 and PC2 making approximately equal contributions is shown in Figure
3.6(b). On the other hand, the maximum of the PDF in ’all’ year case corresponds to a
transition pattern with insignificant vorticity associated with it is shown in Figure 3.6(c).
3.2 Probability of ’Active’/’Break’ Conditions and Seasonal Mean Monsoon 42
Figure 3.4: First two EOFs of the daily ISO filtered 850 hPa vorticity from 1 June to 30 Septem-ber. (a) EOF1 and (b) EOF2 for seven ’strong’ years (c) EOF1 and (d) EOF2 for ten ’weak’ years(e) EOF1 and (f) EOF2 for ’all’ (20 years from 1978 to 1997) years. Arbitrary EOF loadings havebeen multiplied by a factor of 100.
3.2 Probability of ’Active’/’Break’ Conditions and Seasonal Mean Monsoon 43
Figure 3.5: Evidence of change in regimes of ISOs during ’strong’ and ’weak’ monsoon years.Illustrated are two-dimensional PDFs of the ISO state vector spanned by two dominant EOFsof low-level vorticity. PDFs are calculated with principal components normalized by their ownstandard deviation and taking the summer days (1 June to 30 September) for (a) 7 ’strong’ mon-soon years (b) 10 ’weak’ monsoon years (c) 20 combined ’strong’, ’weak’ and ’normal’ years(1978-1997). The smoothing parameter used is h=0.6 and PDFs are multiplied by a factor 100.The first two EOFs (not shown) are different in ’strong’, ’weak’ and ’all’ years but are related to’active’ and ’break’ conditions. The origin of the plots corresponds to a very weak state repre-senting a transition between the two states (as in the ’all’ case).
3.2 Probability of ’Active’/’Break’ Conditions and Seasonal Mean Monsoon 44
Figure 3.6: Geographical patterns of the dominant regimes for low-level relative vorticity(10−6s−1) shown in Figure 3.5. (a) ’strong’ monsoon years (b) ’weak monsoon years (c) ’all’years.
3.2 Probability of ’Active’/’Break’ Conditions and Seasonal Mean Monsoon 45
We note that the seasonal mean low-level vorticity over the northern TCZ position
is cyclonic (see Figure 2.1). The cumulative effect of higher frequency of occurrence of
’active’ (’break’) conditions is expected to result in stronger (weaker) than normal cy-
clonic vorticity in this region. Since higher frequency of ’active’ (’break’) conditions are
associated with ’strong’ (’weak’) Indian monsoon, we can expect a strong relationship
between seasonal mean vorticity over the monsoon trough (northern position of TCZ)
and the strength of the Indian monsoon. This conjecture is tested in Figure 3.7 where we
plot the seasonal mean relative vorticity averaged over the monsoon trough and IMR
for the 40-year period (1958-1997). The correlation between the two time series is 0.74,
strongly supporting our conjecture.
Figure 3.7: The monsoon trough vorticity (MTV) and the Indian Monsoon Rainfall (IMR) fora 40-year period (1958-1997). MTV is defined as the seasonal mean vorticity (JJAS) averaged inthe domain 40◦E-90◦E and 10◦N-30◦N. Both time series are normalized by their own standarddeviation. Correlation between the two time series is shown.
It would be desirable to see if the conclusions derived from circulation alone will be
supported if convection is also included to describe ISOs. However, OLR data as proxy
for convection is available only from 1974 onwards. The period between 1974 and 1997
contains six ’weak’ monsoon years (1974, 1979, 1982, 1985, 1986, 1987) as described by
the criterion used earlier. However, the same criterion indicates only three ’strong’ mon-
soon years in this period. To enhance the sample size of the ’strong’ monsoon years, we
relaxed the objective criterion to include years for which IMR > 0.5 S.D. Based on the
relaxed criterion, six ’strong’ monsoon years (1975, 1978, 1983, 1988, 1990,1994) are se-
lected during this period. As in the previous case, a combined EOF analysis is carried
out for 850 hPa vorticity and OLR for ’strong’ (’weak’) years. The first two CEOFs in
each case are shown in Figure 3.8. It may be noted that the first CEOF in ’strong’ and
3.2 Probability of ’Active’/’Break’ Conditions and Seasonal Mean Monsoon 46
’weak’ cases for positive projection coefficients (PC’s) represent ’active’ like and ’break’
like conditions respectively. The PDF is then calculated on the reduced phase space de-
fined by the first two CEOFs. Similarly, the PDF of CEOF for ’all’ years (all 20 years from
1978-1997) is also calculated. The PDFs for three different cases are shown in Figure 3.9.
It is clear that the PDFs are asymmetric for both ’strong’ and ’weak’ cases while it is a
Gaussian in ’all’ case. As in the earlier case, statistical significance for the observed PDFs
were carried out and regions of phase space where the observed PDFs are significantly
larger than the randomly generated ones with 90% confidence are shaded. Using appro-
priate normalization constants for the PC’s and corresponding EOF1 and EOF2 (Figure
3.8) the patterns representing maxima in PDF are calculated. In the ’strong’ case, the
most probable pattern corresponds to an ’active’ condition (Figure 3.10(a)). The other
maxima with much less probability represents a weak ’break’ condition (not shown).
For the ’weak’ case both maxima correspond to ’break’ conditions. The one with nor-
malized PC’s close to zero, however, represents a weak ’break’ condition (not shown)
while the other maxima in PDF represents a strong ’break’ condition (Figure 3.10(b)).
The most probable pattern in the ’all’ case (Figure 3.10(c)) corresponds to a very weak
pattern representing a transition between ’active’ and ’break’ patterns. Thus, even if
we take circulation and convection together, the strong (weak) monsoon appears to be
associated with a higher probability of occurrence of active (break) like conditions.
3.2 Probability of ’Active’/’Break’ Conditions and Seasonal Mean Monsoon 47
Figure 3.8: First two CEOFs of the daily ISO filtered 850 hPa vorticity and OLR from 1 June to30 September. (a) CEOF1 and (b) CEOF2 for six ’strong’ years (c) CEOF1 and (d) CEOF2 for six’weak’ years (e) CEOF1 and (f) CEOF2 for ’all’ (20 years from 1978 to 1997) years. Arbitrary EOFloadings have been multiplied by a factor of 100.
3.2 Probability of ’Active’/’Break’ Conditions and Seasonal Mean Monsoon 48
Figure 3.9: Same as Figure 3.5 but based on the state vector defined by the first two combinedEOF of low-level vorticity and OLR.
3.2 Probability of ’Active’/’Break’ Conditions and Seasonal Mean Monsoon 49
Figure 3.10: Geographical patterns of the dominant regimes shown in Figure 3.9. (a) ’strong’monsoon years (b) ’weak monsoon years (c) ’all’ years. OLR patterns are shown as shadedcontours (Wm−2) while the corresponding low-level vorticity are shown in contours (10−6s−1).
3.3 Interannual Variations of ISO Activity and Seasonal Mean Monsoon 50
3.3 Interannual Variations of ISO Activity and Seasonal MeanMonsoon
Instead of trying to relate the seasonal mean monsoon to statistics of ’active’ and
’break’ conditions, in this section we ask, is there a relationship between level of ISO
activity and seasonal mean Indian monsoon? Few previous studies have indicated evi-
dence to connect the interannual variations of ISO activity and seasonal mean monsoon
strength. Hendon et al. [1999] found that global ISO activity during boreal winter is in-
versely related to Australian monsoon strength. Recently Lawrence and Webster [2001]
found that summertime ISO activity exhibits an inverse relationship with the Indian
monsoon strength using OLR over a 22-year period (1975-97). However, they found
that the correlation between ISO activity and monsoon over Bay of Bengal is weak.
Thus the robustness of the negative relationship between ISO activity and Indian sum-
mer monsoon is not clear.
We have used circulation data for a 44-year period (1954-97) from NCEP/NCAR
reanalysis for this purpose. An index is defined to represent the strength of the ISO
activity. In the previous chapter (section 2.5), we have shown that the monsoon ISO is
characterized by a meridional bimodal structure. There is a seesaw of low-level vorticity
and convection between the two preferred locations of the TCZ on a day-to-day basis.
We have defined the ISO activity index as the variance associated with the low-level
ISO filtered vorticity averaged over one of the center of action of ISO activity (70◦E-
100◦E, 12◦N-22◦N) . The all India monsoon rainfall (IMR) represents the seasonal mean
monsoon strength. Figure 3.11 shows time series of the ISO activity index and IMR each
normalized by it’s own standard deviation for the 44 year period. The correlation of 0.32
is significant at the 5% level. Although this relationship is not very strong, it indicates
that interannual variations of ISO activity is positively related to the monsoon strength.
This result is consistent with Figure 3.1. This means that strong activity of intrasea-
sonal oscillations tends to correspond to seasons of above normal rainfall. This result is
in contrast with Lawrence and Webster [2001], as they found an inverse relationship be-
tween the strength of the ISO activity and IMR using OLR data for a period (1975-1997).
The correlation between the ISO activity index and IMR in this period (1975-1997) for
low-level vorticity is very low (r=0.09) whereas the correlation for the period 1954-1974
is high (r=0.59). This indicates that the relationship between ISO activity and IMR is
weakening in the recent decades. This demonstration of the two periods is rather arbi-
3.4 Discussions and Conclusions 51
1955 1960 1965 1970 1975 1980 1985 1990 1995
−2
−1
0
1
2
r=0.32
r=0.09r=0.59
Figure 3.11: (a) Time series of ISO activity index (blue) and All India Monsoon Rainfall Index(IMR, black) normalized by it’s own standard deviation for a 44-year period (1954-1997).
trary. To examine the changing character of this correlation, a 21-year sliding window
correlation analysis was carried out between the two variables. It is seen that (figure not
shown) that the correlation remained about 0.6 until mid-seventies and then decreased
rapidly and remained low in eighties and nineties.
3.4 Discussions and Conclusions
The primary objective of this study is to investigate how and to what extent the
monsoon ISOs influence the seasonal mean and the interannual variability of the In-
dian summer monsoon. The underlying hypothesis is that the seasonal mean monsoon
has a component forced by internal dynamics in addition to a component forced by
external conditions such as slowly varying boundary forcings. This hypothesis can be
considered as an extension of the Charney and Shukla [1981] hypothesis that suggested
the interannual variation of Indian monsoon to be primarily forced by boundary forcing
at the earth’s surface. We propose that the part of the interannual variations of the sea-
sonal mean that is independent of external forcing arise from the changes in the statis-
tics of the intraseasonal oscillations of the Indian monsoon. As the ISOs are intrinsically
chaotic, the predictability of the seasonal mean Indian monsoon depends on the extent
to which the ISOs influence the seasonal mean relative to the externally forced compo-
nent. According to our conceptual model, the intraseasonal and interannual variations
of the Indian monsoon should be governed by a common mode of spatial variability.
In addition, if indeed the ISOs determine the ’strong’ and ’weak’ monsoons, the PDF
of the ISOs should have higher probability of occurrence of ’active’ conditions during
’strong’ monsoon years and ’break’ conditions during ’weak’ monsoon years. These
two elements of our hypothesis are rigorously tested using a sufficiently long record of
daily circulation and convection data.
3.4 Discussions and Conclusions 52
Our first objective was to find the mean large scale spatial pattern associated with
the ISOs and compare them with that of the seasonal mean pattern. We have found
that spatial pattern of the ’active’ and ’break’ that is invariant from year to year and
is similar to the spatial structure of the seasonal mean (Chapter 2). The close resem-
blance between the spatial structure of the ’active’ and ’break’ composites and that of
the seasonal mean, indicates a similarity between the spatial structure of intraseasonal
and interannual variability. The spatial distribution of standard deviation of 850 hPa
vorticity associated with ISO variability and that of interannual variability of the sea-
sonal mean are shown to be closely similar (pattern correlation 0.64, Figure 3.1). That
the intraseasonal and interannual variations are governed by a common spatial mode
of variability (Figure 3.2) is seen from the notable similarity between the dominant EOF
of intraseasonal oscillations (based on 20 years of daily ISO filtered data during the
summer season) and the dominant EOF of the interannual variation of the seasonal
mean (based on 40 years data of seasonal mean data). In contrast to some recent stud-
ies [Annamalai et al., 1999; Sperber et al., 2000] where it is claimed that it is not possible
to describe the interannual variations of the Indian summer monsoon by a single EOF,
we show that the dominant EOF indeed represents interannual variations of the Indian
summer monsoon (correlation between IMR and PC1 is 0.62) if the domain is restricted
between 40◦E-100◦E and 20◦S-30◦N. Sperber et al. [2000] has found a common mode of
variability between intraseasonal and interannual variations in the third leading EOF.
If the domain of analysis included regions east of 100◦E, the ENSO related variation in
the eastern part of the domain dominates the first EOF and the interannual monsoon
variations may appear as the second or third EOF.
Next, we show that the interannual variations of the summer ISO variance has the
potential for significantly influencing (up to 20-60%) the interannual variations of the
seasonal mean. Then, we argue that it is not the amplitude of the ISO activity but the
asymmetry in the occurrence of the ’active’ and ’break’ conditions that affect the sea-
sonal mean. We investigate whether the frequency of occurrence of ’active’ and ’break’
conditions are distinctly different during ’strong’ (flood years) and ’weak’ (drought
years) monsoon years. For this purpose, a two-dimensional PDF estimation technique
is employed on the ISO filtered field. Daily low-level vorticity field between 1956 and
1997 is employed to include a large number of ’strong’ (seven) and ’weak’ (ten) mon-
soon years. This objective technique clearly shows that the PDFs are distinctly asym-
metric and different during ’strong’ and ’weak’ monsoon years and the most frequently
3.4 Discussions and Conclusions 53
occurring pattern during ’strong’ (’weak’) monsoon years is the ’active’ (’break’) pat-
tern. On the other hand, if all years are linked together, the PDF is Gaussian with the
transition between ’active’ and ’break’ pattern being the most frequently occurring pat-
tern. Thus, the cumulative effect of the ’active’ condition during a ’strong’ monsoon
season lead to stronger that normal cyclonic vorticity in the north TCZ position and
stronger than normal seasonal mean. This conclusion is further supported by strong
correlation between seasonal mean vorticity over the northern TCZ position and IMR
(Figure 3.7). That the conclusions arrived at from the PDF of low-level vorticity are
robust is supported by PDF estimate of combined low-level vorticity and convection.
Using simultaneous convection and circulation data (1974-1997), combined EOF of the
low-level vorticity and OLR is carried out for all ’strong’ and ’weak’ years as well as all
the years taken together. This calculation also shows that the most frequent pattern dur-
ing a ’strong’ (”weak’) year is the ’active’ (’break’) pattern with enhanced (decreased)
cyclonic vorticity and negative (positive) OLR anomaly over the northern TCZ position.
Our results are consistent with the findings of Krishnamurthy and Shukla [2000] where
they examined daily rainfall over Indian continent for the period 1901-1970 and showed
that ’strong’ (’weak’) monsoon years are associated with ’active’ (’break’) conditions
(their Fig.12a). They define ISO anomalies with respect to a climatological mean sea-
sonal cycle. If they remove the ’seasonal mean anomaly’ (June 1-September 30) from
the anomalies they do not find a clear signal of skewness in the PDF. Their figure 13
which brings out the strengthening and weakening of the large scale monsoon flow by
the ISO is also consistent with our result. They argue that the active and break phases do
not change the character of the mean monsoon flow, but merely representing strength-
ening and weakening of the flow. However, if we look at the magnitude of change in
the mean in their figure, it accounts for 20-30% change of the mean during ’active’ and
’break’ conditions. Close to the equator the change could be even 100%. This we believe
represents significant change of the mean by ISO.
Both Krishnamurthy and Shukla [2000] and Sperber et al. [2000] agree with each other
and claim that the PDF of the ISO modes is biased towards positive or negative side
during strong and weak years only if the low frequency interannual variation of the
seasonal mean is not removed. Our results, differ with these studies in that we find
a distinct bias of the PDF towards ’active’ (’break’) conditions during strong (weak)
monsoon years even after removing the seasonal mean anomaly. Although we define
anomalies as departure of observations from annual cycle of individual years, the PDF
3.4 Discussions and Conclusions 54
is calculated on the band pass filtered ISO anomaly. This procedure essentially removes
the seasonal mean. The main difference between ours and earlier studies is the use of
two EOFs to describe the dominant ISO mode in our study. Both the studies mentioned
above used only one EOF to describe the dominant ISO mode. Since the dominant ISO
mode has a prominent northward propagating character, it cannot be described by just
one EOF. We believe that this is the reason why the earlier studies failed to notice any
bias in the PDF after removing the seasonal mean.
Chapter 4
Estimate of Potential Predictability ofMonthly and Seasonal Means in Tropicsfrom Observations
4.1 Introduction
The predictability of weather (or the instantaneous state of the atmosphere) is lim-
ited to about two weeks [Lorenz, 1982] due to inherent instability and nonlinearity of the
system. The atmosphere, however, possesses significant low frequency variability. As
has been mentioned in Chapter 1, if the low frequency variations of the monthly and
seasonal means were entirely governed by scale interactions of the higher frequency
chaotic weather fluctuations, then the time averages will be no more predictable than
the weather disturbances themselves. However, it appears that a large fraction of the
low frequency variability, specially in the tropics, may be forced by slowly varying
boundary conditions such as the sea surface temperature (SST), soil moisture, snow
cover and sea-ice variations. Hence, the predictability of climate (e.g. space-time aver-
ages) is determined partly by chaotic internal processes and partly by slowly varying
boundary forcings. This understanding that anomalous boundary conditions (ABC)
may provide potential predictability has formed the scientific basis for deterministic
climate predictions [Charney and Shukla, 1981; Shukla, 1981, 1998]. Research during the
past decade has shown that the climate in large part of tropics is largely determined by
slowly varying SST forcing where potential for making dynamical forecast several sea-
sons in advance exists [Latif et al., 1998]. However, during the same period, we have also
learnt that there are regions within the tropics, climate of which is not strongly governed
by ABC. The Indian summer monsoon is such a system [Webster et al., 1998; Brankovic
and Palmer, 1997; Goswami, 1998]. The intraseasonal oscillations such as the east-ward
propagating Madden-Julian Oscillations (MJOs) and the north-ward propagating mon-
4.1 Introduction 56
soon ISOs with period in the range of 30 to 60 days are quite vigorous in the tropics.
Both the MJOs as well as the monsoon ISOs are known to be driven by internal feed-
back between convection and dynamics. In addition to the scale interactions between
weather disturbances, time-averaging of the chaotic ISOs can also contribute to the low
frequency variability of monthly and seasonal means in the tropics. The nonlinear scale
interaction associated with the weather disturbances in the tropics is likely to be weak
as they are less vigorous compared to their counterpart in the extra-tropics. Therefore,
we envisage that most of the internal contribution to the low frequency variations in the
tropics may come from time averaged residual of the ISOs.
The total low frequency variance of any variable in a given region (σ2) could be
written as super-position of variance due to external forcing (σ2e ) and variance due to
internal processes (σ2i ).
σ2 = σ2e + σ2
i
Making unambiguous estimates of the ’internal’ and ’external’ components of vari-
ability from observations is rather difficult. Madden [1976, 1981], Madden and Shea [1978]
and Shea and Madden [1990] attempted to estimate the two variances in some extra-
tropical regions. They estimated synoptic scale internal variability from short time se-
ries (such as within a season) and extrapolated the power spectrum to lower frequencies
by assuming a white noise extension. This approach is simple but assumes that the low
frequency power spectrum would be white and it could be extrapolated from power
at higher frequencies. Shukla [1983] commented at length on Madden’s [1976] approach
and argued that the methodology used and assumptions made by Madden could have
overestimated the natural variability or ’climate noise’ and underestimated the poten-
tial predictability. Madden [1983] while disagreeing with Shukla that his method un-
derestimated the potential predictability agreed that there is considerable uncertainty
in separating the so called ’climate noise’ from the climate signal. Shukla and Gutzler
[1983] and Short and Cahalan [1983] used a more general low frequency extension of
the intraseasonal variance to estimate the level of ’climate noise’. Trenberth [1984a, b]
points out that these estimates depend crucially on the use of correct value of T, the
effective time between independent data. He pointed out that these studies may have
underestimated T by using negatively biased estimates of the lagged autocorrelations
by improperly removing the annual cycle and interannual variability.
Alternatively this ratio could be estimated using atmospheric general circulation
models (AGCM) from a long integration with observed boundary condition and an-
4.1 Introduction 57
other long integration with fixed boundary condition [Goswami, 1998] or from an ensem-
ble of long integrations of the AGCM with the same observed boundary conditions but
differing only in the initial conditions [Stern and Miyakoda, 1995; Harzallah and Sadourny,
1995; Rowell et al., 1995]. Kumar and Hoerling [1995] estimated the ratio between the ex-
ternal and internal variability for the extra tropics using a large ensemble of long simu-
lations by an AGCM. Zweirs and Kharin [1998] have examined the interannual variability
and potential predictability of 850 hPa temperature, 500 hPa geopotential and 300 hPa
stream function simulated by AMIP models. They have found that there is a wide varia-
tion in the ability of the AGCMs to simulate observed interannual variability, both total
and weather noise component. Zheng et al. [2000] have proposed a method to estimate
potential predictability of seasonal means using monthly mean time series. Using this
technique they have estimated the potential predictability of surface temperature, 500
hPa geopotential height and 300 hPa winds. The potential predictability tends to be
high in the tropics and low in the extratropics as per their calculations.
Singh and Kriplani [1986] have estimated potential predictability of lower tropo-
spheric monsoon circulation and rainfall over India for JJA season. Daily 700 hPa
geopotential heights, mean sea level pressure and rainfall anomalies were used for the
study. They have found that potential predictability of seasonal lower tropospheric
fields is less over the monsoon trough, but it generally increases with decreasing lat-
itude. For rainfall, potential predictability is about 50% over the major parts of the
country. The reliability of the estimates of potential predictability in this study may be
affected by insufficient data length. The method of removing the annual cycles which
is important in these kind of analysis [Trenberth, 1984a] has not been outlined.
Sontakke et al. [2001] have estimated potential for long-range predictability of pre-
cipitation over the Indian sub-continent using precipitation data from 1901-1970. Their
study indicate that the climate noise is small compared to climate signal over the Indian
monsoon region. The F-ratios of JJAS precipitation ranges from 1.5 to 2.5, with high
values on the west coast of India. Although the F-ratios are not very high, it indicates
certain amount of potential predictability of the seasonal mean precipitation.
In all the studies of estimating potential predictability from observations mentioned
earlier, the total interannual variability (i.e the climate signal) is compared to the ’cli-
mate noise’. The so called ’climate signal’ actually contains contributions from the ’ex-
ternal’ forcing as well as the internal ’climate noise’. To the best of our knowledge, no
attempt has been made to separate the contributions from the ’external’ and the ’inter-
4.2 Estimation of Potential Predictability of Monthly Means 58
nal’ components to the observed interannual variability. Here, we propose a method of
separation of interannual variances of monthly means associated with the slowly vary-
ing externally forced component and from the internally determined component. The
variances associated with the ’internal’ and ’external’ components are estimated. It is
also demonstrated that the ’external’ component separated by our method indeed rep-
resents the response of the tropical atmosphere to the slowly varying SST forcing. A
measure of potential predictability is defined as the ratio between the ’total’ (sum of
’external’ and ’internal’) and the ’internal’ components.
Primary objective of this chapter is to make a quantitative estimate of potential pre-
dictability of the Asian monsoon climate on monthly and seasonal time scales. Many
studies in the past [Madden, 1976, 1981; Madden and Shea, 1978; Shea and Madden, 1990;
Shukla and Gutzler, 1983; Short and Cahalan, 1983] have estimated potential predictability
of the extratropical climate from observations. Following the pioneering work of Char-
ney and Shukla [1981], some others (e.g. Singh and Kriplani 1986) also have attempted
to estimate the potential predictability of the Indian summer monsoon. Due to dif-
ferences in the methodology used and due to inhomogeneity of data used in different
studies, it has been difficult to arrive at an universal conclusion regarding the quan-
titative measure of predictability over different geographical locations in general and
the Indian monsoon region in particular. With the availability of long term record of
homogeneous atmospheric circulation data for over 40 years (e.g. from NCEP/NCAR
Reanalysis), it is now worthwhile to re-examine the quantitative measure of potential
predictability in the tropics. While potential predictability over the global tropical belt
will be estimated, the predictability of Asian monsoon region will be contrasted with
that over the other tropical regions. In particular, we shall try to assess the contribution
of the intraseasonal oscillations to the potential predictability.
4.2 Estimation of Potential Predictability of Monthly Means
4.2.1 Methodology
The main data used in this study are the daily low-level zonal winds (850 hPa), up-
per level zonal winds (200 hPa) and 700 hPa geopotential height from NCEP/NCAR
reanalysis for 33 years (1965-1997). Daily interpolated outgoing long wave radiation
from the NOAA polar orbiting satellites for 20 years (1980 to 1999) were also used. Our
methodology is based on the following premise. The anomalies associated with the
4.2 Estimation of Potential Predictability of Monthly Means 59
synoptic and intraseasonal oscillations may be defined as the deviations from the an-
nual cycle. The annual cycle at any place can be defined by the sum of the first few
harmonics. In the present study, the annual cycle is defined as the sum of the first three
harmonics of daily data for each year. The annual cycle defined in this manner varies
from year to year. An example of such interannual variations of the annual cycle of
low-level zonal winds at a point over the Indian Ocean is shown in Figure 4.1. It is clear
that the annual cycle has significant year to year variations. We hypothesize that the
interannual variations of the annual cycle are essentially forced by the slowly varying
boundary forcing. The dominant slowly varying boundary forcing in the tropics is that
associated with the El Nino and Southern Oscillation (ENSO) related SST variations.
Since the time scale of variations of the boundary forcing is much longer (3-4 years to
decadal) than that of the annual cycle, it essentially modulates the annual cycle. Thus,
the interannual variations introduced by the ’external’ (slowly varying) forcing can be
estimated from the monthly means constructed from the deviations of the individual
annual cycles from the climatological mean annual cycle. The annual cycle of zonal
winds at 850 hPa and 200 hPa and geopotential height at 700 hPa for all years from
1965 to 1997 and those for OLR for all years from 1980 to 1999 are first calculated. From
the daily annual cycles, climatological mean daily annual cycles of each field is calcu-
lated. Monthly ’external’ anomalies are estimated as monthly means of deviations of
individual annual cycles from the climatological mean annual cycle.
If daily anomalies in a particular year is defined as the departure of daily obser-
vations from the annual cycle of that year, they represent the ’internal’ contribution
as the ’external’ component represented by the interannual variation of the annual cy-
cle is removed in this process. Thus, the monthly means of the daily anomalies con-
structed in this manner represent the ’internal’ component. This definition implies that
averaged over the whole year, the daily anomalies vanish. However, due to the in-
traseasonal oscillations, the monthly means are non-zero. Our definition of ’internal’
monthly anomaly implies that it is contributed primarily by the intraseasonal oscilla-
tions and any ’climate noise’ arising from higher frequency weather events is neglected.
The ’internal’ and ’external’ monthly mean anomalies calculated in this manner are sta-
tistically independent as the temporal correlation between the two is nearly zero every-
where (figure not shown).
4.2 Estimation of Potential Predictability of Monthly Means 60
Figure 4.1: An illustration of variations of the annual cycle from year to year. The annual cycleof zonal winds (ms−1) at 850 hPa at a point (80◦E, 5◦N) are shown for 20 years.
4.2 Estimation of Potential Predictability of Monthly Means 61
Let us define total monthly anomaly of any field (say, zonal wind ) as sum of monthly
anomalies associated with ’internal’ and ’external’ components.
UT (x, y, t) = UE(x, y, t) + UI(x, y, t)
where subscripts E and I refer to the ’external’ and the ’internal’ components. Squar-
ing both sides and summing over all months we can write the total variance to be
given by sum of variances associated with the ’internal’ and the ’external’ components,
namely
σ2T = σ2
E + σ2I ,
as the correlation between the ’internal’ and the ’external’ components is zero. The
total interannual variance may be estimated in two ways. The traditional way of calcu-
lating it is to construct monthly mean data from the raw daily data. Then construct a
climatological monthly mean annual cycle. Deviations of the monthly means from this
climatological monthly mean annual cycle are the total monthly mean anomalies. The
total interannual variance may be calculated from these total anomalies. Alternatively,
daily anomalies can be constructed with respect to the daily climatological mean an-
nual cycle. The monthly means obtained from these daily anomalies give us the total
monthly mean anomalies.
Let U(m,n) represent any field for the nth day of the mthth year, where n= 1,2...365;
m= 1,2...Y. The annual cycle (Ua(m,n)) is defined as the sum of the first three harmonics
of daily data.
To find external monthly anomalies:
Daily climatological mean of the annual cycles is defined as
Uca(n) =1Y
Y∑m=1
Ua(m,n) (4.1)
Daily ’external’ anomaly is defined as
U(m,n) = Ua(m,n)− Uca(n) (4.2)
Monthly mean of ’external’ anomalies
UE(m, k)k=1..12 =130
30∗k∑n=1+30∗(k−1)
U(m,n) (4.3)
4.2 Estimation of Potential Predictability of Monthly Means 62
To find ’internal’ monthly anomalies:
Daily ’internal’ anomaly is defined as
U(m,n) = U(m,n)− Ua(m,n) (4.4)
Monthly mean of ’internal’ anomalies
UI(m, k)k=1..12 =130
30∗k∑n=1+30∗(k−1)
U(m, n) (4.5)
To find ’total’ monthly anomalies:
Daily climatological mean is defined as
Uc(n) =1Y
Y∑m=1
U(m, n) (4.6)
Daily ’total’ anomaly is defined as
UT (m,n) = U(m,n)− Uc(n) (4.7)
Monthly mean of daily anomalies
U′(m, k)k=1..12 =
130
30∗k∑n=1+30∗(k−1)
UT (m,n) (4.8)
To test our claim that the ’external’ anomalies as estimated by us are essentially
driven by slowly varying SST changes associated with the ENSO, we carried out a com-
bined EOF analysis of the monthly mean ’external’ anomalies of OLR and winds at 850
hPa. We have chosen the period between 1979 to 1997 for this analysis. The dominant
EOF explaining about 20 percent of the total variance is shown in Figure 4.2. The spatial
patterns of both OLR and low-level winds correspond well with the canonical patterns
associated with ENSO [Rasmusson and Carpenter, 1982; Wallace et al., 1998]. The prin-
cipal component for the dominant EOF, PC1 (normalized by its own temporal S.D) is
also shown in Figure 4.2 together with normalized Nino3 SST anomalies. The correla-
tion coefficient between PC1 and Nino3 (160◦W-90◦W, 5◦S-5◦N) SST anomalies is 0.84
indicating a strong link between the variability represented by the ’external’ component
and the ENSO.
4.2 Estimation of Potential Predictability of Monthly Means 63
Figure 4.2: First combined EOF of mean monthly ’external’ anomalies for the period January1979 to December 1997 (228 months). (a) Zonal winds EOF at 850 hPa, (b) OLR EOF and (c) PC1(solid line) and Nino3 SST anomalies (dashed line). Both the time series are normalized by theirown standard deviation. Units of the EOFs are arbitrary.
4.2 Estimation of Potential Predictability of Monthly Means 64
Figure 4.3: Time-longitude section of mean monthly ’external’ anomalies of zonal wind at 850hPa (ms−1) and OLR (Wm−2) averaged around equator (5◦S-5◦N).
4.2 Estimation of Potential Predictability of Monthly Means 65
The second EOF and corresponding time coefficients (PC2) are not shown. However,
PC1 and PC2 are strongly correlated at a lag of about 6 months. This lag-correlation
together with the spatial patterns of the ’external’ component represent an east-ward
propagation of the anomalies, again characteristic of the ENSO anomalies. Therefore,
the ’external’ component separated here clearly represents the slow response of the at-
mosphere to the slowly varying SST forcing associated with the ENSO. Actual anoma-
lies of low-level winds and OLR along the equator associated with the slow external
forcing are shown in Figure 4.3. The magnitude of the anomalies during the warm
and cold events are similar to those known to be associated with typical warm or cold
phases of ENSO [Rasmusson and Carpenter, 1982] and the eastward propagation is also
clearly seen.
4.2.2 Estimation of ’Internal’ and ’External’ Interannual Variances
The total variance of monthly means as well as the ’internal’ and ’external’ com-
ponents of the variance of zonal winds at 850 hPa are calculated as described in the
previous section based on daily data for 33 years (1965-1997). The three variances are
shown in Figure 4.4. Similarly, the three variances for OLR are calculated based on
available 20 years of daily data (1980-1999). The OLR variances are shown in Figure
4.5. To start with, we note that the sum of the ’external’ and ’internal’ variances almost
exactly equals the total variances in all geographical locations in the tropics for both
the field. Secondly, it is clear from Figure 4.4(b) and Figure 4.5(b) that the geographi-
cal distribution of the ’external’ variances of low-level zonal winds as well as OLR has
the canonical pattern of the individual fields associated with the ENSO [Wallace et al.,
1998; Philander, 1990; Rasmusson and Wallace, 1983]. The ’external’ variance of U850 has
a major maximum centered around the dateline and a secondary maximum in the east-
ern equatorial Indian Ocean. Both the regions are known to be associated with large
zonal wind anomalies during peak ENSO phases. The major maximum on the ’exter-
nal’ variance of OLR is also centered around the dateline but has large extension to
the eastern Pacific. It is also noted that most of the appreciable ’external’ variance of
either OLR or U850 is confined between 10◦N and 10◦S, characteristic of the Walker re-
sponse associated with the ENSO. On the other hand, the ’internal’ variances of U850
have large amplitude (Figure 4.4(c)) in the ’monsoon’ regions of the tropics, namely the
Indian summer monsoon region, the South China Sea monsoon region and the Aus-
tralian monsoon region. We note that the ’internal’ variance is generally smaller than
4.2 Estimation of Potential Predictability of Monthly Means 66
that of the ’external’ variance in the tropical Pacific. However, it could be comparable or
even larger than the ’external’ variance in the monsoon regions mentioned above. The
’internal’ variance associated with the OLR (Figure 4.5(c)) also have large amplitude in
same monsoon regions. In contrast to the ’external ’ variance, the ’internal’ variance is
not confined to the equatorial belt but extends even up to 30◦ latitude in the Indian and
Australian monsoon regions.
Figure 4.4: Monthly variance of zonal winds (m2s−2) at 850 hPa based on 396 months for theperiod January 1965 to December 1997. (a) Total variance (b) ’external’ variance and (c) ’internal’variance.
4.2 Estimation of Potential Predictability of Monthly Means 67
Figure 4.5: Same as Figure 4.4 but for OLR for the period January 1980 to December 1999 (240months). Units, (Wm−2)2.
4.2 Estimation of Potential Predictability of Monthly Means 68
4.2.3 Potential Predictability of Monthly Means
Ideally, the potential predictability of either monthly or seasonal means climate is
determined as the ratio between ’signal’ to ’noise’, the signal being the predictable ’ex-
ternal’ component while the ’noise’ being the ’internal’ unpredictable component. Since
it is normally difficult to separate the ’external’ component from the ’internal’ compo-
nent, usually potential predictability is defined as the ratio (F-ratio) between total vari-
ance (σ2) and climate noise (σ2i ). In finding the potential predictability of the monthly
means, since, we have separated the ’external’ and ’internal’ components, we can write
F =σ2
σ2i
=σ2
e
σ2i
+ 1.
Larger the value of this ratio compared to two, higher the predictability. The F-ratio
of two also signifies that the signal-to-noise ratio (i.e F-1) is equal to one and that half
of the observed interannual variability is potentially predictable. The monthly mean
climate may be considered marginally predictable if ’F’ is greater but of the order two.
If ’F’ is less than two, the climate would be unpredictable as the ’internal’ variability
exercises a dominating influence on the total monthly variability. Figure 4.6 represents
the geographical distribution of potential predictability for U850. The F-ratio for zonal
winds at 850 hPa for summer (JJA) months is shown in Figure 4.6(a), while for winter
(DJF) months are shown in Figure 4.6(b). Potential predictability is high wherever the
ENSO influence is large in the summer months (Figure 4.6(a)). These include equatorial
Pacific between 10◦S and 10◦N, equatorial Atlantic and equatorial Indian Ocean east
of 70◦E. Parts of Africa also indicate high predictability as this region is also known to
have strong influence of ENSO. It may be noted from Figure 4.6(a) and Figure 4.6(b)
that during the NH summer, not only the peak values of the ’F’ are higher than those
during northern winter, the area covered by ’F’ greater than two is much larger during
NH summer compared to that in NH winter. Thus, during NH winter the monthly
mean predictability not only decreases compared to that in NH summer, the predictable
region also shrinks. Over the Indian monsoon region ’F’ ratio ranges between 2 and 3
during NH winter and goes even below 2 during NH summer.
The qualitative difference in the predictability regimes during NH summer com-
pared to NH winter is probably not very surprising if we take into account the sea-
sonality of the ’external’ and the ’internal’ variances. As the ’external’ component of
the variance arises from a slowly varying signal (with time scales longer than a year),
4.2 Estimation of Potential Predictability of Monthly Means 69
Figure 4.6: Estimates of ’F’ ratios for zonal winds at 850 hPa (a) for all northern hemi-sphere summer months (June-July-August) and (b) for all northern hemisphere winter months(December-January-February).
we do not expect much seasonality in the ’external’ variance. This is shown in Figure
4.7 for zonal winds at 850 hPa. Except that the maximum variance occurs in the west-
ern Pacific during NH summer compared to central Pacific during winter, the general
pattern of ’external’ variance is similar in the equatorial wave-guide during both the
seasons. The major difference between the ’external’ variance between the two seasons
occur in the central Pacific subtropics. This is due to the ENSO induced off equatorial
response being much stronger during the NH winter than in the NH summer. How-
ever, the ’internal’ variance has a pronounced seasonality (Figure 4.8). Barring Indian
monsoon region and a small region in the American monsoon region, the internal vari-
ability is very week throughout the equatorial wave-guide during NH summer. This
explains the larger magnitude and extension of ’F’ during NH summer (Figure 4.6(a)).
On the other hand, the ’internal’ variance during NH winter are quite strong from In-
dian Ocean to central Pacific, the maxima being over the Australian monsoon region
and the South Pacific Convergence Zone (SPCZ). The larger ’internal’ variability during
NH winter is consistent with the fact the ISO activity in tropics is strong during boreal
winter and spring and weak during boreal summer except over the Indian monsoon re-
gion [Madden and Julian, 1994; Wang and Rui, 1990]. Even though the ’external’ variance
4.2 Estimation of Potential Predictability of Monthly Means 70
Figure 4.7: The ’external’ variance of zonal winds at 850 hPa (m2s−2) during (a) NH summermonths (JJA) and (b) NH winter months (DJF).
Figure 4.8: The ’internal’ variance of zonal winds at 850 hPa (m2s−2) during (a) NH summermonths (JJA) and (b) NH winter months (DJF).
4.2 Estimation of Potential Predictability of Monthly Means 71
remains similar in magnitude and extent in winter compared to those in summer, the
’F’ ratio becomes smaller and the predictable region reduces to a smaller region in the
far eastern Pacific due to vigorous ’internal’ activity in Indian Ocean and central and
western Pacific.
The estimates of ’F’ ratios for zonal winds at 200 hPa for summer (JJA) months
is shown in Figure 4.9(a), while winter (DJF) months is shown in Figure 4.9(b). Po-
tential predictability is high wherever the ENSO influence is large (see Figure 4.9(a)).
These include equatorial Pacific between 10◦S and 10◦N, equatorial Atlantic and equa-
torial Indian Ocean. Parts of Africa indicate high predictability. Compared to low-level
winds potential predictability is generally high. Over the Indian sub-continent the ’F’
ratio ranges between 2 and 3. For NH winter months (Figure 4.9(b)) predictable region
shrinks compared to that of summer months. Maximum predictability is seen over the
central equatorial Pacific and equatorial Indian ocean. The region having ’F’ ratio be-
tween 2 and 3 occupies a larger region as compared to that during JJA.
Figure 4.10 represents the potential predictability for convection (or precipitation).
The estimates of ’F’ ratios for OLR for NH summer (JJA) months and NH winter (DJF)
months are shown in Figure 4.10(a) and Figure 4.10(b) respectively. It is seen from
Figure 4.10(a) that significant predictable region (e.g.’F’ ≥ 2) for convection (or precipi-
tation) is smaller than that for circulation. This region is mainly confined to the central
and eastern equatorial Pacific coincident with the core predictable region of ENSO in-
fluence. The geographical distribution of potential predictability for OLR for NH winter
months is shown in Figure 4.10(b). The predictable region gets confined to central and
east equatorial Pacific. The noteworthy feature is that over the Indian monsoon region,
’F’ ratios are less than two for convection. This indicates that the internal variability in
the Indian monsoon region is even stronger than the potentially predictable ’external’
component seriously limiting the potential predictability of the Indian summer mon-
soon.
The estimates of ’F’ ratios for geopotential height at 700 hPa for NH summer (JJA)
and NH winter (DJF) months are shown in Figure 4.11(a) and Figure 4.11(b) respec-
tively. In contrast to the other fields discussed earlier such as U850, U200 and OLR, the
geopotential field at 700 hPa does not show a major maximum only over the central
equatorial Pacific. The whole tropical belt (10◦S to 10◦N) shows high values of poten-
tial predictability and it is high in both the summer (Figure 4.11(a)) and winter (Figure
4.11(b)) months. During the summer months, southern India shows high potential pre-
4.2 Estimation of Potential Predictability of Monthly Means 72
Figure 4.9: Estimates of ’F’ ratios for zonal winds at 200 hPa (a) for all northern hemispheresummer months (JJA) and (b) for all northern hemisphere winter months (DJF).
Figure 4.10: Estimates of ’F’ ratios for OLR (a) for all northern hemisphere summer months(JJA) and (b) for all northern hemisphere winter months (DJF).
4.2 Estimation of Potential Predictability of Monthly Means 73
Figure 4.11: Estimates of ’F’ ratios for geopotential height at 700 hPa (a) for all northern hemi-sphere summer months (JJA) and (b) for all northern hemisphere winter months (DJF).
dictability while in the northern India and over the monsoon trough ’F’ ratio ranges
between 4 and 6. In the winter months also, ’F’ ratios are high in the tropical belt. Both
in summer and winter months ’F’ ratio becomes less between 20◦and 30◦latitudes.
Since the geographical distribution of potential predictability of geopotential height
is different from the other fields like zonal winds and convection, it might be interesting
to look into the external and internal variances separately. In order to highlight the
variance of the geopotential height in the tropics, the variances shown in Figure 4.12
and Figure 4.13 is restricted between 20◦S and 20◦N. This is because the variances of
geopotential height in the extratropics tend to be several times larger than those in the
tropics. The external variance of geopotential height is shown in Figure 4.12 for JJA
and DJF months. The variance associated with the external component is quite high
up to 120◦E though some parts of Africa is showing lower variance. East equatorial
Pacific also shows appreciable variance. For the winter months also, the variance up
to 120◦E is high. Over the Pacific, the peak shifts towards central Pacific. The spatial
pattern of external variance of Z700 appears to have a wave number two structure. This
may be associated with the externally forced interannual variations of divergent Walker
circulation.
4.2 Estimation of Potential Predictability of Monthly Means 74
Figure 4.12: The ’external’ variance of geopotential height at 700 hPa (gpm2) during (a) NHsummer months (JJA) and (b) NH winter months (DJF).
Figure 4.13: The ’internal’ variance of geopotential height at 700 hPa (gpm2) during (a) NHsummer months (JJA) and (b) NH winter months (DJF).
4.2 Estimation of Potential Predictability of Monthly Means 75
The geographical distribution of the variance of the geopotential height associated
with the internal component for the summer and winter months is shown in Figure
4.13. In the summer months, internal variance is low in the entire tropical belt. While
for the winter months internal variance values are nearly two times as high as those
in summer months. The seasonal variation of internal variance is consistent with the
observation that the intraseasonal oscillations in the equatorial region are stronger in
the boreal winter as compared to the boreal summer. Here too, the variance values are
high towards the midlatitudes (not shown in Figure 4.13). The high external variance
and the low internal variance in the tropics explain the high potential predictability in
the tropical belt for geopotential height (Figure 4.11).
What is responsible for the ’internal’ variability of the monthly means in the trop-
ics? The synoptic disturbances in the tropics are much less energetic than their extra-
tropical counterpart. Therefore, nonlinear interaction amongst the tropical synoptic dis-
turbances are unlikely to result in significant energy in the low frequency regime (e.g.
monthly and seasonal means). Moreover due to their higher frequency, the monthly
mean residuals from them are expected to be small. Therefore, the internal variability
that could influence tropical monthly means are the monsoon ISOs during NH summer
and the MJO in the other parts of the tropics. To test the correctness of this conjec-
ture, we calculate ’internal’ variance after removing the synoptic disturbances from the
daily anomalies. For this purpose, a Butterworth low-pass filter that keeps all periods
greater than 10 days and throws out all periods shorter than 10 days was applied on the
daily anomalies of all years after removing the annual cycle of each individual years.
Monthly mean anomalies, describing the ’internal’ component, are again calculated by
averaging the filtered anomalies over calendar months. The ’internal’ variance calcu-
lated from the monthly means of the filtered data has no contribution from the synoptic
variations and is solely contributed by the ISOs. The ’internal’ variance calculated in
this manner for U850 and OLR are shown in Figure 4.14. A comparison of Figure 4.14(a)
with Figure 4.4(c) and Figure 4.14(b) with Figure 4.5(c) reveals that removal of the con-
tribution of the synoptic disturbances from the daily data had no effect on the ’internal’
variance either in magnitude or in spatial distribution. This analysis establishes that the
’internal’ variability of the monthly means is entirely governed by the tropical ISOs.
4.3 Potential Predictability of Seasonal means 76
Figure 4.14: The ’internal’ variance of (a) zonal winds at 850 hPa (m2s−2) and (b) OLR (Wm−2)2
based on all months after removing the higher frequencies with period shorter than 10 days.
4.3 Potential Predictability of Seasonal means
In this section, we define climate by seasonal mean and examine potential pre-
dictability of seasonal mean climate. The ’climatic signal’ may arise from influences
truly external to the climate system or it may arise from slowly varying modes of the
entire climate system. An example of the latter is the El Nino and Southern Oscillation.
The day to day fluctuations or ’weather’ could give rise to variation of the seasonal
mean through scale interaction. In tropics, day to day fluctuations of weather is rather
weak, but the intraseasonal oscillations are strong. Hence the climate noise is mainly
contributed by the scale interaction between weather disturbances and the ISOs. Since
a season is significantly long compared to the typical time scale of the ISOs (30-60 days),
the ’climate noise’ arising due to the ISOs cannot be estimated by simple statistical av-
eraging (as we did in the case of monthly means) but may be estimated by some kind
of low frequency extension of high frequency spectrum. The focus of this section is to
find out whether there is significant difference between interannual variations of the
climatic states that can be distinguished from the climate noise.
Trenberth [1984a, b] has described a method to estimate the ’climate noise’ as the low
frequency extension of the high frequency component. We follow this method to find
4.3 Potential Predictability of Seasonal means 77
an estimate of potential predictability of seasonal mean in the tropics, for the Northern
Hemisphere summer and winter seasons. The methodology is explained in detail in
the Appendix (section 4.5). The potential predictability is defined as the ratio between
interannual variance of the seasonal means and the ’climate noise’. The potential pre-
dictability of NH summer and NH winter seasons for low-level zonal winds, upper
level zonal winds, OLR and geopotential height have been estimated. This part of the
our study is not quite new except that we make use of a long homogeneous data set and
that we focus on the potential predictability of the Indian monsoon region.
Figure 4.15: Estimates of ’F’ ratios for zonal winds at 850 hPa for (a) NH summer season (JJA)(b) NH winter season (DJF).
Figure 4.15 shows the geographical distribution of potential predictability for low-
level zonal winds (850 hPa) in NH summer and NH winter seasons. In NH summer,
regions where the ENSO influence is large shows high predictability. The potential pre-
dictability is maximum in the western equatorial Pacific, and is having an eastward ex-
tension over the central and eastern Pacific and equatorial Atlantic. Parts of Africa and
eastern equatorial Indian ocean also shows high potential predictability. In NH winter,
the maximum shifts towards central equatorial Pacific, but the pattern remains more or
less similar. It is noteworthy that the Indian monsoon region have potential predictabil-
ity values of the order of 1.5 in both the seasons which means that the monsoon climate
4.3 Potential Predictability of Seasonal means 78
is marginally predictable in the summer season. The ’climate noise’ associated with
U850 is shown in Figure 4.16. In the summer months, Asian monsoon region shows sig-
nificant ’internal’ variance. In the winter, variance maxima shifts towards the southern
equatorial Indian Ocean and the Australian monsoon region shows high ’internal’ vari-
ance. This indicate that the interannual variability of the intraseasonal oscillations in the
Indian monsoon region in the NH summer and Australian monsoon region in the NH
winter season is comparable to the predictable component, limiting the predictability
of the Indian and Australian monsoons.
Figure 4.16: Estimates of ’climate noise’ for zonal winds at 850 hPa for (a) NH summer season(JJA) (b) NH winter season (DJF).
Figure 4.17 shows the geographical distribution of potential predictability for upper
level zonal winds (200 hPa) in NH summer and NH winter seasons. Core predictable
regions like the equatorial Pacific, African region and equatorial Atlantic shows high
’F’ ratios both in the summer and winter seasons. Over the Indian monsoon region ’F’
ratio ranges between 1 and 3 in the summer months, while this ratio is between 2 and 4
in the winter months. Thus, the upper level winds during the Asian summer monsoon
are slightly more predictable than the low-level winds. Also south equatorial Indian
Ocean shows high predictability in the winter months for the upper level zonal winds.
4.3 Potential Predictability of Seasonal means 79
Figure 4.17: Estimates of ’F’ ratios for zonal winds at 200 hPa for (a) NH summer season (JJA)(b) NH winter season (DJF).
Figure 4.18: Estimates of ’F’ ratios for OLR for (a) NH summer season (JJA) (b) NHwinter season (DJF).
4.3 Potential Predictability of Seasonal means 80
Figure 4.18 shows the potential predictability distribution of convection (OLR) over
the tropics in NH summer and winter seasons. Predictable regions shrinks in the case
of convection compared to the large scale flow. In the summer season, western and
central equatorial Pacific shows high predictability. Some parts of Africa also come un-
der predictable regions. In the winter season, regions which have predominant ENSO
influence show high predictability. Seasonal mean climate in Indian monsoon region
is marginally predictable in the winter, but the ’F’ ratios are less than two in the sum-
mer season. The convection is even less predictable than low level winds during the
summer monsoon season.
Figure 4.19 shows the potential predictability distribution of geopotential height at
700 hPa over the tropics in NH summer and winter seasons. The ’F’ ratios in the equa-
torial wave-guide is quite high both in the summer and winter seasons. In the both the
seasons south equatorial Indian Ocean shows maximum predictability, though the ’F’
ratios are high in the winter. ’F’ ratios are low as we move up from 10◦latitude. Indian
region shows ’F’ ratios between 3 and 6 for geopotential height. Southern India shows
slightly higher ’F’ ratios. This is consistent with the earlier study done in the region
for the 700 hPa geopotential height [Singh and Kriplani, 1986]. The ’climate noise’ asso-
ciated with geopotential height is much less over the Indian monsoon region (Figure
4.20), compared to interannual variance in both the summer and winter months. This
explains, the high predictability associated with the geopotential height over the Indian
monsoon region.
4.3 Potential Predictability of Seasonal means 81
Figure 4.19: Estimates of ’F’ ratios for geopotential height at 700 hPa for (a) NH summer season(JJA) (b) NH winter season (DJF).
Figure 4.20: Estimates of ’climate noise’ for geopotential height at 700 hPa for (a) NH summerseason (JJA) (b) NH winter season (DJF).
4.4 Discussions and Conclusions 82
4.4 Discussions and Conclusions
In the present study, we attempt to determine the part of monthly and seasonal
mean climate variability governed by ’internal’ dynamics and that governed by ’exter-
nal’ slowly varying forcing from long daily observations. Potential predictability of the
climate (monthly and seasonal means) is defined as the ratio of the interannual variance
of the monthly or seasonal means and the ’internal’ unpredictable component. Four dif-
ferent fields (low-level zonal winds (850 hPa), upper level zonal winds (200 hPa), OLR
and geopotential height at 700 hPa) are used for this purpose. Daily U850, U200 and Z700
are taken from NCEP/NCAR Reanalysis for a period of 33 years (1965-1997). Daily
OLR for 20 years (1980-1999) are also used.
The monthly mean climate over the monsoon regions of the world appear to be
marginally predictable. But the ’F’ ratios ranges between 2 and 3 over the Indian mon-
soon region which is much less compared to that in other regions in the tropics. In many
recent studies, the difficulty in simulating and predicting the Indian summer monsoon
has been attributed to the role of the ISOs [Webster et al., 1998; Goswami, 1998, 1995].
In Goswami [1998], it was shown that the strength of the GCM simulated ENSO re-
sponse decreases as we reach the Indian Ocean and Indian monsoon region and the in-
ternal variability could compete with the externally forced variability in this region. The
present analysis shows, from observation that the internal variability in the Indian sum-
mer monsoon region is indeed comparable to the boundary forced variability. However
the fact that the F-ratio ranges between 2 and 3 indicates that the external forced pre-
dictable signal is slightly larger than the noise in some regions. Therefore, while de-
terministic prediction of the monthly mean summer monsoon climate may prove to be
difficult, there exists some hope of limited predictability coming from the boundary
forcing.
The other important result is that except over the Asian summer monsoon region,
the monthly mean climate during the boreal summer is more predictable over a much
larger region in the tropics than during boreal winter. As it is well known that the SST
signal associated with the ENSO tends to peak during NH winter, it appeared rather
strange that predictability should be weaker during this season. However, we show
that the weaker and limited predictability during boreal winter is due to stronger in-
ternal variability associated with stronger ISOs during winter while the amplitude of
the boundary forced variability remains similar to those in boreal summer. Thus, the
4.4 Discussions and Conclusions 83
monthly mean tropical climate seems to be more predictable in NH summer compared
to NH winter over much of the tropical belt except in the Indian summer monsoon
region.
The predictability of the seasonal mean climate over the Indian monsoon region
also appear to be marginal. The ’F’ ratio which is a measure of potential predictability
is of the order of 1.5. As in the case of monthly mean climate, the Asian monsoon re-
gion is the region of lowest predictability of the seasonal climate during boreal summer.
Barring the Indian monsoon region, most of the regions in the equatorial wave guide
seem to be highly predictable. Equatorial Pacific are associated with higher predictabil-
ity values. Not surprisingly regions that come under the influence of ENSO have high
predictability.
As may be expected, the geographical distribution of potential predictability of
the monthly and seasonal mean climate bear similarity in all the fields. Comparison
between Figure 4.6(a) and Figure 4.15(a) reveal that the core predictable regions of
monthly mean climate in the summer months and that of the seasonal mean climate
in the summer season is the same for low-level zonal winds. Equatorial Pacific, equato-
rial Atlantic, south equatorial Indian Ocean and the African region seems to be highly
predictable in both the cases. Over the Indian monsoon region, ’F’ ratios are of the order
of two in the monthly mean climate, while the ratios of the order of 1.5 in the seasonal
mean. If we compare Figure 4.6(b) and Figure 4.15(b), it is clear that ’F’ ratios are much
larger in the central equatorial Pacific for the seasonal mean winter climate compared
to the monthly mean climate in the winter months. Some parts of Africa, equatorial In-
dian Ocean and equatorial Atlantic comes under predictable regions in both the cases.
Over the Indian monsoon region, ’F’ ratio is of the order of two in the monthly mean
climate, while it is of the order of 1.5 in the seasonal mean winter climate for low-level
zonal winds. Thus, it appears that the seasonal mean summer monsoon may be more
difficult to predict compared to the monthly means of monsoon during boreal summer.
It may be noted that, of the four fields used in this study, low-level zonal winds at
850 hPa, upper level zonal winds at 200 hPa and OLR shows some what similar charac-
teristics in both monthly and seasonal mean potential predictability. But the geographi-
cal distribution of potential predictability of geopotential height at 700 hPa shows high
potential predictability over almost the whole tropical belt. Within the tropics, the In-
dian summer monsoon region does show relatively lower potential predictability dur-
ing boreal summer compared to rest of the tropics (Figure 4.11(a) and Figure 4.19(a)).
4.4 Discussions and Conclusions 84
However, the geopotential height seem to be predictable even over the Indian monsoon
region. The difference in the potential predictability of the geopotential height and
the circulation and convection fields is not surprising as the geopotential field is not
strongly coupled to circulation field as in the extratropics. In the tropics, the transient
disturbances (that give rise to internal variability) are driven not by available potential
energy associated with mean temperature gradient but by potential energy associated
with convection. That is why predictability is poorest for convection (OLR) and increas-
ingly higher for low level and upper level winds. Therefore, it is incorrect to conclude
that Indian monsoon is predictable by simply looking at the geopotential height field.
One need to look at the circulation, convection and precipitation fields to arrive at the
correct picture of predictability of the monsoon.
4.5 Appendix : Procedure for Estimating ’Climate Noise’ 85
4.5 Appendix : Procedure for Estimating ’Climate Noise’
The day to day fluctuations or ’weather’ could give rise to variation of the seasonal
mean through scale interaction. This is often termed as ’climate noise’. This ’climate
noise’ has to be estimated from low frequency extension of the high frequency compo-
nent. We follow the method suggested by [Trenberth, 1984b] compute the ’climate noise’
of seasonal means.
First step is to remove the annual cycle. Daily climatological mean annual cycle for
the entire data has been found out for this purpose. The daily climatological mean is
smoothed using harmonic analysis. Daily anomalies are constructed with respect to the
smoothed daily climatological mean annual cycle. The daily anomalies are detrended
using a least squares linear fit.
Suppose that, the data base consists of N daily values (χi,j , i = 1, ..N, j = 1, ..J)
that make up the season for J years in which the mean and annual cycles have been
removed. The problem is to assess whether there is any significant climate variability
beyond that due to climatic noise.
For each year, mean χj may be computed
χj =1N
N∑i=1
χi,j (4.9)
and
S2m =
1J
J∑j=1
χ2j (4.10)
is the sample interannual variance; an unbiased estimate (ˆ) of the population interan-
nual variance which includes the effects of uncertainty in the overall mean, is therefore
σ2m =
J
J − 1S2
m =1
J − 1
J∑j=1
χ2j . (4.11)
The noise may be found as a low frequency extension of high frequency variability.
The intraseasonal sample variance for the jth year is
S2j =
1N
N∑i=1
(χi,j − χj)2. (4.12)
Therefore, the mean intraseasonal variance is
S2 =1J
J∑j=1
S2j (4.13)
4.5 Appendix : Procedure for Estimating ’Climate Noise’ 86
An unbiased estimate of σ2 based solely upon the intraseasonal variances, is
σ2 =N
N − ToS2. (4.14)
The variance due to climatic noise σ2N is
σ2N =
σ2
Neff=
σ2To(N)N
(4.15)
where To is the time between independent values normalized by the sampling inter-
val. The effective number of independent observations Neff = N ∆TTo
where ∆T is the
sampling interval. Therefore from (4.14) and (4.15)
σ2N =
To
N − ToS2. (4.16)
To is not known apriori and is dependent upon autocorrelation, rL
To(N) = 1 + 2N∑
L=1
(1− L
N)rL. (4.17)
where rL is the autocorrelation with lag L of the data.
To find rL
CLj =1N
N∑i=L+1
(χi−L,j − χj)(χi,j − χj), (4.18a)
Sample autocorrelation at lag L is
rLj = CLj/Coj (4.18b)
and the overall autocorrelation, rL is
rL =1J
J∑j=1
rLj (4.18c)
One way to test whether there is any signal is to form the null hypothesis that there
is no signal. In that case σ2m and σ2
N are both independent estimates of interannual
variance. The former is based upon seasonal means, while the latter is based upon
intraseasonal variations. Consequently, the F ratio defined as
F =σ2
m
σ2N
(4.19)
is the ratio of the two estimated interannual variances and it should follow the F distri-
bution with J-1 and J(Neff − 1) degrees of freedom.
Chapter 5
Clustering of Synoptic Systems During theIndian Summer Monsoon by IntraseasonalOscillations
As shown in chapter 3 and 4, the monsoon ISOs has large spatial scale and results
in strengthening and weakening of the large scale monsoon flow in the extreme phases.
This results in strengthening and weakening of the shear of the zonal wind and low-
level vorticity over the monsoon trough. Since the higher frequency synoptic systems
arise from instability of the zonal flow, ISOs have the potential for modulating synoptic
activity during the monsoon season. In this chapter, we examine how higher frequency
synoptic systems are modulated by the intraseasonal oscillations. The motivation of this
study came from the fact that the slow evolution of ISOs may permit extended range
prediction of the ISO phases and through it probability of occurrence of wet and dry
spells of the monsoon.
5.1 Introduction
A prominent feature of the seasonal mean (June-September) Indian summer mon-
soon circulation is the monsoon trough (Figure 2.1a,b), an elongated semi-permanent cy-
clonic vortex in the lower atmosphere associated with low surface pressure extending
from Pakistan in the west to Myanmar in the east [Rao, 1976]. The summer monsoon is
punctuated by periods of abundant rainfall (’active’ or wet spells) and periods of scanty
rain (’break’ or dry spells) in the trough region. There are three or four active and break
spells each in a typical monsoon season. If long breaks occur in critical growth periods
of agricultural crops, they can lead to substantially reduced yields [Gadgil and Rao, 2000;
Lal et al., 1999]. Extended range prediction of the wet and dry spells of monsoon rain
could therefore be of immense benefit to Indian agriculture.
5.1 Introduction 88
The main rain bearing weather systems over the monsoon trough region are syn-
optic scale low pressure systems with typical life time of 3-5 days and length scale of
about 2000 km. Monsoon LPS are called lows if the maximum wind speed is less than
8.5 ms−1 and has one closed isobar with the central pressure in the system being lower
than the surroundings by more than 2 hPa. The maximum wind speed in depressions is
between 8.5 ms−1 and 17 ms−1 and there are atleast two closed isobars, with 4 hPa pres-
sure drop associated with the system. Most depressions are born in the Bay of Bengal
and give copious rain as they move inland along the monsoon trough. Monsoon lows
and depressions arise as a result of dynamic instability energized by moist convection
[Shukla, 1978; Goswami et al., 1980; Mak, 1987]. Large meridional shear of the eastward
component of winds and high cyclonic vorticity at low levels in the monsoon trough
favor the growth of these instabilities. Intraseasonal oscillations of the Indian summer
monsoon have space and time scales that are distinct from those of synoptic systems.
ISOs have periods of 10-70 days, zonal scale of 8,000-10,000 km, and are associated
with repeated northward propagation of the tropical convergence zone from the south
equatorial Indian Ocean to the monsoon trough region [Sikka and Gadgil, 1980; Yasunari,
1979; Krishnamurti and Ardunay, 1980]. As the ISOs modulate the large scale monsoon
circulation, strengthening the low-level monsoon winds in one phase while weakening
them in the opposite phase (see Chapter 2), they have the potential to modulate synop-
tic activity. Although previous studies do indicate association of synoptic activity with
ISO regimes [Murakami et al., 1984, 1986; Yasunari, 1981], a comprehensive study of the
influence of ISOs on LPS genesis does not exist. Here, using daily circulation data and
LPS genesis data for 40 years we show that the wet and dry spells of the Indian summer
monsoon arise from space-time clustering of the LPS and that the clustering is caused
by modulation of the large scale monsoon circulation by ISOs. Our work implies that
the predictability of the timing of wet and dry spells is strongly tied to the predictability
of the slowly varying monsoon ISOs.
The dates and locations of genesis of all lows and depressions during June-September
of 1954-1993 over the Indian monsoon region (50◦E-100◦E, Eq-35◦N) are based on re-
ports of the India Meteorological Department (IMD). Data for the first 30 years (1954-
1983) are taken from Mooley and Shukla’s [Mooley and Shukla, 1989, 1987] compilation
based on IMD’s Daily Weather Reports; data for the next 10 years (1984-1993) are com-
piled from the Seasonal Weather Summaries published by IMD. For example weather
summary of 1984 monsoon season is from IMD [1985]. Circulation changes associated
5.2 Wet and Dry Spells and Clustering of LPS 89
with monsoon ISOs are based on daily 850 hPa wind fields from NCEP/NCAR reanal-
ysis for the period 1954-1993. Rainfall data are based on five-day (pentad) Climate Pre-
diction Center Merged Analysis of Precipitation (CMAP) for fifteen years (1979-1993).
Anomalies are obtained by subtracting the annual cycle (sum of the mean, annual and
semiannual harmonics) from the daily (or pentad) observations for each year.
5.2 Wet and Dry Spells and Clustering of LPS
First, we demonstrate that the wet and dry spells of the monsoon rainfall arise
mainly from the time clustering of LPS. Pentad rainfall anomaly spatially averaged over
the two contiguous boxes (85◦E-95◦E, 12◦N-17◦N) and (70◦E-90◦E, 17◦N-22◦N) during
1979-1993 represents the rainfall over the monsoon trough, denoted by P. A zero value
of P corresponds to the seasonal mean rainfall over the trough (11.5mm/day). Peri-
ods of positive (negative) P correspond to wet (dry) spells. In Figure 5.1, we mark the
calendar dates of genesis of all LPS in the monsoon trough region between June and
September during 1979-1993 as a function of P normalized by its standard deviation
(4.5mm/day). More than two times as many LPS form during periods of positive P
(111systems) compared to periods of negative P (52 systems), clearly showing the close
association between the genesis of lows and depressions and timing of wet and dry
spells. We propose that this clustering of LPS is caused by modulation of the large scale
monsoon circulation by ISOs.
Figure 5.1: Genesis dates of LPS between 1 June and 30 September of all years during 1979 to1993 over the monsoon trough as a function of normalized departure of precipitation over thetrough from the seasonal mean.
5.2 Wet and Dry Spells and Clustering of LPS 90
Figure 5.2: Leading Empirical Orthogonal Functions ( (a) EOF1 & (b) EOF2) of 10-80 day fil-tered wind anomalies (ms−1) at 850 hPa between June 1 and September 30 for the period 1964-1973. (c) Normalized time series of PC1 and PC2 for ten years (each year has 122 days). (d)Normalized Monsoon Intraseasonal Oscillation Index (MISI) for 10 years. Periods of MISI > +1(MISI< -1) correspond to active (break) phases of the monsoon. It may be noted that positive(negative) phase of MISI represents enhancement (weakening) of the EOF1 pattern.
5.3 Monsoon Intraseasonal Oscillation Index 91
5.3 Monsoon Intraseasonal Oscillation Index
To establish that ISOs influence the genesis of LPS, we define a simple index that cap-
tures intraseasonal variability of circulation in the Indian monsoon region. The space
time evolution of ISOs may be described by the two leading empirical orthogonal func-
tions (EOF1 & EOF2) of 10-80 day band-pass filtered 850 hPa summer monsoon winds (1
June to 30 September for 1954-1963) in the region 40◦E-120◦E, 20◦S-30◦N. Together they
explain 25% of daily variance of the wind field; their principal components PC1 and
PC2 correlate strongly with a lag of about 9 days. The sum of the two EOFs represents
the northward propagating monsoon ISOs. We introduce the monsoon intraseasonal
oscillation index (MISI) based on the first two principal components of the wind field,
MISI(t) = PC1(t)+PC2(t-9).
The spatial structure of winds associated with these EOFs and their corresponding
principal components (PC1 and PC2) and MISI for 10 years (1964-1973) is shown in
Figure 5.2. The spatial structure of winds associated with EOF1 (Figure 5.2(a)) bears a
broad resemblance with the seasonal mean low-level circulation. The positive (nega-
tive) phase of MISI represents circulation anomalies that strengthen (weaken) the mean
monsoon winds (see Figure 2.1(a)) between 5◦N and 17◦N by upto 30%, thereby intensi-
fying (weakening) the monsoon trough. We say that the monsoon is in its active (break)
phase in periods when normalized MISI is greater than +1 (less than -1). The index
(MISI) for the remaining 30 years is constructed taking data for 10 years at a time.
5.4 Clustering of Genesis of LPS by Intraseasonal Oscillations
In order to bring out how genesis of LPS depend on the phase of the ISOs, the fre-
quency of occurrence of the LPS corresponding to the different ISO phases are counted.
ISO phases may be defined as bins of normalized MISI. Such a frequency distribution of
genesis of LPS as a function of the phase of monsoon ISOs during 1954-1993 is shown in
Figure 5.3. The total number of lows and depressions during this 40-year period is 503,
with a seasonal average of 12.5 LPS. We note that the number of depressions during
the last decade (1984-93) is lower than earlier decades [Mooley and Shukla, 1989], while
the number of lows is higher leaving the average number of LPS almost unchanged.
Out of the total 503 LPS, 320 occur in the positive phase of the ISO (positive MISI) and
183 in the negative phase. The enhanced low-level shear and cyclonic vorticity in the
5.4 Clustering of Genesis of LPS by Intraseasonal Oscillations 92
−3 −2 −1 0 1 2 30
25
50
75
100
Normalised MISI
Fre
quen
cy
Figure 5.3: Histogram of genesis of synoptic events (lows & depressions) for the Indian mon-soon region (50◦E-100◦E, Eq-30◦N) during June to September for the period 1954-1993 as a func-tion of normalized MISI.
monsoon trough makes LPS genesis in the positive phase more probable. Figure 5.4
shows the total vorticity and locations of genesis of all LPS in the active (MISI > +1)
and break (MISI < -1) phases of the monsoon. The birth of an LPS is more than twice
as likely in the active phase (119 systems) than in the break phase (52 systems), with
dense clustering in the monsoon trough (Figure 5.4(a)). The total vorticity in the trough
region remains weakly cyclonic even during breaks (Figure 5.4(b)), and this explains
why some LPS form here even in the break phase. Relatively few LPS are born in the
southern Bay of Bengal in this phase although the cyclonic vorticity is high. This may be
because the large vertical shear of the winds in the southern region inhibits LPS genesis
[Rao, 1976] and partly because the boundary layer frictional convergence necessary for
cyclogenesis is less effective in this region as compared to the northern region. The cen-
tral result of the present study is that circulation changes associated with the monsoon
ISOs cause lows and depressions to cluster together in both time and space (Figures 5.3,
5.4). Mechanisms similar to the one proposed here seem to be responsible for the clus-
tering of tropical cyclones in the Gulf of Mexico [Maloney and Hartmann, 2000a], eastern
Pacific [Maloney and Hartmann, 2000b] and western Pacific Liebmann et al. [1994] through
modulation of large scale circulation by the Madden Julian Oscillations.
Finally, we show that intraseasonal fluctuations of cyclonic vorticity in the monsoon
trough are associated with coherent fluctuations in the large scale rainfall distribution.
We composite the anomaly winds over all active and break days based on MISI in the
period 1954-1993, and use these to create an active minus break composite of large scale
monsoon circulation and vorticity (Figure 5.5(a)).
5.4 Clustering of Genesis of LPS by Intraseasonal Oscillations 93
Figure 5.4: Total (climatology+composite anomaly) relative vorticity (10−6s−1) at 850 hPa dur-ing the (a) ’Active’ ISO phase (MISI > +1) and (b) ’Break’ ISO phase (MISI < -1). Dark dotsindicate the position of the genesis of the LPS during active and break phases.
5.4 Clustering of Genesis of LPS by Intraseasonal Oscillations 94
Figure 5.5: Composites based on active and break days as defined by the ISO index, MISI.(a) ’Active’ minus ’Break’ composite wind anomalies (ms−1) and associated relative vorticity(10−6s−1) at 850 hPa during the 40 year period (1954-1993). Only vectors significant at 95%confidence level are displayed. Positive contours are shaded and negative contours are notshown. (b) ’Active’ minus ’Break’ composite precipitation anomalies (mm.day−1) during 1979-1993.
5.5 Summary and Conclusions 95
This composite represents intraseasonal changes in monsoon circulation as captured
by the two leading EOFs of the low-level winds. We also create the corresponding active
minus break rainfall composite based on CMAP rainfall anomalies using the same ac-
tive and break dates in the period 1979-1993 (Figure 5.5(b)). Enhanced cyclonic vorticity
in the monsoon trough region is accompanied by enhanced rainfall. The positive rain-
fall anomaly is mainly due to the larger number of lows and depressions formed in the
trough in the active phase of the monsoon compared to those during the break phase
(Figure 5.4). Decreased precipitation over the equatorial region and the rain shadow
region in southeast India are also evident in the active phase (Figure 5.5(b)). The spatial
pattern of the rainfall composite is consistent with the classical pattern of intraseasonal
monsoon rainfall variability seen in rain guage data over the continent [Singh and Kri-
plani, 1990; Krishnamurthy and Shukla, 2000].
5.5 Summary and Conclusions
The timing and duration of wet and dry spells of the summer monsoon have a strong
bearing on the agricultural production and water resources in the Indian subcontinent.
We show that the wet and dry spells are the result of space-time clustering of mon-
soon low pressure systems caused by modulation of the large scale monsoon flow by
intraseasonal oscillations. The ISOs alternately enhance and reduce horizontal shear
and cyclonic vorticity of low-level winds along the monsoon trough on time scales of
10-80 days. Genesis of LPS is twice as likely in periods when monsoon trough vorticity
is enhanced as compared to periods when it is reduced. There is also a spatial clustering
of LPS genesis, with a majority of LPS being born in north Bay of Bengal in periods of
enhanced monsoon trough vorticity.
Skillful statistical forecasts upto two to three weeks in advance have been demon-
strated for the slow evolution of the equatorially confined, eastward propagating MJO
[Lo and Hendon, 2000; Waliser et al., 1999; Mo, 2001]. We envisage that the slowly varying
monsoon ISOs will turn out to have similar predictability. Work in this direction might
lead to extended range prediction of the wet and dry spells of the Indian summer mon-
soon.
Chapter 6
Conclusions
Indian summer monsoon displays substantial interannual variability, which have
profound socio-economic consequences. Long range prediction of seasonal mean mon-
soon precipitation, therefore assumes great significance. Even though climate mod-
elling has made great progress in simulating and predicting the climate over several
tropical regions, dynamical prediction of seasonal mean monsoon precipitation how-
ever, remains as an extremely frustrating experience.
Within the summer monsoon season (June-September), the timing and duration of
the monsoon intraseasonal oscillations (wet and dry spells of the summer monsoon)
have a strong bearing on the agricultural production and water resources in the In-
dian subcontinent. Monsoon studies so far, has not clearly established whether the
occurrence of wet and dry spells of monsoon rainfall is due to some form of dynami-
cal instability of the mean monsoon flow, or a mere indicator of the formation, growth
and propagation of monsoon depressions, or due to low frequency chaotic intrasea-
sonal oscillations. Research during the past decades, has indicated the possible role of
intraseasonal oscillations as one of the reasons which limits the predictability of the sea-
sonal mean monsoon. In this study, we consider the intraseasonal oscillations (ISOs) as
the building block for Indian summer monsoon. We demonstrate how ISOs influence
the seasonal mean and limits its predictability in one hand while enhancing potential
predictability of the wet and dry spells of the monsoon by modulating the frequency of
occurrence of the synoptic events on the other. Some outstanding questions regarding
relationship between intraseasonal oscillations and interannual variability of the Indian
summer monsoon are addressed.
6 Conclusions 97
• How could intraseasonal oscillations influence interannual variations of the In-
dian summer monsoon? Is there a common mode of variability between the in-
traseasonal and interannual variability of the Indian monsoon?
• Is there a distinct difference in the probability of occurrence of ’active’ and ’break’
phases’ in the strong and weak monsoon years?
• How much of the interannual variability of the Indian summer monsoon is gov-
erned by ’internal’ chaotic processes? How much of this ’internal’ low frequency
variability is contributed by the monsoon ISOs?
• Is there evidence from observation that occurrence of rain bearing monsoon syn-
optic systems (lows and depressions) are modulated by the intraseasonal oscilla-
tions?
First, we show that the underlying spatial pattern of the dominant intraseasonal
mode is invariant over the years and is similar to the spatial structure of the seasonal
mean monsoon. The dominant ISO is characterized by a meridional bimodal structure
with ascending (descending) motion and enhanced (decreased) convection over the
monsoon trough and descending (ascending) motion and decreased (enhanced) con-
vection over the oceanic TCZ in the ’active’ (’break’) phase. Thus extreme phases of the
dominant ISO mode (’active’ and ’break’ phases) are associated with general strength-
ening (weakening) of large scale mean monsoon flow leading to strengthening (weak-
ening) of the monsoon trough. Hence it is possible that, the statistics of ISO (phase,
amplitude) affect the seasonal mean monsoon. Then, we demonstrate that the intrasea-
sonal and interannual variations are governed by a common spatial mode of variability.
Further it is shown that probability of occurrence of the intraseasonal oscillations is re-
lated to the interannual variability of the seasonal mean. The frequency of occurrence
of ’active’ and ’break’ conditions are found to be distinctly different during ’strong’ and
’weak’ monsoon years. It is shown that the most frequent pattern during a ’strong’
(’weak’) monsoon year is the ’active’ (’break’) pattern with enhanced (decreased) cy-
clonic vorticity and convection over the monsoon trough. All these results lead to the
conclusion that monsoon ISOs modulate interannual variation of the Indian monsoon
in a significant way.
Having shown that the ISOs can influence the seasonal mean and its interannual
variability, we attempt to make quantitative estimates of potential predictability of mon-
6 Conclusions 98
soon climate. Potential predictability is defined as the ratio between the interannual
variance of the the monthly or seasonal means and its internally forced ’climate noise’
component. We argue that the ISOs contribute mainly to the ’climate noise’ in the trop-
ics as the amplitude of the synoptic disturbances is rather small and are unlikely to
lead to much low frequency internal variability through nonlinear scale interactions.
For monthly climate, we propose a new method to separate the ’internal’ and ’external’
contribution to the interannual variability. For the seasonal climate, the internal ’cli-
mate noise’ is estimated using a method equivalent to low frequency extension of high
frequency spectrum as done in some previous studies. It is found that slowly varying
boundary forcing strongly govern the predictability of monthly or seasonal climate of
most of the tropical regions except the Indian monsoon region. Quantitative estimates
of potential predictability of monthly and seasonal climate reveal that the potential pre-
dictability of the Indian monsoon is much lower compared to the other regions in the
tropics. This is due to the fact that the influence of the internally forced component of
the seasonal mean is comparable to its externally forced counterpart in the Indian mon-
soon region. These estimates reveal that the Indian monsoon climate may be considered
only marginally predictable. We also find that the internally forced component of the
monthly/seasonal climate in the Indian monsoon region is due to the intraseasonal os-
cillations.
The monsoon ISO results in strengthening and weakening of the mean monsoon
flow in the extreme phases. The main rain bearing system during the monsoon season
are the Low Pressure Systems (LPS) consisting of lows and depressions. Since the gene-
sis of the LPS depends on the horizontal shear and low-level vorticity, it is possible that
more LPS form in the active phase relative to the break phase. In other words, large
scale circulation associated with the ISOs could modulate the frequency of genesis of
LPS. Using LPS genesis data for more that 40 years and corresponding circulation data
to describe the ISOs, we show that the dry and wet spells of the Indian monsoon are
caused by clustering of low pressures systems in space and time which is caused by
the modulation of the large scale monsoon flow by the intraseasonal oscillations. The
slow evolution of the ISO may permit extended range prediction of the ISO phases and
through them dry and wet spells of the Indian summer monsoon.
In this study, we have used long homogeneous data sets (30-40 years) to examine
the statistics of the ISO. Hence we hope that the results are reliable. Above results have
important implication on the seasonal mean monsoon prediction. While the monsoon
6 Conclusions 99
ISOs seem to result in limiting the predictability of monthly or seasonal mean monsoon
climate, it is possible that the same ISOs lead to enhancing extended range prediction
of spells of synoptic activity. As demonstrated in the case of equatorial MJO, extended
range prediction of monsoon ISOs may be possible due to it’s slow evolution. Since
ISOs modulate the main rain bearing systems in the monsoon region, the prediction ISO
phase may lead to predicting the dry and wet spells of the Indian summer monsoon.
Studies in this direction will help in increasing the predictability of the Indian sum-
mer monsoon. Thus, ISOs appear to play a crucial role in determining predictability of
monsoon in different time scales. Hence, the success in predicting the Indian summer
monsoon rainfall would depend on the precise representation of ISOs in a dynamical
model.
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