Varietal discrimination of Basmati rice in north - west India · IRS-P6 AWiFS: 03-Oct-2010 Covering...
Transcript of Varietal discrimination of Basmati rice in north - west India · IRS-P6 AWiFS: 03-Oct-2010 Covering...
Varietal discrimination of Basmati rice in north-west India
A. N. Singh*, Dharmesh Verma** and M. H. Kalubarme*Global Institute of Land, Water and Environment Management, Lucknow, India
** United Phosphorous Ltd., India
*** BISAG, Gandhinagar, India
What is Basmati Rice?• Basmati is a premium long grained aromatic rice grown in a specific geo-
environment , i.e. NW India and parts of Pakistan for centuries. Documentary evidences show that Basmati has been grown in this area for more than 250 years (Nene, 2003).
• Its high value stems from its unique eating qualities, which includes aroma in both the raw and cooked state, kernel length 7 mm or more, excellent linear elongation on cooking almost double its kernel length, soft and flaky consistency of cooked rice.
• Basmati 370, Taraori Basmati, Type3 and Ranbir Basmati are the Traditional Basmati varieties grown in Punjab, Haryana, western U.P. , Uttarakhand and J&K. These are tall (140-148 cm plant ht.),145-150 d growing period, kernel length varying from 6.9 to 7.3 mm, breadth 1.7 to 1.9 mm, kernel elongation ratio after cooking 1.8 to2.1 .
Evolved Basmati varieties
• Pusa Basmati-1, Pusa-1121, CSR-30 and Pusa-1509 are the varieties evolved (recently bred) Basmati having traditional Basmati varieties as one of the parent. These varieties are being grown in a larger area now due to higher yield.
• Factors favouring aroma in Basmati are cool temp. during flowering and grain development (25 degree C/ 31 degree C night/day temp. during crop maturity), use of organic manures, fertile, light-textured and well-drained soil, direct sowing, etc.
Objectives of study
The study, commissioned by the Agricultural Products Export Development Agency (APEDA), Govt. of India, had the following objectives:• Remote Sensing data based area estimate of traditional and evolved
Basmati varieties in Punjab (21 dist.), Haryana (20), western Uttar Pradesh (26), Uttarakhand (4), Jammu & Kashmir (2), and Himachal Pradesh (2).
• CCE based yield prediction in different districts/regions.• Monthly report on Basmati during its cropping season – growth, crop
condition, biotic and abiotic stresses • Annual change in area under basmati varieties.
Study Area
IRS-P6 AWiFS : 24-SEP-2008 Covering Haryana and Punjab States
IRS-P6 AWiFS : 03-Oct-2010 Covering Haryana and Punjab States
Basmati
Sharbati
An attempt was made to differentiate High yielding riceand basmati varieties based on their phonological stagedifferences which in turn have impact on spectralreflectance on the satellite data.In general, the high yielding rice varieties are sown andtransplanted one month in advance of Basmati varieties inmost of the study areas.The most important reason for late sowing andtransplantation of basmati varieties is that these varietiesshould mature during the cold night periods during lateOctober or first week of November which helps toproduce better aroma in the basmati.
REMOTE SENSING OF CROP PHENOLOGY
Seed to seed duration of commonly grown Basmati varieties
Traditional Basmati• Basmati-386 / Taraori Basmati 150 d• Basmati-370 145 dEvolved Basmati • CSR-30 140 d• Pusa Basmati-1 140 d• Pusa-1121 130-135 d
MethodologyData Used• Multi-temporal IRS AWiFS (56m), LISS-III (23m) digital data for the rice growing period
and Liss-IV (6m) for selected area.• Due to cloud cover, good quality data available were generally after 15 Sept. . AWiFS
with 5 d repeat cycle provided more frequent
Field Data and GPS Measurements• Ground Truth (GT) was collected during fourth week of August to first week of October,
which coincided with flowering to grain formation stage of rice crop. Agronomic data like variety, stage/vigor, and height of the crop canopy, soil exposure were recorded. Minimum size of plot considered was 300 * 300 sq. m. to collect data using GPS.
Crop Cutting Experiments (CCE) for yield estimation in all the states. For example, in Haryana, CCE were conducted in 190 plots covering 10 districts.
Selection of images for varietal study based on crop calender
• In Punjab, Traditional Basmati varieties (Basmati 386) is in flowering stage in last week of October and harvested in 4th week November.
• Evolved Basmati (Pusa Basmati-1 and PB1121) flowers in 2nd week of October and harvested in 3rd week of November.
• HYVs are harvested in 4th week of September.• In Haryana, transplanting of Basmati varieties is done about 15 days earlier
than Punjab, and accordingly all crop stages.• In Uttar Pradesh, transplanting is similar to Punjab.• In Jammu & Kashmir, only Ranbir Basmati is grown, which is of shorter
duration. • Hence, images of last week of September to 1st week of October and onwards
were selected for analysis.
Steps in IRS LISS-III Digital Data Analysis
• Geo-referencing• Administrative boundary superimposition• Generation of spatial information in GIS environment • Superimposing GPS locations of Basmati and high yielding rice varieties on the
registered LISS-III digital data, • Identification of basmati and high yielding rice varieties on LISS-III digital data, • Supervised classification using MXL classifier with boundary mask approach, • Area estimation under different rice varieties • Generation of spectral vegetation indices like NDVI
DN to Radiance Conversion• Calculation of at-sensor spectral radiance is the fundamental step in
converting image data from multiple sensors and platforms into a physically meaningful common radiometric scale.
• In order to obtain radiometrically comparable apparent spectral radiance data suitable for further processing, the integer digital number (DN) of each band of all images was transferred into real numbers using the spectral calibration data. The calibration was done by following expression of satellite spectral radiance Lλ, (Lillesand et.al; 2000) which is,
Lrad = {[DN/MAX GRAY] * [Lmax - Lmin]} + Lmin
Where, DN = Digital numbers of a pixel, Max grey: Maximum DN possible for a given data. Lmax and Lmin are the maximum and minimum radiance values for band (mWcm-2 Sr-1 µm1).
Generation of Training Signatures and SeparabilityAnalysis• LISS-III and LISS-IV images of selected growth phases of major HYVs and Basmati
varieties ( Last week of September onwards)were used. GPS based training sites were collected for different rice varieties and other land-use classes.
• Five-to-six classes with different developmental stages and percent ground cover having different vigour for each rice variety were identified for training signature generation.
• The training signatures contain multi-band statistics such as mean, standard deviation, and variance-covariance matrix for each class, which is used in supervised classification.
• Spectral separability of basmati rice varieties and other HYVs were generated.• Before using these signature statistics in the supervised classification, the crop
separability was studied by computing the Transformed Divergence for different classes.
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0.55 0.65 0.81 1.62
DN
Val
ues
Spectral Reflecatnce of Rice Varieties
Basmati-1Basmati-2Basmati-3HYV-1HYV-2Sharbati-1Sharbati-2
Central Wavelength (micro meter)
IRS LISS-III Spectral BandsBand 2-Green: 0.52 – 0.59Band 3-Red: 0.62 – 0.68
Band 3-NIR : 0.76 – 1.55 – 1.70
IRS-P6 LISS-III images of two dates showing differentiation of Basmati from HYVs in part of Karnal district, Haryana
Basmati
24-SEP-2008 31-Aug-2008
High Yielding Varieties
24-September 200831-August 2008
South-Western Part of Karnal District
Traditional Basmati
Evolved Basmati
Sharbati
GPS points for Training sites & CCE
Class Code No. Pixels 5 10 15 20 30 40 50 60 70 75 85 95 110 115River sand 5 4787 83.79 13 0 0 0 0 0 0 0 0 0 3.18 0.02 0Waste Land 10 567 4.59 93.83 0 0 0 0 0 0 0 0 0 1.23 0 0Habitation 15 9545 3.41 42.38 0 0 0 0 0 0 0.05 0 0.17 44.83 1.32 0Water 20 856 0 0 0 68.81 2.57 0 0 0 0 0 0 3.1 16.56 0Water-2 30 1292 0 0.08 0.09 4.49 75.54 0 0.15 0 0 0 0 3.15 16.56 0Basmati-1 40 6647 0 0 0 0 0 23.3 69.8 0 0 0.02 6.71 0.02 0 0Basmati-2 50 3120 0 0 0 0 0 1.15 77.98 0.03 0.38 2.08 16.44 0.06 0 0Sharbati-1 60 768 0 0 0 0 0 0 8.98 59.77 17.32 11.07 2.86 0 0 0Sharbati-2 70 577 0 0 0 0 0 0 0.35 14.73 83.36 0 0.17 1.39 0 0HYV-1 75 2991 0 0 0 0 0 0.33 4.55 0.74 0.3 62.29 31.16 0 0 0HYV-2 85 1296 0 0.08 0 0 0 0 7.87 0 0.46 5.25 85.65 0.31 0 0Fallow land 95 4461 3.12 0.81 5.04 0 0 0 0.87 0 3.18 0 0.11 78.7 0.99 5.87waterlogged 110 3358 0.12 1.43 0.03 0.09 4.59 0 8.7 0 0 0 0.12 5.48 79.09 0Other Veg. 115 584 0 0 0 0 0 0 1.2 0.17 0.34 0.15 0.35 5.6 0 92.29
Average accuracy = 82.81 % Overall accuracy = 91.58 % KAPPA COEFFICIENT = 0.9220
Percent Pixels Classified by Code
Confusion Matrix
Separability Measure: Transformed DivergenceAverage Separability: 1994636Minimum Separability: 1509900Maximum Separability: 2.000000Minimum Separability: Sharbati-1 and Sharbati-2
Class River Sand Waste Land Habitation Water-1 Water-2 Basmati-1 Basmati-2 Sharbati-1 Sharbati-2 HYV-1 HYV-2 Fallow Land Waterlogged StreamWaste Land 1.999966Habitation 2.000000 2.000000Water-1 2.000000 2.000000 2.000000Water-2 2.000000 2.000000 2.000000 2.000000
Basmati-1 2.000000 2.000000 2.000000 2.000000 2.000000Basmati-2 2.000000 2.000000 2.000000 2.000000 2.000000 1.981544Sharbati-1 2.000000 2.000000 2.000000 2.000000 2.000000 2.000000 1.999990Sharbati-2 2.000000 2.000000 2.000000 2.000000 2.000000 2.000000 2.000000 1.509900
HYV-1 2.000000 2.000000 2.000000 2.000000 2.000000 1.999995 2.000000 2.000000 2.000000HYV-2 2.000000 2.000000 2.000000 2.000000 2.000000 1.999778 1.929037 2.000000 2.000000 1.950382
Fallow Land 2.000000 2.000000 1.999963 2.000000 2.000000 2.000000 2.000000 2.000000 2.000000 2.000000 2.000000Waterlogged 2.000000 2.000000 2.000000 2.000000 1.999815 2.000000 2.000000 2.000000 2.000000 2.000000 2.000000 2.000000
Stream 2.000000 1.999966 2.000000 2.000000 2.000000 1.999966 2.000000 2.000000 2.000000 2.000000 2.000000 1.992781 2.000000Other Veg 2.000000 2.000000 1.999966 2.000000 2.000000 2.000000 1.998234 1.999993 1.999996 2.000000 1.996616 1.999999 2.000000 1.999986
Signature Separability using Transformed Divergence
KURUKSHETRA
KARNAL
KAITHAL
NDVI Image of IRS LISS-III data of 24-Sep-2008 covering Karnal Kaithal & Kurukshetra
Basmati and HYV variety Classification using NDVI Thresholding
Crop Yield
• Crop yield data collected from CCE and Agriculture department from high yielding and basmati growing states in India, along with agro-meteorological data and Spectral Vegetation Index like Normalized Difference Vegetation Index (NDVI) was analyzed for developing zonal Agromet-Spectral –Yield models using multiple regression analysis.
Pusa Basmati: NDVI Vs. Yield (Panipat, Haryana)
Yield = 25.27*NDVI + 30.57R2 = 0.95
3839404142434445464748
0.25 0.30 0.35 0.40 0.45 0.50 0.55 0.60 0.65NDVI
Yie
ld (
q/ha
)
YIELD (q/ha) Linear (YIELD (q/ha))
Pusa Basmati: NDVI Vs. Yield (Karnal, Haryana)
Yield= 45.15*NDVI + 25.23R2 = 0.91
404244464850525456
0.35 0.40 0.45 0.50 0.55 0.60 0.65NDVI
Yie
ld (
q/h
a)
Yield (q/ha) Linear (Yield (q/ha))
Relationship between CCE Yield and NDVI values of Basmati Variety in Karnal & Panipat Districts
Sharbati Rice: NDVI Vs. Yield (Karnal, Haryana)
Yield = 45.66*NDVI + 34.61R2 = 0.84
525354555657585960
0.35 0.40 0.45 0.50 0.55 0.60NDVI
Yie
ld (
q/ha
)
Yield (q/ha) Linear (Yield (q/ha))
Pusa-1121: NDVI Vs. Yield (Muzaffarnagar, UP)
Yield = 16.15*NDVI + 41.34R2 = 0.67
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0.35 0.40 0.45 0.50 0.55 0.60 0.65NDVI
Yie
ld (
q/h
a)
Yield (q/ha) Linear (Yield (q/ha))
Relationship between CCE Yield and NDVI values of Sharbati & Basmati Varieties
Crop Cutting Experiments (CCE) for yield estimation
Crop Cutting Experiments were conducted usingstandard procedures in the study area for assessment ofyield.
The CCE derived yield was averaged for the districtand a conversion factor used for offsetting the moisturecontent of the grain for estimation of district levelproduction.
In Haryana State, Crop Cutting Experiments were conducted in 190 plots covering 10 districts. Based on CCE data, the range of productivity of different Basmati varieties computed is given in Table-1.
Normalized Difference Vegetation Index (NDVI) of Basmati and high yielding rice varieties of aparticular administrative district / tehsil for 10 crop seasons were generated
Meteorological data like rainfall, Tmax, Tmin, Relative Humidity (RH %), sunshine Hours etc. of previous10-years have been collected form IMD for a particular Met Station.
The Basmati yield data at district/tehsil-level was also collected from the Department of Agriculture of thesame periods.
Agro-meteorological yield models were generated using this data set and using the current seasons metdata.
These Agro-meteorological yield models can be used for predicting the basmati yields well in advance ofthe harvesting period.
The crop condition term was also be incorporated into the yield models to take into account the yieldreduction due yield reducing factors.
Agro-met-spectral Yield Models
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RICE
YIEL
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/ha)
1994 1996 1998 2000 2002 2004 2006 2008
YEAROBSERVED PREDICTED
Rice Yields in Karnal District
An attempt was made to predict the Basmati rice yields using the Agro-meteorogical yield model. Theobserved and model predicted Evolved basmati yields for Karnal, Panipat, Kurukshetra districts aregiven in the following figure.
Area in '000 ha
Pusa-1121 PB-1 CSR-30 Sharbati Sugandha
1 Punjab 2780.40 4.50 622.70 28.12 53.24 49.30 -
2 Haryana 1081.70 424.65 94.95 74.48 7.70 -
3 Uttar Pradesh 1550.00 18.05 289.85 59.00 - 112.90 70.35
4 Uttarakhand 143.00 8.20 7.00 1.70 - 33.40 3.30
5 Jammu & Kashmir 96.00 34.00 8.50 - - - -
6 Himachal Pradesh 72.88 2.85 - - 40.17 -
7 Delhi 1.505723.98 64.75 1357.05 183.77 127.72 243.47 73.65
Non-Notified
State-wise area under Basmati and other varieties
Total
S. No. State Total RiceBasmati-386, 370, Type-3
Evolved Basmati
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2007 2008 2009 2010 2011 2012 2013 2014 2015 2016 2017
AREA
(000
, HA)
YEAR
Aromatic Indica Basmati Rice Acreage, Production and Export During Last One Decade
Area Production Export (000, tons) Value (million USD)0
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2007 2008 2009 2010 2011 2012 2013 2014 2015 2016 2017
AREA
(000
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YEAR
Aromatic Indica Basmati Rice Acreage, Production and Export During Last One Decade
Area Production Export (000, tons) Value (million USD)
Conclusion
• Traditional and Evolved Basmati varieties were separable by proper selection of data base on phenology and analysis of IRS Liss-3 data. AWiFS data with 5d repeat cycle used in conjuction with Liss-3 proved helpful wherever data gap existed.
• Within the two groups of Basmati, ground survey based fraction of diff. varieties was used to arrive at percent area under different varieties.
• Crop cutting based yield was used to calculate the production of different varieties. NDVI and NDWI based yield model was also developed and used to validate the field data.
• Abiotic stress, like flooding in Punjab in 2010 was also studied using RS data, which helped in flood damage assessment and it`s effect on final yield.
• Both RS, detailed ground information and expert knowledge are needed to get information on varietal discrimination and production. Accuracy of production data was compared with market arrivals in different states by AIREA and the user organization.
• The area under Evolved Basmati is increasing due to higher yield and Traditional varieties decreasing in recent years.
SALAMAT Thank You