The Role of Virtual Tall Towers in the Carbon Dioxide Observation Network Martha Butler The...

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The Role of Virtual Tall Towers in the Carbon Dioxide Observation Network Martha Butler The Pennsylvania State University ChEAS Meeting June 5-6, 2006

Transcript of The Role of Virtual Tall Towers in the Carbon Dioxide Observation Network Martha Butler The...

Page 1: The Role of Virtual Tall Towers in the Carbon Dioxide Observation Network Martha Butler The Pennsylvania State University ChEAS Meeting June 5-6, 2006.

The Role of Virtual Tall Towersin the Carbon Dioxide Observation Network

Martha ButlerThe Pennsylvania State University

ChEAS Meeting

June 5-6, 2006

Page 2: The Role of Virtual Tall Towers in the Carbon Dioxide Observation Network Martha Butler The Pennsylvania State University ChEAS Meeting June 5-6, 2006.

Virtual Tall Towers

• What is a virtual tall tower (VTT)?– At a continental site with continuous CO2 mixing ratio

measurements in the surface layer, estimate the mixing ratio in the mixed layer above during mid-day hours

• Where/when does a VTT make sense?– Existing site (typically a flux tower) where there is a

hole in the existing observation network– Resources to invest in upgrading sampling and

calibration procedures

• How is this done?• Testing the correction method• What a VTT is not!

Page 3: The Role of Virtual Tall Towers in the Carbon Dioxide Observation Network Martha Butler The Pennsylvania State University ChEAS Meeting June 5-6, 2006.

The Richardson-Miles Package

For more information, see www.amerifluxco2.psu.edu

Page 4: The Role of Virtual Tall Towers in the Carbon Dioxide Observation Network Martha Butler The Pennsylvania State University ChEAS Meeting June 5-6, 2006.

Performance Testing

100 120 140 160 180 200 220 240

0

3

6

Day of Year

[CO

2] PSU

[C

O2] C

MD

L (ppm

)

a

100 120 140 160 180 200 220 2400.4

0.2

0

0.2

0.4

Day of Year

[CO

2] PSU

[C

O2] C

MD

L (ppm)

b

Difference between the PSU system and WLEF 76m CO2 measurements in a test from April-August 2004. [Miles/Richardson/Uliasz, in prep.]

Difference of daily averages

Page 5: The Role of Virtual Tall Towers in the Carbon Dioxide Observation Network Martha Butler The Pennsylvania State University ChEAS Meeting June 5-6, 2006.

Global Observation Network in 2002

Page 6: The Role of Virtual Tall Towers in the Carbon Dioxide Observation Network Martha Butler The Pennsylvania State University ChEAS Meeting June 5-6, 2006.

Daily Mixing Ratio Profile from a Tall Tower

Page 7: The Role of Virtual Tall Towers in the Carbon Dioxide Observation Network Martha Butler The Pennsylvania State University ChEAS Meeting June 5-6, 2006.

Is an Adjustment Required at Mid-Day?

Page 8: The Role of Virtual Tall Towers in the Carbon Dioxide Observation Network Martha Butler The Pennsylvania State University ChEAS Meeting June 5-6, 2006.

If You Prefer Numbers…

Month CO2 (ppm) at 30m, midday

CO2 (ppm) at 396m, midday

CO2 (ppm) 30m-396m,

midday σ(396m-30m)

CO2 (ppm) at 396m, entire day

CO2 (ppm)396m(pm)

396m(entire)

1 373.16 372.51 0.65 1.73 372.46 0.05

2 375.34 374.57 0.78 1.72 373.96 0.60

3 372.91 372.69 0.22 0.85 372.73 -0.04

4 370.75 370.91 -0.16 0.22 371.23 -0.32

5 363.91 364.68 -0.77 0.94 366.21 -1.53

6 358.49 359.96 -1.47 1.58 362.54 -2.59

7 352.50 353.63 -1.13 0.98 354.59 -0.97

8 355.95 356.72 -0.77 0.93 356.85 -0.13

9 364.47 364.74 -0.27 0.81 364.76 -0.02

10 371.31 370.60 0.71 2.70 370.49 0.11

11 373.41 372.99 0.41 0.78 372.89 0.10

12 374.19 373.63 0.56 0.83 373.25 0.38

AnnualMean 367.20 367.30 -0.10 367.66 -0.36

Monthly Summary for 1998

Page 9: The Role of Virtual Tall Towers in the Carbon Dioxide Observation Network Martha Butler The Pennsylvania State University ChEAS Meeting June 5-6, 2006.

What Is This Adjustment?

Following the mixed layer similarity theory of Wyngaard & Brost [1984] and Moeng & Wyngaard [1989], the vertical gradient of a scalar in the boundary layer:

0

* *

izb t

i i i i

wcwcC z zg g

z z w z z w z

where

gb and gt are bottom-up and top-down gradient functions scaled by boundary layer depth zi

w* is the convective velocity scale

wc0 and wczi are the surface and entrainment fluxes of the scalar C

Page 10: The Role of Virtual Tall Towers in the Carbon Dioxide Observation Network Martha Butler The Pennsylvania State University ChEAS Meeting June 5-6, 2006.

The Gradient Functions

The LES gradient functions are from a study by Patton et al. [2003].

The observed gradient functions will appear in Wang et al. [in review in BLM].

Page 11: The Role of Virtual Tall Towers in the Carbon Dioxide Observation Network Martha Butler The Pennsylvania State University ChEAS Meeting June 5-6, 2006.

Implementation at a Flux Tower

• We tested the concept at WLEF, adjusting 30m CO2 mixing ratios to a VTT height of 396m and comparing with the observations at 396m.

• Required input: displacement height, tower height, VTT height and time series of tower top CO2 mixing ratio, CO2 flux, sensible heat flux, and temperature.

• We estimate the mixing ratio at the VTT height for 3-6 midday hours, depending on time of year.

• We use the boundary layer depth algorithm from Yi et al. [2001].

• We screen for minimum sensible heat flux (20 W m-2) and boundary layer depth (700m).

Page 12: The Role of Virtual Tall Towers in the Carbon Dioxide Observation Network Martha Butler The Pennsylvania State University ChEAS Meeting June 5-6, 2006.

The Algorithm As Used

0 0

0 0

* *

VTT VTTz z

b ti i i iz z

wc wcz d z dC g dz g dz

w z z w z z

Here,

- ΔC is the adjustment to the 30m CO2 mixing ratio

- z0 is the measurement height, 30m

- zVTT is the virtual tall tower height, 396m

- α is a fraction applied to the surface flux to represent the entrainment flux

- d is the displacement height

- gb and gt are empirical fits for the gradient functions of Wang et al.

Page 13: The Role of Virtual Tall Towers in the Carbon Dioxide Observation Network Martha Butler The Pennsylvania State University ChEAS Meeting June 5-6, 2006.

Screening to Limit Uncertainties

Page 14: The Role of Virtual Tall Towers in the Carbon Dioxide Observation Network Martha Butler The Pennsylvania State University ChEAS Meeting June 5-6, 2006.

Screening to Limit Uncertainties

Page 15: The Role of Virtual Tall Towers in the Carbon Dioxide Observation Network Martha Butler The Pennsylvania State University ChEAS Meeting June 5-6, 2006.

Hourly Adjustment & Bias – Spring/Summer

Page 16: The Role of Virtual Tall Towers in the Carbon Dioxide Observation Network Martha Butler The Pennsylvania State University ChEAS Meeting June 5-6, 2006.

Daily Adjustment & Bias – Spring/Summer

Page 17: The Role of Virtual Tall Towers in the Carbon Dioxide Observation Network Martha Butler The Pennsylvania State University ChEAS Meeting June 5-6, 2006.

A Closer Look at One Month

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What a VTT is not….

• Unlike a tall tower:– Limited number of species observed– Midday observations only– More gaps in the observations– Nocturnal boundary layer not represented– Added uncertainty and bias

• What if it isn’t a flux tower and/or permanent site?– Sample as high on a tower as possible– Infer the local flux for the micromet adjustment

• By model

• By sampling at multiple heights on tower

Page 19: The Role of Virtual Tall Towers in the Carbon Dioxide Observation Network Martha Butler The Pennsylvania State University ChEAS Meeting June 5-6, 2006.

Will VTTs Be Useful?

• Adding a few more continental observation sites– Density of measurements– Spatial flux variability– Synoptic variability

• Availability of VTT data• Tradeoffs….

– Is the bias and uncertainty a problem?– Can these data help constrain regional budgets?

Page 20: The Role of Virtual Tall Towers in the Carbon Dioxide Observation Network Martha Butler The Pennsylvania State University ChEAS Meeting June 5-6, 2006.

Model Performance at 396m vs. 30m

The red lines are time series of hourly samples at WLEF in September 2002 at 396m and 30m from a tracer transport model using analyzed winds and standard “background” fluxes for fossil fuel, air-sea flux and a balanced terrestrial flux.

The black lines are the CO2 time series observations at WLEF.

Data are normalized to the beginning of the year 2002.

Page 21: The Role of Virtual Tall Towers in the Carbon Dioxide Observation Network Martha Butler The Pennsylvania State University ChEAS Meeting June 5-6, 2006.

VTT References

• Davis, K. J., 2003, Well-calibrated CO2 mixing ratio measurements at flux towers: The virtual tall towers approach, 12th WMO/IAEA Meeting of Experts, Toronto.

• Davis, K. J. et al., in prep, Methodology for a flux-tower based CO2 observing network: Virtual tall towers.

• Moeng, C.-H. and J. C. Wyngaard, 1984, Statistics of conservative scalars in the convective boundary layer, JAS, 41(21), 3161-3169.

• Moeng, C.-H., and J. C. Wyngaard, 1989, Evaluation of turbulent transport and dissipation closure in second-order modeling, JAS, 45, 2311-2330.

• Patton, E. G., et al., 2003, The influence of forest canopy on top-down and bottom-up diffusion in the planetary boundary layer, QJRMS, 129A, 1415-1434.

• Wang, W. et al., in review, Observations of the top-down and bottom-up gradient functions in the convective boundary layer from a very tall tower, BLM.

• Wyngaard, J. C., 1987, A physical mechanism for the asymmetry in top-down and bottom-up diffusion, JAS, 44(7), 1083-1087.

• Wyngaard, J. C. and R. A. Brost, 1984, Top-down and bottom-up diffusion in the convective boundary layer, JAS, 41, 102-112.

• Yi, C. et al., 2001, Long-term observations of the dynamics of the continental boundary layer, JAS, 58(10), 1288-1299.

Page 22: The Role of Virtual Tall Towers in the Carbon Dioxide Observation Network Martha Butler The Pennsylvania State University ChEAS Meeting June 5-6, 2006.

Hourly Adjustment & Bias – Fall/Winter

Page 23: The Role of Virtual Tall Towers in the Carbon Dioxide Observation Network Martha Butler The Pennsylvania State University ChEAS Meeting June 5-6, 2006.

Daily Adjustment & Bias – Fall/Winter