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Interannual Variability in the ChEAS Mesonet. ChEAS XI, 12 August 2008 UNDERC-East, Land O Lakes, WI Ankur Desai Atmospheric & Oceanic Sciences, University of Wisconsin-Madison. What’s the Deal?.
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Interannual Variability in the ChEAS Mesonet ChEAS XI, 12 August 2008 UNDERC-East, Land O Lakes, WI Ankur Desai Atmospheric & Oceanic Sciences, University of Wisconsin-Madison
What’s the Deal? • Interannual variation (IAV) in carbon fluxes from land to atmosphere are significant at most flux sites • Key to understanding how climate affects ecosystems comes from modeling IAV • IAV (years-decade) is currently poorly modeled, while hourly, seasonal, and even successional (century) are better
Sipnet • A “simplified” model of ecosystem carbon / water and land-atmosphere interaction • Minimal number of parameters • Driven by meteorological forcing • Still has >60 parameters • Braswell et al., 2005, GCB • Sacks et al., 2006, GCB added snow • Zobitz et al., 2008
2 years = 7 years 1997 1998 1999 2000 2001 2002 2003 2004 2005
Any coherence? Desai et al, 2008, Ag For Met
Cross-site IAV • Hypothesis: IAV in flux towers in the same region are coherent in time • Hypothesis: Simple climate driven models can explain this IAV • Growing season length • Climate thresholds • Mean annual precip
Growing season and IAV • Does growing season start explain IAV? • Can a very simple model be constructed to explain IAV? • Hypothesis: growing season length explains IAV • Can we make a cost function more attuned to IAV? • Hypothesis: MCMC overfits to hourly data
The model • Driven by PAR, Air and Soil T, VPD, (Precip) • LUE based GPP model f(PAR,T,VPD) • Three respiration pools f(T, GPP) • Output: NEE, ER, GPP, LAI • Sigmoidal GDD function for leaf out • Sigmoidal Soil T function for leaf off • 17 parameters, 3 are fixed • Desai et al., in prep (a)
The optimizer • All flux towers with multiple years of data • Estimate parameters with Markov Chain Monte Carlo (smart random walk) • Written in IDL
MCMC • MCMC is an optimizing method to minimize model-data mismatch • Quasi-random walk through parameter space (Metropolis) • Start at many random places (Chains) in prior parameter space • Move “downhill” to minima in model-data RMS by randomly changing a parameter from current value to a nearby value • Avoid local minima by occasionally performing “uphill” moves in proportion to maximum likelihood of accepted point • Use simulated annealing to tune parameter space exploration • Pick best chain and continue space exploration • Requires 100,000-500,000 model iterations (chain exploration, spin-up, sampling) • End result – “best” parameter set and confidence intervals (from all the iterations) • Cost function compared to observed NEE
New cost function • Original log likelihood computes sum of squared difference at hourly timestep • What if we also added monthly and annual squared differences to this likelihood? • Have to scale these less frequent values • Have to deal with missing data
Regional IAV • How well do we know regional (scaled-up) IAV? • Do top-down and bottom-up regional flux estimation techniques agree on IAV (if not magnitude)? • What controls regional IAV? • Wetland IAV vs Upland IAV • Step 1: Scale the towers
Scaling with towers • NEP (=-NEE) at 13 sites • Stand age matters • Ecosystem type matters • Is interannual variability coherent? • Are we sampling sufficient land cover types”?
Desai et al., 2008, AFM • Multi-tower synthesis aggregation • parameter optimization with minimal 2 equation model
Tall tower downscaling • Wang et al., 2006
Scaling evaluation • Desai et al., 2008
Next step • Use our IAV model with all 17 (19) flux towers - estimate parameters for each • Use better landcover and better age distribution from NASA project • Upscale again - this time over long time period • This experiment for Northern Highlands 1989-2007 (Buffam et al., in prep)
Regional coherence? • Desai et al., in prep
Conclusions • There is some coherence in IAV across ChEAS • Better statistical method to show this? • A simple model with explicit phenology can capture the IAV across sites only with a better likelihood function • Next step: Simple model with fixed phenology • Limited convergence on IAV from regional methods
Other things • Sulman et al., in prep - the role of wetlands in regional carbon balance • Lake Superior carbon balance from ABL budgets (Atilla, McKinley) - Urban et al, in prep • Small lakes in the landscape (Buffam, Kratz) • Successional trends and modeling (Dietze) • Hyperspectral remote sensing (Townsend, Serbin, Cook) • Top-down CO2 budgets in valeys and complex terrain (Stephens, Schimel, Bowling, deWekker) • CH4 (pending), advection (pending - Yi), urban micromet and biogeochem (pending) • NEON? (Schimel, UNDERC)
Thanks • Desai lab: http://flux.aos.wisc.edu • Ben Sulman, Jonathan Thom, Shelly Knuth • DOE NICCR, NSF, UW, DOE, NASA, USFS, Northern Research Station, Kemp NRS • All the tower people