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Data assimilation as a tool for biogeochemical studies . Mathew Williams University of Edinburgh. The carbon problem. Friedlingstein P., et al. 2006. Journal of Climate. 11 coupled climate-carbon models predicted very different future C dynamics Conclusion – our models are flawed
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Data assimilation as a tool for biogeochemical studies Mathew Williams University of Edinburgh
The carbon problem • Friedlingstein P., et al. 2006. Journal of Climate. • 11 coupled climate-carbon models predicted very different future C dynamics • Conclusion – our models are flawed • Solution – better model testing against data, and better use of multiple data sets to test the representation of process interactions
Talk outline • Assimilating C flux and stocks data to improve analyses of C dynamics • Assimilating reflectance data • Assimilating latent energy flux data to deconvolve net carbon fluxes
FUSION ANALYSIS ANALYSIS + Complete + Clear confidence limits + Capable of forecasts Improving estimates of C dynamics MODELS MODELS + Capable of interpolation & forecasts - Subjective & inaccurate? OBSERVATIONS +Clear confidence limits - Incomplete, patchy - Net fluxes OBSERVATIONS
A prediction-correction system Time update “predict” Measurement update “correct” Initial conditions
The Kalman Filter Initial state Drivers Forecast Observations Predictions At Ft+1 Dt+1 F´t+1 MODEL OPERATOR P Assimilation Ensemble Kalman Filter At+1 Analysis
Observations – Ponderosa Pine, OR (Bev Law) Flux tower (2000-2) Sap flow Soil/stem/leaf respiration LAI, stem, root biomass Litter fall measurements
Af Lf Cfoliage Rh Ra Ar Lr GPP Croot Clitter D Aw Lw Cwood CSOM/CWD C = carbon pools A = allocation L = litter fall R = respiration (auto- & heterotrophic)
Rtotal & Net Ecosystem Exchange of CO2 Af Lf Cfoliage Rh Ra Ar Lr GPP Croot Clitter D 6 model pools 10 model fluxes 9 parameters 10 data time series Aw Lw Cwood CSOM/CWD C = carbon pools A = allocation L = litter fall R = respiration (auto- & heterotrophic) Temperature controlled
Time (days since 1 Jan 2000) Williams et al (2005)
= observation — = mean analysis | = SD of the analysis Time (days since 1 Jan 2000) Williams et al (2005)
Time (days since 1 Jan 2000) Williams et al (2005)
= observation — = mean analysis | = SD of the analysis Time (days since 1 Jan 2000) Williams et al (2005)
Data brings confidence =observation — = mean analysis | = SD of the analysis Williams et al (2005)
At Ft+1 Reflectancet+1 MODISt+1 DALEC Radiative transfer DA At+1 Assimilating EO reflectance data
EO assimilation to improve photosynthesis predictions Model only Assimilating MODIS NDVI • = observation — = mean analysis | = SD of the analysis Quaife et al. (RSE in press)
Constraining the C cycle via hydrology Carbon Hydrology ET Ra Rh Ppt Cf WS1 Cl GPP Cr WS2 WS3 Cw Csom
Deconvolving net C fluxes • NEE = Reco– GPP • Eddy flux towers also measure LE • LE GPP (some complications…) • Use a model of coupled C-water fluxes… • Assimilate LE and NEE data, and use LE to constrain GPP • Improved flux deconvolution • Improved model diagnosis and prognosis
Demonstration study • Generate a “true” system with a complex model • Sample the “truth” and generate observations (with errors) • Attempt to reconstruct the truth through assimilating the observations into a simple model • Experiment with NEE data alone, and NEE + LE data
Fluxes Truth Obs. Analysis
Residuals Obs. Truth
Stocks Truth Obs. Analysis
Summary • Data assimilation techniques are powerful tools for ecological research • Time series data are most useful • For improved predictions, better constraints on long time constant processes are required • Error characterisation is vital • EO data can be assimilated • Hydrological assimilation can decompose net C fluxes into components.
Acknowledgements: Bev Law Tris Quaife Thank you