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Published byBenny Wibowo Modified over 6 years ago
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T. Quaife, P. Lewis, M. Williams, M. Disney and M. De Kauwe.
Assimilating Earth Observation Data into a Vegetation Model using an Ensemble Kalman Filter T. Quaife, P. Lewis, M. Williams, M. Disney and M. De Kauwe.
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DALEC Cf Csom/cwd Clit Cr Cw GPP Af Ar Aw Ra Lf Lr Rh D
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DALEC NEP
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Ensemble Kalman Filter
Aa = A + A′A′THT(HA′A′THT + Re)-1(D - HA) H = observation operator A = state vector ensemble A′ = state vector ensemble – mean state vector D = observation ensemble Re = observation error covariance matrix
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Strategies for assimilation
Assimilate EO products Probably noisey Linear observation operator Assimilate reflectance Errors more easily characterised Non linear observation operator
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The “Twin experiment” Use a more complex model to represent the “truth” Simulate observations from truth model Asses ability of DALEC/EnKF to make accurate predictions
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SDGVM Max Evaporation Soil Moisture Litter Transpiration LAI
Soil C & N NPP H2O30 Phenology Hydrology Century Growth
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DALEC & SDGVM NEP
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NEP - Assimilating modelled 30 day LAI
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NEP - Assimilating 30 day FASIR LAI
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LAI – no assimilation
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LAI – SDGVM assimilation
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LAI – FASIR assimilation
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EnKF – augmented analysis
Aa = A + A′Â′TĤT(ĤÂ′Â′TĤT + Re)-1(D - ĤÂ) Ĥ = augmented observation operator  = augmented state vector ensemble  = h( A )
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Non-linear observation operator
NDVI = a0 × ( 1 – e( -a1 × LAI ) ) Regressing the FASIR LAI against the FASIR NDVI: a0 = 0.678 a1 = 0.982
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NEP - Assimilating FASIR NDVI
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LAI - Assimilating FASIR NDVI
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Conclusions Test exercise very promising
Demonstrates ability to use non-linear observation operators Next step is to couple a full CRM to DALEC to enable assimilation of reflectance data Accurate characterisation of errors is critical Models very different Improve DALEC Seek other data
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