Data assimilation techniques such as the ensemble Kalman filter and the sequential Metropolis-Hastings algorithm provide ameans of integrating satellite data with ecosystemmodels to optimally adjust their temporal trajectory. To some extent thesemethods can compensate for poor model parameterisations but a preferable scenario is to calibrate themodelwell in the first instance. This paper explores how a site specific model calibration can be adapted to a different site using only MODIS reflectance data. Results show that, using reflectance data only, estimates of the net carbon budget of a field site can be extended to a nearby site, but that this best facilitated by re-calibration rather than sequential data assimilation.4 page(s
This paper presents a methodology to test the performance of assimilation of satellite data into mod...
More and more terrestrial observational networks are being established to monitor climatic, hydrolog...
Data assimilation techniques allow researchers to optimally merge remote sensing observations in eco...
This paper details recent progress in the assimilation of top of canopy reflectance data into an eco...
The magnitude and persistence of land carbon (C) pools influence long‐term climate feedbacks. Intera...
Ecosystem models are valuable tools for understanding the growth of vegetation, its response to clim...
[1] Land surface models have uncertainties due to their approximation of physical processes and the ...
This paper explores the potential to improve spatial estimates of key carbon fluxes by combining Ear...
Land surface models have uncertainties due to their approximation of physical processes and the hete...
International audienceLarge uncertainties in land surface models (LSMs) simulations still arise from...
Data assimilation methods provide a rigorous statistical framework for constraining parametric uncer...
This paper presents a methodology to test the performance of assimilation of satellite data into mod...
More and more terrestrial observational networks are being established to monitor climatic, hydrolog...
Data assimilation techniques allow researchers to optimally merge remote sensing observations in eco...
This paper details recent progress in the assimilation of top of canopy reflectance data into an eco...
The magnitude and persistence of land carbon (C) pools influence long‐term climate feedbacks. Intera...
Ecosystem models are valuable tools for understanding the growth of vegetation, its response to clim...
[1] Land surface models have uncertainties due to their approximation of physical processes and the ...
This paper explores the potential to improve spatial estimates of key carbon fluxes by combining Ear...
Land surface models have uncertainties due to their approximation of physical processes and the hete...
International audienceLarge uncertainties in land surface models (LSMs) simulations still arise from...
Data assimilation methods provide a rigorous statistical framework for constraining parametric uncer...
This paper presents a methodology to test the performance of assimilation of satellite data into mod...
More and more terrestrial observational networks are being established to monitor climatic, hydrolog...
Data assimilation techniques allow researchers to optimally merge remote sensing observations in eco...