The magnitude and persistence of land carbon (C) pools influence long‐term climate feedbacks. Interactive ecological processes influence land C pools and our understanding of these processes is imperfect so land surface models have errors and biases when compared to each other and to real observations. Here we implement an Ensemble Adjustment Kalman Filter (EAKF), a sequential state data assimilation technique to reduce these errors and biases. We implement the EAKF using the Data Assimilation Research Testbed coupled with the Community Land Model (CLM 4.5 in CESM 1.2). We assimilated simulated and real satellite observations for a site in central New Mexico, United States. A series of observing system simulation experiments allowed assessm...
A Global Carbon Assimilation System based on the ensemble Kalman filter (GCAS-EK) is developed for a...
The objective of this research is to develop a data assimilation framework in which microwave bright...
This thesis describes an iterative data assimilation strategy, both Bayesian and Monte Carlo in natu...
Land surface models (LSMs) are integral components of general circulation models (GCMs), consisting ...
Abstract The Western United States is dominated by natural lands that play a critical role for carbo...
Data assimilation methods provide a rigorous statistical framework for constraining parametric uncer...
Carbon, water and energy exchange between the land and atmosphere controls how ecosystems either acc...
International audienceLarge uncertainties in land surface models (LSMs) simulations still arise from...
Our limited ability to accurately simulate leaf phenology is a leading source of uncertainty in mode...
International audienceA Land Data Assimilation System (LDAS) able to ingest surface soil moisture (S...
Data assimilation techniques such as the ensemble Kalman filter and the sequential Metropolis-Hastin...
We develop and test new methodologies to best estimate CO2 fluxes on the Earth's surface by assimila...
A Global Carbon Assimilation System based on the ensemble Kalman filter (GCAS-EK) is developed for a...
The objective of this research is to develop a data assimilation framework in which microwave bright...
This thesis describes an iterative data assimilation strategy, both Bayesian and Monte Carlo in natu...
Land surface models (LSMs) are integral components of general circulation models (GCMs), consisting ...
Abstract The Western United States is dominated by natural lands that play a critical role for carbo...
Data assimilation methods provide a rigorous statistical framework for constraining parametric uncer...
Carbon, water and energy exchange between the land and atmosphere controls how ecosystems either acc...
International audienceLarge uncertainties in land surface models (LSMs) simulations still arise from...
Our limited ability to accurately simulate leaf phenology is a leading source of uncertainty in mode...
International audienceA Land Data Assimilation System (LDAS) able to ingest surface soil moisture (S...
Data assimilation techniques such as the ensemble Kalman filter and the sequential Metropolis-Hastin...
We develop and test new methodologies to best estimate CO2 fluxes on the Earth's surface by assimila...
A Global Carbon Assimilation System based on the ensemble Kalman filter (GCAS-EK) is developed for a...
The objective of this research is to develop a data assimilation framework in which microwave bright...
This thesis describes an iterative data assimilation strategy, both Bayesian and Monte Carlo in natu...