International audienceEnsemble variational methods are being increasingly used in the field of geophysical data assimilation. Their efficiency comes from the combined use of ensembles, which provide statistics estimates, and a variational analysis, which handles nonlinear operators through iterative optimization techniques. Taking model error into account in four-dimensional ensemble variational algorithms is challenging because the state trajectory over the data assimilation window (DAW) is no longer determined by its sole initial condition. In particular, the control variable dimension scales with the DAW length, which yields a high numerical complexity. This is unfortunate since accuracy improvement is expected with longer DAWs. Building...
We propose a method to account for model error due to unresolved scales in the context of the ensemb...
This article presents a framework for performing ensemble and hybrid data assimilation in a weak-con...
Data assimilation considers the problem of using a variety of data to calibrate model-based estimate...
International audienceEnsemble variational methods are being increasingly used in the field of geoph...
none2siThe performance of (ensemble) Kalman filters used for data assimilation in the geosciences cr...
Both ensemble filtering and variational data assimilation methods have proven useful in the joint es...
International audienceThe iterative ensemble Kalman filter (IEnKF) was recently proposed in order to...
International audienceThe iterative ensemble Kalman smoother (IEnKS) is a data assimilation method m...
Submitted to the Quarterly Journal of the Royal Meteorological SocietyThe iterative ensemble Kalman ...
In this work, we aim at studying ensemble based optimal control strategies for data assimilation. Su...
International audienceThe analysis in nonlinear variational data assimilation is the solution of a n...
Numerous geophysical inverse problems prove difficult because the available measurements are indirec...
AbstractThis article presents a framework for performing ensemble and hybrid data assimilation in a ...
The analysis correction made by data assimilation (DA) can introduce model shock or artificial signa...
This study examines the performance of coupling the deterministic four-dimensional variational assim...
We propose a method to account for model error due to unresolved scales in the context of the ensemb...
This article presents a framework for performing ensemble and hybrid data assimilation in a weak-con...
Data assimilation considers the problem of using a variety of data to calibrate model-based estimate...
International audienceEnsemble variational methods are being increasingly used in the field of geoph...
none2siThe performance of (ensemble) Kalman filters used for data assimilation in the geosciences cr...
Both ensemble filtering and variational data assimilation methods have proven useful in the joint es...
International audienceThe iterative ensemble Kalman filter (IEnKF) was recently proposed in order to...
International audienceThe iterative ensemble Kalman smoother (IEnKS) is a data assimilation method m...
Submitted to the Quarterly Journal of the Royal Meteorological SocietyThe iterative ensemble Kalman ...
In this work, we aim at studying ensemble based optimal control strategies for data assimilation. Su...
International audienceThe analysis in nonlinear variational data assimilation is the solution of a n...
Numerous geophysical inverse problems prove difficult because the available measurements are indirec...
AbstractThis article presents a framework for performing ensemble and hybrid data assimilation in a ...
The analysis correction made by data assimilation (DA) can introduce model shock or artificial signa...
This study examines the performance of coupling the deterministic four-dimensional variational assim...
We propose a method to account for model error due to unresolved scales in the context of the ensemb...
This article presents a framework for performing ensemble and hybrid data assimilation in a weak-con...
Data assimilation considers the problem of using a variety of data to calibrate model-based estimate...