International audienceA new methodology is proposed to estimate and account for systematic model error in linear filtering as well as in nonlinear ensemble based filtering. Our results extend the work of Dee and Todling (2000) on constant bias errors to time-varying model errors. In contrast to existing methodologies, the new filter can also deal with the case where no dynamical model for the systematic error is available. In the latter case, the applicability is limited by a matrix rank condition which has to be satisfied in order for the filter to exist. The performance of the filter developed in this paper is limited by the availability and the accuracy of observations and by the variance of the stochastic model error component. The eff...
This work explores the potential of online parameter estimation as a technique for model error treat...
Ensemble Kalman Filters perform data assimilation by forming a background covariance matrix from an ...
International audienceSpecification and tuning of errors from dynamical models are important issues ...
A new methodology is proposed to estimate and account for systematic model error in linear filtering...
Abstract. A new methodology is proposed to estimate and account for systematic model error in linear...
We propose a method to account for model error due to unresolved scales in the context of the ensemb...
We propose a method to account for model error due to unresolved scales in the context of the ensemb...
The use of discrete-time stochastic parameterization to account for model error due to unresolved sc...
Stochastic parametrizations are increasingly used to represent the uncertainty associated with model...
The use of discrete-time stochastic parameterization to account for model error due to unresolved sc...
Data assimilation schemes are confronted with the presence of model errors arising from the imperfec...
Data assimilation schemes are confronted with the presence of model errors arising from the imperfec...
Abstract: Model uncertainty quantification is an essential component of effective data assimilation....
In recent years, data assimilation techniques have been applied to an increasingly wider specter of ...
Data assimilation schemes are confronted with the presence of model errors arising from the imperfec...
This work explores the potential of online parameter estimation as a technique for model error treat...
Ensemble Kalman Filters perform data assimilation by forming a background covariance matrix from an ...
International audienceSpecification and tuning of errors from dynamical models are important issues ...
A new methodology is proposed to estimate and account for systematic model error in linear filtering...
Abstract. A new methodology is proposed to estimate and account for systematic model error in linear...
We propose a method to account for model error due to unresolved scales in the context of the ensemb...
We propose a method to account for model error due to unresolved scales in the context of the ensemb...
The use of discrete-time stochastic parameterization to account for model error due to unresolved sc...
Stochastic parametrizations are increasingly used to represent the uncertainty associated with model...
The use of discrete-time stochastic parameterization to account for model error due to unresolved sc...
Data assimilation schemes are confronted with the presence of model errors arising from the imperfec...
Data assimilation schemes are confronted with the presence of model errors arising from the imperfec...
Abstract: Model uncertainty quantification is an essential component of effective data assimilation....
In recent years, data assimilation techniques have been applied to an increasingly wider specter of ...
Data assimilation schemes are confronted with the presence of model errors arising from the imperfec...
This work explores the potential of online parameter estimation as a technique for model error treat...
Ensemble Kalman Filters perform data assimilation by forming a background covariance matrix from an ...
International audienceSpecification and tuning of errors from dynamical models are important issues ...