Ensemble methods such as the Ensemble Kalman Filter (EnKF) are widely used for data assimilation in large-scale geophysical applications, as for example in numerical weather prediction. There is a growing interest for physical models with higher and higher resolution, which brings new challenges for data assimilation techniques because of the presence of non-linear and non-Gaussian features that are not adequately treated by the EnKF. We propose two new localized algorithms based on the Ensemble Kalman Particle Filter, a hybrid method combining the EnKF and the Particle Filter (PF) in a way that maintains scalability and sample diversity. Localization is a key element of the success of EnKF in practice, but it is much more challenging to ap...
Data assimilation is the task of combining evolution models and observational data in order to produ...
Data assimilation (DA) has recently received growing interest by the hydrological modeling community...
Presentation given at the Workshop on Climate Prediction in the Atlantic-Arctic sector, 7th June 201...
Ensemble methods such as the Ensemble Kalman Filter (EnKF) are widely used for data assimilation in ...
Data assimilation is the mathematical discipline which gathers all the methods designed to improve t...
Localization techniques are commonly used in ensemble-based data assimilation (e.g., the Ensemble Ka...
Abstract. In this paper we examine the links between Ensemble Kalman Filters (EnKF) and Particle Fil...
Due to simplicity of implementation the ensemble based Kalman filter approach has been used for data...
Ensemble Kalman filter methods are typically used in combination with one of two localization techni...
Abstract. The ensemble Kalman filter (EnKF) is a recursive filter suitable for problems with a large...
Nonlinear data assimilation methods like particle filters aim to improve the numerical weather predi...
Data assimilation in high-resolution atmosphere or ocean models is complicated because of the nonlin...
International audienceIn this paper, two data assimilation methods based on sequential Monte Carlo s...
The ensemble Kalman filter (EnKF) is a reliable data assimilation tool for high-dimensional meteorol...
Data assimilation considers the problem of using a variety of data to calibrate model-based estimate...
Data assimilation is the task of combining evolution models and observational data in order to produ...
Data assimilation (DA) has recently received growing interest by the hydrological modeling community...
Presentation given at the Workshop on Climate Prediction in the Atlantic-Arctic sector, 7th June 201...
Ensemble methods such as the Ensemble Kalman Filter (EnKF) are widely used for data assimilation in ...
Data assimilation is the mathematical discipline which gathers all the methods designed to improve t...
Localization techniques are commonly used in ensemble-based data assimilation (e.g., the Ensemble Ka...
Abstract. In this paper we examine the links between Ensemble Kalman Filters (EnKF) and Particle Fil...
Due to simplicity of implementation the ensemble based Kalman filter approach has been used for data...
Ensemble Kalman filter methods are typically used in combination with one of two localization techni...
Abstract. The ensemble Kalman filter (EnKF) is a recursive filter suitable for problems with a large...
Nonlinear data assimilation methods like particle filters aim to improve the numerical weather predi...
Data assimilation in high-resolution atmosphere or ocean models is complicated because of the nonlin...
International audienceIn this paper, two data assimilation methods based on sequential Monte Carlo s...
The ensemble Kalman filter (EnKF) is a reliable data assimilation tool for high-dimensional meteorol...
Data assimilation considers the problem of using a variety of data to calibrate model-based estimate...
Data assimilation is the task of combining evolution models and observational data in order to produ...
Data assimilation (DA) has recently received growing interest by the hydrological modeling community...
Presentation given at the Workshop on Climate Prediction in the Atlantic-Arctic sector, 7th June 201...