Data assimilation has been widely applied in atmospheric and oceanic forecasting systems and particle filters (PFs) have unique advantages in dealing with nonlinear data assimilation. They have been applied to many scientific fields, but their application in geoscientific systems is limited because of their inefficiency in standard settings systems. To address these issues, this paper further refines the statistical observation and localization scheme which used in the classic localized equivalent-weights particle filter with statistical observation (LEWPF-Sobs). The improved method retains the advantages of equivalent-weights particle filter (EWPF) and the localized particle filter (LPF), while further refinements incorporate the effect of...
The localized particle filter (LPF) is a recent advance in ensemble data assimilation for numerical ...
Data assimilation in high-resolution atmosphere or ocean models is complicated because of the nonlin...
Particle Filters are Monte-Carlo methods used for Bayesian Inference. Bayesian Inference is based on...
Nonlinear data assimilation methods like particle filters aim to improve the numerical weather predi...
Particle filters contain the promise of fully nonlinear data assimilation. They have been applied in...
This paper investigates the use of a particle filter for data assimilation with a full scale coupled...
The data assimilation problem consists in finding a way to use observations within a model to improv...
Particle filters are a class of data-assimilation schemes which, unlike current operational data-ass...
International audienceThis paper introduces a new approximate solution of the optimal nonlinear filt...
Particle filters contain the promise of fully nonlinear data assimilation. They have been applied in...
Data assimilation methods that work in high dimensional systems are crucial to many areas of the geo...
Ensemble methods such as the Ensemble Kalman Filter (EnKF) are widely used for data assimilation in ...
International audienceIn this paper, two data assimilation methods based on sequential Monte Carlo s...
Particle filters contain the promise of fully nonlinear data assimilation. They have been applied i...
This book contains two review articles on nonlinear data assimilation that deal with closely related...
The localized particle filter (LPF) is a recent advance in ensemble data assimilation for numerical ...
Data assimilation in high-resolution atmosphere or ocean models is complicated because of the nonlin...
Particle Filters are Monte-Carlo methods used for Bayesian Inference. Bayesian Inference is based on...
Nonlinear data assimilation methods like particle filters aim to improve the numerical weather predi...
Particle filters contain the promise of fully nonlinear data assimilation. They have been applied in...
This paper investigates the use of a particle filter for data assimilation with a full scale coupled...
The data assimilation problem consists in finding a way to use observations within a model to improv...
Particle filters are a class of data-assimilation schemes which, unlike current operational data-ass...
International audienceThis paper introduces a new approximate solution of the optimal nonlinear filt...
Particle filters contain the promise of fully nonlinear data assimilation. They have been applied in...
Data assimilation methods that work in high dimensional systems are crucial to many areas of the geo...
Ensemble methods such as the Ensemble Kalman Filter (EnKF) are widely used for data assimilation in ...
International audienceIn this paper, two data assimilation methods based on sequential Monte Carlo s...
Particle filters contain the promise of fully nonlinear data assimilation. They have been applied i...
This book contains two review articles on nonlinear data assimilation that deal with closely related...
The localized particle filter (LPF) is a recent advance in ensemble data assimilation for numerical ...
Data assimilation in high-resolution atmosphere or ocean models is complicated because of the nonlin...
Particle Filters are Monte-Carlo methods used for Bayesian Inference. Bayesian Inference is based on...