We present mathematical arguments and experimental evidence that suggest that Gaussian approximations of posterior distributions are appropriate even if the physical system under consideration is nonlinear. The reason for this is a regularizing effect of the observations that can turn multi-modal prior distributions into nearly Gaussian posterior distributions. This has important ramifications on data assimilation (DA) algorithms in numerical weather prediction because the various algorithms (ensemble Kalman filters/smoothers, variational methods, particle filters (PF)/smoothers (PS)) apply Gaussian approximations to different distributions, which leads to different approximate posterior distributions, and, subsequently, different degrees o...
Particle filter (PF) is a fully non-linear filter with Bayesian conditional probability estimation, ...
Non-Gaussian forecast error is a challenge for ensemble-based data assimilation (DA), particularly f...
This review discusses recent advances in geophysical data assimilation beyond Gaussian statistical m...
We present mathematical arguments and experimental evidence that suggest that Gaussian approximation...
We present mathematical arguments and experimental evidence that suggest that Gaussian approximation...
We present mathematical arguments and experimental evidence that suggest that Gaussian approximation...
Data assimilation leads naturally to a Bayesian formulation in which the posterior probability distr...
Data assimilation leads naturally to a Bayesian formulation in which the posterior probability distr...
Particle Filters are Monte-Carlo methods used for Bayesian Inference. Bayesian Inference is based on...
Data assimilation combines information from models, measurements, and priors to obtain improved esti...
In sequential data assimilation problems, the Kalman filter (KF) is optimal for linear Gaussian mode...
Particle Filters are Monte-Carlo methods used for Bayesian Inference. Bayesian Inference is based on...
Particle filters are a class of data-assimilation schemes which, unlike current operational data-ass...
From the point of view of mathematical modeling, a data assimilation system consists in a statistica...
Nonlinear data assimilation methods like particle filters aim to improve the numerical weather predi...
Particle filter (PF) is a fully non-linear filter with Bayesian conditional probability estimation, ...
Non-Gaussian forecast error is a challenge for ensemble-based data assimilation (DA), particularly f...
This review discusses recent advances in geophysical data assimilation beyond Gaussian statistical m...
We present mathematical arguments and experimental evidence that suggest that Gaussian approximation...
We present mathematical arguments and experimental evidence that suggest that Gaussian approximation...
We present mathematical arguments and experimental evidence that suggest that Gaussian approximation...
Data assimilation leads naturally to a Bayesian formulation in which the posterior probability distr...
Data assimilation leads naturally to a Bayesian formulation in which the posterior probability distr...
Particle Filters are Monte-Carlo methods used for Bayesian Inference. Bayesian Inference is based on...
Data assimilation combines information from models, measurements, and priors to obtain improved esti...
In sequential data assimilation problems, the Kalman filter (KF) is optimal for linear Gaussian mode...
Particle Filters are Monte-Carlo methods used for Bayesian Inference. Bayesian Inference is based on...
Particle filters are a class of data-assimilation schemes which, unlike current operational data-ass...
From the point of view of mathematical modeling, a data assimilation system consists in a statistica...
Nonlinear data assimilation methods like particle filters aim to improve the numerical weather predi...
Particle filter (PF) is a fully non-linear filter with Bayesian conditional probability estimation, ...
Non-Gaussian forecast error is a challenge for ensemble-based data assimilation (DA), particularly f...
This review discusses recent advances in geophysical data assimilation beyond Gaussian statistical m...