z-logo
open-access-imgOpen Access
Efficient Kernel-Based Ensemble Gaussian Mixture Filtering
Author(s) -
Bo Liu,
Boujemaa AitElFquih,
Ibrahim Hoteit
Publication year - 2016
Publication title -
monthly weather review
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 1.862
H-Index - 179
eISSN - 1520-0493
pISSN - 0027-0644
DOI - 10.1175/mwr-d-14-00292.1
Subject(s) - ensemble kalman filter , resampling , mathematics , particle filter , gaussian , kernel (algebra) , algorithm , data assimilation , posterior probability , covariance , variable kernel density estimation , importance sampling , kalman filter , monte carlo method , estimator , computer science , bayesian probability , statistics , kernel method , extended kalman filter , artificial intelligence , support vector machine , physics , quantum mechanics , combinatorics , meteorology
We consider the Bayesian filtering problem for data assimilation following the kernel-based ensemble Gaussian-mixture filtering (EnGMF) approach introduced by Anderson and Anderson (1999). In this approach, the posterior distribution of the system state is propagated with the model using the ensemble Monte Carlo method, providing a forecast ensemble that is then used to construct a prior Gaussian-mixture (GM) based on the kernel density estimator. This results in two update steps: a Kalman filter (KF)-like update of the ensemble members and a particle filter (PF)-like update of the weights, followed by a resampling step to start a new forecast cycle. After formulating EnGMF for any observational operator, we analyze the influence of the bandwidth parameter of the kernel function on the covariance of the posterior distribution. We then focus on two aspects: i) the efficient implementation of EnGMF with (relatively) small ensembles, where we propose a new deterministic resampling strategy preserving the first two moments of the posterior GM to limit the sampling error; and ii) the analysis of the effect of the bandwidth parameter on contributions of KF and PF updates and on the weights variance. Numerical results using the Lorenz-96 model are presented to assess the behavior of EnGMF with deterministic resampling, study its sensitivity to different parameters and settings, and evaluate its performance against ensemble KFs. The proposed EnGMF approach with deterministic resampling suggests improved estimates in all tested scenarios, and is shown to require less localization and to be less sensitive to the choice of filtering parameters

The content you want is available to Zendy users.

Already have an account? Click here to sign in.
Having issues? You can contact us here