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Original Articles

A Note on the Particle Filter with Posterior Gaussian Resampling

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Pages 456-460 | Received 22 Feb 2005, Accepted 06 Feb 2006, Published online: 15 Dec 2016
 

Abstract

Particle filter (PF) is a fully non-linear filter with Bayesian conditional probability estimation, compared here with the well-known ensemble Kalman filter (EnKF). A Gaussian resampling (GR) method is proposed to generate the posterior analysis ensemble in an effective and efficient way. The Lorenz model is used to test the proposed method. The PF with Gaussian resampling (PFGR) can approximate more accurately the Bayesian analysis. The present work demonstrates that the proposed PFGR possesses good stability and accuracy and is potentially applicable to large-scale data assimilation problems.