DocumentCode
26427
Title
Parametric Bayesian Filters for Nonlinear Stochastic Dynamical Systems: A Survey
Author
Stano, Pawel ; Lendek, Zsofia ; Braaksma, Jelmer ; Babuska, Robert ; de Keizer, Cees ; den Dekker, A.J.
Author_Institution
Delft Center for Syst. & Control, Delft Univ. of Technol., Delft, Netherlands
Volume
43
Issue
6
fYear
2013
fDate
Dec. 2013
Firstpage
1607
Lastpage
1624
Abstract
Nonlinear stochastic dynamical systems are commonly used to model physical processes. For linear and Gaussian systems, the Kalman filter is optimal in minimum mean squared error sense. However, for nonlinear or non-Gaussian systems, the estimation of states or parameters is a challenging problem. Furthermore, it is often required to process data online. Therefore, apart from being accurate, the feasible estimation algorithm also needs to be fast. In this paper, we review Bayesian filters that possess the aforementioned properties. Each filter is presented in an easy way to implement algorithmic form. We focus on parametric methods, among which we distinguish three types of filters: filters based on analytical approximations (extended Kalman filter, iterated extended Kalman filter), filters based on statistical approximations (unscented Kalman filter, central difference filter, Gauss-Hermite filter), and filters based on the Gaussian sum approximation (Gaussian sum filter). We discuss each of these filters, and compare them with illustrative examples.
Keywords
Gaussian processes; Kalman filters; approximation theory; iterative methods; statistical analysis; Gauss-Hermite filter; Gaussian sum approximation; Gaussian sum filter; Gaussian systems; algorithmic form; analytical approximations; central difference filter; extended Kalman filter; iterated extended Kalman filter; linear systems; minimum mean squared error sense; nonGaussian systems; nonlinear stochastic dynamical systems; nonlinear systems; parameter estimation; parametric Bayesian filters; parametric methods; state estimation; statistical approximations; unscented Kalman filter; Approximation algorithms; Approximation methods; Estimation; Kalman filters; Mathematical model; Noise; Random variables; Analysis of variance; Bayesian methods; nonlinear filters; parametric methods;
fLanguage
English
Journal_Title
Cybernetics, IEEE Transactions on
Publisher
ieee
ISSN
2168-2267
Type
jour
DOI
10.1109/TSMCC.2012.2230254
Filename
6419797
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