4.5 Article

Gaussian kernel quadrature Kalman filter

Journal

EUROPEAN JOURNAL OF CONTROL
Volume 71, Issue -, Pages -

Publisher

ELSEVIER
DOI: 10.1016/j.ejcon.2023.100805

Keywords

Nonlinear filtering; Gaussian filtering; Numerical approximation; Gaussian kernel quadrature rule

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The solution to practical nonlinear filtering problems relies on Gaussian filtering, which involves intractable integrals that are numerically approximated. This paper proposes a new quadrature rule based Gaussian filter, named Gaussian kernel quadrature Kalman filter (GKQKF), which improves the numerical approximation accuracy and estimation accuracy compared to existing Gaussian filters.
The solution to practical nonlinear filtering problems broadly relies on Gaussian filtering. The Gaussian fil-tering involves intractable integrals that are numerically approximated during the filtering. The literature witnesses various Gaussian filters with varying accuracy and computational demand, which are developed using different numerical approximation methods. Among them, the quadrature rule based Gaussian fil-ters are known for offering the best accuracy. They apply the univariate Gauss-Hermite quadrature rule for approximating the intractable integrals. For the practical multivariate filtering problems, they addi-tionally apply a univariate-to-multivariate conversion rule. This paper develops a new quadrature rule based Gaussian filter, named Gaussian kernel quadrature Kalman filter (GKQKF). The proposed GKQKF replaces the univariate Gauss-Hermite quadrature rule with the univariate Gaussian kernel quadrature rule and uses the product rule for extending the univariate quadrature rule in the multivariate domain. The Gaussian kernel quadrature rule improves the numerical approximation accuracy, which results in improved estimation accuracy of the proposed GKQKF over the existing quadrature rule based Gaussian filters. As the quadrature rule based Gaussian filters are the most accurate existing Gaussian filters, the proposed GKQKF outperforms the other existing Gaussian filters as well. The improved accuracy of the proposed GKQKF is validated for three different simulation problems.(c) 2023 European Control Association. Published by Elsevier Ltd. All rights reserved.

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