JOURNAL ARTICLE

Parameter Estimation of Nonlinear Systems by Using Quadrature Kalman Filter

Jiro MorimotoMakoto HorioTsuyoshi HiranoToshiaki Tabuchi

Year: 2009 Journal:   Proceedings of the ISCIE International Symposium on Stochastic Systems Theory and its Applications Vol: 2009 (0)Pages: 117-120

Abstract

In an estimation problem of the state or parameters in nonlinear systems, it is required to linearlize the original nonlinear system model. More recently, a statistical linear regression(SLR) method has been proposed for the linearlization. This technique is superior to Taylor series expansion-based ones.In this report, a method of treatment for the linearlization error arisen in the SLR linearization is proposed. Concretely, it is treated as a part of the state of the systems.A numerical experiment indicates acceptable performance of proposed method.

Keywords:
Linearization Taylor series Nonlinear system Kalman filter Extended Kalman filter Quadrature (astronomy) Control theory (sociology) Series (stratigraphy) Computer science Mathematics Applied mathematics Engineering Artificial intelligence Control (management) Mathematical analysis

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