4.7 Article

Extension of unbiased minimum-variance input and state estimation for systems with unknown inputs

Journal

AUTOMATICA
Volume 45, Issue 9, Pages 2149-2153

Publisher

PERGAMON-ELSEVIER SCIENCE LTD
DOI: 10.1016/j.automatica.2009.05.004

Keywords

Kalman filtering; Recursive state estimation; Unknown input estimation; Minimum-variance estimation

Funding

  1. National Science Council, Taiwan [NSC 97-2221-E-233-003]

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This paper extends the existing results on joint input and state estimation to systems with arbitrary unknown inputs. The objective is to derive an optimal filter in the general case where not only unknown inputs affect both the system state and the output, but also the direct feedthrough matrix has arbitrary rank. The paper extends both the results of Gillijns and De Moor [Gillijns, S., & De Moor, B. (2007b). Unbiased minimum-variance input and state estimation for linear discrete-time systems with direct feedthrough. Automatica, 43, 934-937] and Darouach, Zasadzinski, and Boutayeb [Darouach, M., Zasadzinski, M., & Boutayeb, M. (2003). Extension of minimum variance estimation for systems with unknown inputs. Automatica, 39, 867-876]. The resulting filter is an extension of the recursive three-step filter (ERTSF) and serves as a unified solution to the addressed unknown input filtering problem. The relationship between the ERTSF and the existing literature results is also addressed. (C) 2009 Elsevier Ltd. All rights reserved.

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