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Robust Filtering via Semidefinite Programming with...
Journal article

Robust Filtering via Semidefinite Programming with Applications to Target Tracking

Abstract

In this paper we propose a novel finite-horizon, discrete-time, time-varying filtering method based on the robust semidefinite programming (SDP) technique. The proposed method provides robust performance in the presence of norm-bounded parameter uncertainties in the system model. The robust performance of the proposed method is achieved by minimizing an upper bound on the worst-case varianceof the estimation error for all admissible systems. Our method is recursive and computationally efficient. In our simulations, the new method provides superior performance to some of the existing robust filtering approaches. In particular, when applied to the problem of target tracking, the new method has led to a significant improvement in tracking performance. Our work shows that the robust SDP technique and the interior point algorithms can bring substantial benefits to practically important engineering problems.

Authors

Li L; Luo Z-Q; Davidson TN; Wong KM; Boss E

Journal

SIAM Journal on Optimization, Vol. 12, No. 3, pp. 740–755

Publisher

Society for Industrial & Applied Mathematics (SIAM)

Publication Date

January 1, 2002

DOI

10.1137/s1052623499358586

ISSN

1052-6234

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