Genetic adaptive state estimation with missing input/output data

Abstract This paper presents the application of a genetic algorithm to state estimation for systems subject to randomly missing input/output data. By modelling the missing data in inputs and outputs with binomial processes, a modified Luenberger observer using the reconstructed data is employed for...

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Bibliographic Details
Published inProceedings of the Institution of Mechanical Engineers. Part I, Journal of systems and control engineering Vol. 224; no. 5; pp. 611 - 617
Main Authors Fang, H, Wu, J, Shi, Y
Format Journal Article
LanguageEnglish
Published London, England SAGE Publications 01.08.2010
SAGE PUBLICATIONS, INC
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Summary:Abstract This paper presents the application of a genetic algorithm to state estimation for systems subject to randomly missing input/output data. By modelling the missing data in inputs and outputs with binomial processes, a modified Luenberger observer using the reconstructed data is employed for estimation. The proposed algorithm consists of two procedures: 1) Preprocessing the missing input/output data by reconstruction based on autoregressive (AR) modelling; and 2) implementing the genetic algorithm to perform on-line adaptive state estimation from reconstructed data. The effectiveness of the proposed algorithm is verified by numerical simulation.
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ISSN:0959-6518
2041-3041
DOI:10.1243/09596518JSCE888