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Original Articles

model reduction for linear parameter-varying systems with distributed delay

, , &
Pages 408-422 | Received 10 Jun 2007, Accepted 24 Mar 2008, Published online: 23 Feb 2009
 

Abstract

This paper is concerned with the ℋ model reduction for linear parameter-varying (LPV) systems with both discrete and distributed delays. For a given stable system, our attention is focused on the construction of reduced-order models, which approximate the original system well in an ℋ norm sense. First, a sufficient condition is proposed for the asymptotic stability with an ℋ performance of the error system by using the parameter-dependent Lyapunov functional method. Then, the decoupling technique is applied, such that there does not exist any product term between the Lyapunov matrices and the system matrices in the parametrised linear matrix inequality (PLMI) constraints; thus a new sufficient condition is obtained. Based on the new condition, two different approaches are developed to solve the model reduction problem. One is the convex linearisation approach and the other is the projection approach. Finally, a numerical example is provided to demonstrate the effectiveness of the proposed design method.

Acknowledgements

The authors wish to thank the associate editor and the reviewers for their valuable comments and suggestions, which have helped improve the presentation of the paper.

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