Robust Quasi-LPV Control Based on Neural State Space Models

Jan Dimon Bendtsen, Klaus Trangbæk

Research output: Contribution to journalJournal articleCommunication

20 Citations (Scopus)

Abstract

In this paper we derive a synthesis result for robust LPV output feedback controllers for nonlinear systems modelled by neural state space models. This result is achieved by writing the neural state space model on a linear fractional transformation form in a non-conservative way, separating the system description into a linear part and a nonlinear part. Linear parameter-varying control synthesis methods are then applied to design a nonlinear control law for this system. Since the model is assumed to have been identified from input-output measurement data only, it must be expected that there is some uncertainty on the identified nonlinearities. The control law is therefore made robust to noise perturbations. After formulating the controller synthesis as a set of LMIs with added constraints, some implementation issues are addressed and a simulation example is presented.
Original languageDanish
JournalIEEE Transactions on Neural Networks
Pages (from-to)355-368
ISSN1045-9227
Publication statusPublished - 2002

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