A Robust Fault Detection method for Uncertain Systems with Modelling Errors

모델링 오차를 갖는 불확정 시스템에서의 견실한 이상 검출기

  • 권오주 (인하대 공대 전기공학과) ;
  • 이명의 (인하대 대학원 전기공학과)
  • Published : 1990.07.01

Abstract

This paper deals with the fault detection problem in uncertain linear/non-linear systems having both undermodelling and noise. A robust fault detection method is presented which accounts for the effects of noise, model mismatch and nonlinearities. The basic idea is to embed the unmodelled dynamics in a stochastic process and to use the nominal model with a predetermined fixed denominator. This allows the input /output relationship to be represented as a linear function of the system parameters and also facilitate the quatification of the effect of noise, model mismatch and linearization errors on parameter estimation by the Bayesian method. Comparisons are made via simulations with traditional fault detection methods which do not account for model mismatch or linearization errors. The new method suggested in this paper is shown to have a marked improvement over traditional methods on a number of simulations, which is a consequence of the fact that the new method explicitly for the effects of undermodelling and linearization errors.

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