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Robust Adaptive Neural-Net Observer for Nonlinear Systems Using Filtering of Output Estimation Error

  • 박장현 (고려대학교 전기.전자.전파공학부 자동제어연구실) ;
  • 윤필상 (고려대학교 전기.전자.전파공학부 자동제어연구실) ;
  • 박귀태 (고려대학교 전기.전자.전파공학부 자동제어연구실)
  • 발행 : 2001.07.18

초록

This paper describes the design of a robust adaptive neural-net(NN) observer for uncertain nonlinear dynamical system. The Lyapunov synthesis approach is used to guarantee a uniform ultimate boundedness property of the state estimation error, as well as of all other signals in the closed-loop system. Especially, for reducing the dynamic oder of the observer, we propose a new method in which no strictly positive real(SPR) condition is needed with on-line estimation of weights of the NNs. No a priori knowledge of an upper bounds on the uncertain terms is required. The theoretical results are illustrated through a simulation example.

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