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A direct self-constructing neural controller design for a class of nonlinear systems

Honggui Han, Wendong Zhou, Junfei Qiao, Gang Feng

    Research output: Journal Publications and ReviewsRGC 21 - Publication in refereed journalpeer-review

    Abstract

    This paper is concerned with the problem of adaptive neural control for a class of uncertain or ill-defined nonaffine nonlinear systems. Using a self-organizing radial basis function neural network (RBFNN), a direct self-constructing neural controller (DSNC) is designed so that unknown nonlinearities can be approximated and the closed-loop system is stable. The key features of the proposed DSNC design scheme can be summarized as follows. First, different from the existing results in literature, a self-organizing RBFNN with adaptive threshold is constructed online for DSNC to improve the control performance. Second, the control law and adaptive law for the weights of RBFNN are established so that the closed-loop system is stable in the term of Lyapunov stability theory. Third, the tracking error is guaranteed to uniformly asymptotically converge to zero with the aid of an additional robustifying control term. An example is finally given to demonstrate the design procedure and the performance of the proposed method. Simulation results reveal the effectiveness of the proposed method.
    Original languageEnglish
    Article number7045554
    Pages (from-to)1312-1322
    JournalIEEE Transactions on Neural Networks and Learning Systems
    Volume26
    Issue number6
    Online published19 Feb 2015
    DOIs
    Publication statusPublished - Jun 2015

    Research Keywords

    • Adaptive control
    • Asymptotically stability
    • Neural networks (NNs)
    • Nonlinear systems
    • Self-organizing

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