Nonlinear recurrent neural networks for finite-time solution of general time-varying linear matrix equations

Lin Xiao, Bolin Liao, Shuai Li, Ke Chen

    Research output: Contribution to journalArticleScientificpeer-review

    152 Citations (Scopus)

    Abstract

    In order to solve general time-varying linear matrix equations (LMEs) more efficiently, this paper proposes two nonlinear recurrent neural networks based on two nonlinear activation functions. According to Lyapunov theory, such two nonlinear recurrent neural networks are proved to be convergent within finite-time. Besides, by solving differential equation, the upper bounds of the finite convergence time are determined analytically. Compared with existing recurrent neural networks, the proposed two nonlinear recurrent neural networks have a better convergence property (i.e., the upper bound is lower), and thus the accurate solutions of general time-varying LMEs can be obtained with less time. At last, various different situations have been considered by setting different coefficient matrices of general time-varying LMEs and a great variety of computer simulations (including the application to robot manipulators) have been conducted to validate the better finite-time convergence of the proposed two nonlinear recurrent neural networks.

    Original languageEnglish
    Pages (from-to)102-113
    Number of pages12
    JournalNeural Networks
    Volume98
    Early online date2 Dec 2017
    DOIs
    Publication statusPublished - Feb 2018
    Publication typeA1 Journal article-refereed

    Keywords

    • Finite-time convergence
    • General time-varying linear matrix equations
    • Nonlinear activation functions
    • Nonlinear recurrent neural networks

    Publication forum classification

    • Publication forum level 2

    ASJC Scopus subject areas

    • Cognitive Neuroscience
    • Artificial Intelligence

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