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SVR learning-based spatiotemporal fuzzy logic controller for nonlinear spatially distributed dynamic systems

Xian-Xia Zhang, Ye Jiang, Han-Xiong Li, Shao-Yuan Li

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

    Abstract

    A data-driven 3-D fuzzy-logic controller (3-D FLC) design methodology based on support vector regression (SVR) learning is developed for nonlinear spatially distributed dynamic systems. Initially, the spatial information expression and processing as well as the fuzzy linguistic expression and rule inference of a 3-D FLC are integrated into spatial fuzzy basis functions (SFBFs), and then the 3-D FLC can be depicted by a three-layer network structure. By relating SFBFs of the 3-D FLC directly to spatial kernel functions of an SVR, an equivalence relationship of the 3-D FLC and the SVR is established, which means that the 3-D FLC can be designed with the help of the SVR learning. Subsequently, for an easy implementation, a systematic SVR learning-based 3-D FLC design scheme is formulated. In addition, the universal approximation capability of the proposed 3-D FLC is presented. Finally, the control of a nonlinear catalytic packed-bed reactor is considered as an application to demonstrate the effectiveness of the proposed 3-D FLC. © 2013 IEEE.
    Original languageEnglish
    Article number6553210
    Pages (from-to)1635-1647
    JournalIEEE Transactions on Neural Networks and Learning Systems
    Volume24
    Issue number10
    DOIs
    Publication statusPublished - 2013

    Research Keywords

    • Fuzzy rule extraction
    • spatial fuzzy basis function
    • spatiotemporal fuzzy logic controller
    • SVR learning

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