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Adaptive decentralized fixed‐time neural control for constrained strong interconnected nonlinear systems with input quantization

Fansen WeiCollege of Control Science and Engineering Bohai University Jinzhou Liaoning ChinaLiang ZhangCollege of Control Science and Engineering Bohai University Jinzhou Liaoning ChinaBen NiuFaculty of Electronic Information and Electrical Engineering Dalian University of Technology Dalian Liaoning ChinaGuangdeng ZongSchool of Control Science and Engineering Tiangong University Tianjin China
2024en
ABI

Abstract

Abstract This article investigates the problem of adaptive decentralized fixed‐time tracking control for strong interconnected nonlinear systems with full‐state constraints and input quantization. During the control design process, the assumption that the strong interconnection terms are bounded is removed via an inherent feature of the Gaussian function in neural networks. Unlike presvious nonlinear state‐dependent function (NSDF) that can only handle a single constraint, a novel form of NSDF is introduced to cope with more types of state constraints in this article. Meanwhile, the introduced NSDF is still available when the system states are unconstrained. Simultaneously, quantized input is directly handled by utilizing the intrinsic characteristics of the hysteresis quantizer. Then, based on the Lyapunov stability theory, all signals in the closed‐loop systems and tracking error are guaranteed to be bounded within fixed‐time. Finally, the feasibility of the proposed control scheme is illustrated by simulation results.

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