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基于指令滤波器的具有速率相关滞后和全状态约束的多输入多输出非线性系统的事件触发自适应神经控制

Event-Triggered Adaptive Neural Control for MIMO Nonlinear Systems With Rate-Dependent Hysteresis and Full-State Constraints via Command Filter.

作者信息

Wang Xiaoling, Liu Jiapeng, Wang Qing-Guo, Yu Jinpeng

出版信息

IEEE Trans Cybern. 2024 Aug;54(8):4867-4872. doi: 10.1109/TCYB.2023.3312047. Epub 2024 Jul 18.

Abstract

This article presents an event-triggered adaptive acrlong NN command-filtered control for a class of multi-input and multi-output (MIMO) nonlinear systems with unknown rate-dependent hysteresis in the actuator and the constraints on full states. The acrlong ETM is used to reduce the communication frequency between controller and actuator. The command filter technique is first employed to solve the dilemma between the nondifferentiable control signal at triggering instants and rate-dependent hysteresis input premise while avoiding the "explosion of complexity" problem. During the backstepping design, the barrier Lyapunov functions are utilized to guarantee that system states will stay in certain regions and the unknown nonlinear items are approximated by adaptive neural networks. The compensating signals are constructed to eliminate filtering errors. The estimates of unknown hysteresis parameters are updated by adaptive laws. The stability analysis is given and the effectiveness of the proposed method is verified by simulation.

摘要

本文针对一类在执行器中具有未知速率相关滞后且全状态受约束的多输入多输出(MIMO)非线性系统,提出了一种事件触发自适应acrlong神经网络命令滤波控制方法。采用acrlong事件触发机制(ETM)来降低控制器与执行器之间的通信频率。首次运用命令滤波技术来解决触发时刻不可微控制信号与速率相关滞后输入前提之间的困境,同时避免“维度灾难”问题。在反步设计过程中,利用障碍Lyapunov函数保证系统状态将保持在特定区域,并通过自适应神经网络逼近未知非线性项。构造补偿信号以消除滤波误差。通过自适应律更新未知滞后参数的估计值。给出了稳定性分析,并通过仿真验证了所提方法的有效性。

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