Command filter-based adaptive neural tracking control of nonlinear systems with multiple actuator constraints and disturbances

Yinguang Li, Jianhua Zhang, Yang Li
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Abstract

In this paper, the adaptive practical finite-time tracking control problem for a class of strictly feedback nonlinear systems with multiple actuator constraints is investigated using backstepping techniques and practical finite-time stability theory. The effects of deadband and saturated nonlinear constraints on the controller design of nonlinear systems are addressed by the equivalent transformation method. The problem of complexity explosion due to the derivatives of virtual control signals is solved by using the virtual control signals as inputs to the command filters and using the outputs of the command filters to perform the corresponding control tasks. An adaptive neural network tracking backstepping control strategy based on the command filter technique and the backstepping design algorithm is proposed by approximating an unknown nonlinear function using a neural network. The control strategy ensures the boundedness of all variables in the closed-loop system, and the output tracking error fluctuates in a small region near the origin. Finally, simulations verify the effectiveness of the control strategy designed in this paper.
基于指令滤波器的多执行器约束和干扰非线性系统自适应神经跟踪控制
本文利用反步进技术和实用有限时间稳定性理论,研究了一类具有多个执行器约束的严格反馈非线性系统的自适应实用有限时间跟踪控制问题。通过等效变换方法解决了死区和饱和非线性约束对非线性系统控制器设计的影响。通过使用虚拟控制信号作为指令滤波器的输入,并使用指令滤波器的输出来执行相应的控制任务,解决了由于虚拟控制信号的导数而导致的复杂性爆炸问题。通过使用神经网络逼近未知非线性函数,提出了一种基于指令滤波器技术和反步进设计算法的自适应神经网络跟踪反步进控制策略。该控制策略确保了闭环系统中所有变量的有界性,输出跟踪误差在原点附近的小区域内波动。最后,模拟验证了本文设计的控制策略的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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