Reinforcement learning-based adaptive tracking control for mismatched non-affine nonlinear systems with coupled uncertainties

Zheng Wang, Yuxuan Chang, Jiali Liu
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Abstract

This paper studies a reinforcement learning-based adaptive non-affine tracking control method for a class of uncertain mismatched non-affine nonlinear systems. The considered system is not only affected by external mismatched disturbances and internal uncertainties, but also influenced by the non-affine control structures. Firstly, an auxiliary integral system is developed for the purpose of isolating the non-affine control input. Secondly, by designing the actor-critic networks to evaluate the system control performance and generate the reinforcement signal, the unknown internal uncertainties can be handled. Thirdly, based on the output of reinforcement learning network, several disturbance compensation laws are constructed to address the adverse impact of matched and mismatched disturbances. As a result, a novel intelligent adaptive non-affine controller is proposed by integrating actor-critic reinforcement learning framework, disturbance compensation and adaptive laws. It has been proved that closed-loop system are stable and the tracking errors are bounded. The numerical simulation results show the effectiveness and superiority of the proposed method.
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基于强化学习的自适应跟踪控制,适用于具有耦合不确定性的不匹配非参数非线性系统
本文针对一类不确定的不匹配非仿射非线性系统,研究了一种基于强化学习的自适应非仿射跟踪控制方法。所考虑的系统不仅受到外部不匹配干扰和内部不确定性的影响,还受到非参数控制结构的影响。首先,为了隔离非传真控制输入,开发了一个辅助积分系统。其次,通过设计行为批判网络来评估系统控制性能并生成增强信号,从而处理未知的内部不确定性。第三,根据强化学习网络的输出,构建若干干扰补偿法则,以解决匹配和不匹配干扰的不利影响。因此,通过集成行为批判强化学习框架、干扰补偿和自适应法则,提出了一种新型智能自适应非仿真控制器。实验证明,闭环系统是稳定的,跟踪误差是有界的。数值仿真结果表明了所提方法的有效性和优越性。
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来源期刊
CiteScore
3.50
自引率
18.80%
发文量
99
审稿时长
4.2 months
期刊介绍: Systems and control studies provide a unifying framework for a wide range of engineering disciplines and industrial applications. The Journal of Systems and Control Engineering refleSystems and control studies provide a unifying framework for a wide range of engineering disciplines and industrial applications. The Journal of Systems and Control Engineering reflects this diversity by giving prominence to experimental application and industrial studies. "It is clear from the feedback we receive that the Journal is now recognised as one of the leaders in its field. We are particularly interested in highlighting experimental applications and industrial studies, but also new theoretical developments which are likely to provide the foundation for future applications. In 2009, we launched a new Series of "Forward Look" papers written by leading researchers and practitioners. These short articles are intended to be provocative and help to set the agenda for future developments. We continue to strive for fast decision times and minimum delays in the production processes." Professor Cliff Burrows - University of Bath, UK This journal is a member of the Committee on Publication Ethics (COPE).cts this diversity by giving prominence to experimental application and industrial studies.
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