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Fault-tolerant optimised tracking control for unknown discrete-time linear systems using a combined reinforcement learning and residual compensation methodology

机译:结合增强学习和残差补偿方法的未知离散时间线性系统的容错优化跟踪控制

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摘要

This paper considers the fault-tolerant optimised tracking control (FTOTC) problem for unknown discrete-time linear system. A research scheme is proposed on the basis of data-based parity space identification, reinforcement learning and residual compensation techniques. The main characteristic of this research scheme lies in the parity-space-identification-based simultaneous tracking control and residual compensation. The specific technical line consists of four main contents: apply subspace aided method to design observer-based residual generator; use reinforcement Q-learning approach to solve optimised tracking control policy; rely on robust H theory to achieve noise attenuation; adopt fault estimation triggered by residual generator to perform fault compensation. To clarify the design and implementation procedures, an integrated algorithm is further constructed to link up these four functional units. The detailed analysis and proof are subsequently given to explain the guaranteed FTOTC performance of the proposed conclusions. Finally, a case simulation is provided to verify its effectiveness.
机译:本文考虑了未知离散线性系统的容错优化跟踪控制(FTOTC)问题。在基于数据的奇偶空间识别,强化学习和残差补偿技术的基础上,提出了一种研究方案。该研究方案的主要特点在于基于奇偶空间识别的同时跟踪控制和残差补偿。具体技术路线包括四个主要内容:应用子空间辅助方法设计基于观察者的残差生成器;使用强化Q学习方法来解决优化的跟踪控制策略;依靠鲁棒的H理论来实现噪声衰减;采用残差发电机触发的故障估计进行故障补偿。为了阐明设计和实现过程,进一步构造了集成算法来链接这四个功能单元。随后给出详细的分析和证明,以解释所提出结论的保证的FTOTC性能。最后,提供了一个案例模拟来验证其有效性。

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