强化学习
容错
计算机科学
人工神经网络
非线性系统
控制理论(社会学)
多输入多输出
断层(地质)
控制重构
离散时间和连续时间
控制器(灌溉)
数学
控制(管理)
人工智能
频道(广播)
分布式计算
物理
量子力学
计算机网络
统计
地震学
农学
生物
嵌入式系统
地质学
作者
Zhanshan Wang,Lei Liu,Huaguang Zhang,Geyang Xiao
标识
DOI:10.1109/tsmc.2015.2478885
摘要
This paper concentrates on the reinforcement learning (RL)-based fault-tolerant control (FTC) problem for a class of multiple-input-multiple-output (MIMO) nonlinear discrete-time systems. Both incipient faults and abrupt faults are taken into account. Based on the approximation ability of neural networks (NNs), an RL algorithm is incorporated into the FTC strategy, in which an action network is developed to generate the optimal control signal and a critic network is used to approximate the novel cost function, respectively. Compared with the existing results, a novel fault tolerant controller is proposed based on an RL method to reduce a long-term performance index after a fault occurs. The meaning of minimizing the performance index after a fault occurs in an MIMO system is that waste will be decreased and energy will be saved. Note that the weights of NNs are adjusted online rather than offline. Then, it is proven that the adaptive parameters, tracking errors, and optimal control signals are uniformly bounded even in the presence of the unknown fault dynamics. Finally, a numerical simulation is provided to show the effectiveness of the proposed FTC approach.
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