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Adaptive T-S fuzzy controller using reinforcement learning based on Lyapunov stability

机译:基于Lyapunov稳定性的强化学习自适应T-S模糊控制器。

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In this paper, an adaptive Takagi-Sugeno (T-S) fuzzy controller based on reinforcement learning for controlling the nonlinear dynamical systems is proposed. The parameters of the T-S fuzzy system are learned using the reinforcement learning based on the actor-critic method. This on-line learning algorithm improves the controller performance over the time, which it learns from its own faults through the reinforcement signal from the external environment and tries to reinforce the T-S fuzzy system parameters to converge. The updating parameters are developed using the Lyapunov stability criterion. The proposed controller is faster in learning than the T-S fuzzy that parameters learned using the gradient descent method under the same conditions. Moreover, it is able to handle the load changes and the system uncertainties. The test is carried out based on two mathematical models. In addition, the proposed controller is applied practically for controlling a direct current (DC) shunt machine. The results indicate that the response of the proposed controller has a good performance compared with other controllers. (C) 2018 The Franklin Institute. Published by Elsevier Ltd. All rights reserved.
机译:提出了一种基于强化学习的非线性系统动力学自适应自适应Takagi-Sugeno(T-S)模糊控制器。使用基于行为者批判法的强化学习来学习T-S模糊系统的参数。这种在线学习算法可随着时间的推移提高控制器性能,通过从外部环境中获得的增强信号从自身的故障中学习,并尝试增强T-S模糊系统参数使其收敛。使用Lyapunov稳定性准则开发更新参数。所提出的控制器在学习中比在相同条件下使用梯度下降法学习的参数的T-S模糊更快。而且,它能够处理负载变化和系统不确定性。该测试基于两个数学模型进行。另外,所提出的控制器实际用于控制直流(DC)并联机器。结果表明,与其他控制器相比,该控制器的响应性能良好。 (C)2018富兰克林研究所。由Elsevier Ltd.出版。保留所有权利。

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