开关磁阻电机驱动电流跟踪控制的q -学习调度

Hamad Alharkan, P. Shamsi, Sepehr Saadatmand, M. Ferdowsi
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引用次数: 3

摘要

提出了一种基于强化学习的开关磁阻电机电流控制新方法。所提出的电流控制器是基于一种新的定时q学习。针对SRM驱动未知动态系统的无限视界线性二次跟踪问题,提出了一种新的基于q -学习算法的控制方案。SRM驱动器的参考电流发生器已被纳入增强系统。在没有SRM系统动力学和参考电流发生器数据的情况下,采用q -学习算法求解代数Riccati方程(ARE)的最优解。在引入控制方案后,设计了一个仿真来评估所提出的控制器的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Q-Learning Scheduling for Tracking Current Control of Switched Reluctance Motor Drives
This paper presents a novel technique for controlling the current of Switched Reluctance Motor (SRM) drives based on reinforcement learning. The proposed current controller is based on a new scheduled Q-learning. Solving the infinite horizon linear quadratic tracker (LQT) problem for an unknown dynamic system of SRM drive, a new control scheme relying on the Q-learning algorithm is introduced for that purpose. The reference current generator of the SRM drive has been incorporated into the augmented system. A Q-learning algorithm is implemented to obtain the optimum solution of Algebraic Riccati Equation (ARE) with the absence of any data about system dynamics of SRM or the reference current generator. Additionally, a scheduling mechanism switches between Q matrices to allow for a nonlinear control using a table of Q-learning cores. After the introduction of the control scheme, a simulation has been designed to evaluate the performance of the proposed controller.
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