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Reinforcement learning approach for controlling power system stabilizers

机译:控制电力系统稳定器的强化学习方法

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In this paper, a framework for applying reinforcement learning (RL) to the design and control of power system stabilizers (PSSs) is proposed. A near-optimal coordinated design for several PSSs is achieved using reinforcement learning. The objective of the control policy is to enhance the stability of a multi-machine power system by increasing the damping ratio of the least-damped modes. An RL method called Q-learning is applied to find a near-optimal control policy for controlling PSSs. With this control policy, the agent can change the gain of PSSs automatically in such a way that a predefined goal is nearly always satisfied. A modified Q-learning algorithm is proposed to enhance the convergence speed of the conventional algorithm toward a near-optimal policy. This is achieved by using selective initial state criteria instead of choosing the initial state randomly in each episode. The validity of the proposed method has been tested on a two-area, four-machine power system using nonlinear time-domain simulation under severe disturbances.
机译:本文提出了一种将强化学习(RL)应用于电力系统稳定器(PSS)的设计和控制的框架。使用强化学习,可以为多个PSS提供接近最佳的协调设计。控制策略的目标是通过增加最小阻尼模式的阻尼比来提高多机电源系统的稳定性。应用一种称为Q学习的RL方法来找到用于控制PSS的近似最优控制策略。使用此控制策略,代理可以自动更改PSS的增益,以使预定义目标几乎始终得到满足。提出了一种改进的Q学习算法,以提高传统算法向接近最优策略的收敛速度。这是通过使用选择性初始状态标准而不是在每个情节中随机选择初始状态来实现的。该方法的有效性已在严重干扰下,使用非线性时域仿真在两区域,四机的电力系统上进行了测试。

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