Research on Optimization Method of Power Grid Recovery Path Based on Reinforcement Learning

Liu Yang, Gao Jianliang, Xia Deming, Chen Qiuping, Zhang Hongli, Liu Fusuo
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Abstract

After a power outage occurs, the power grid recovery can be accelerated according to the reasonable recovery path. This paper proposes a recovery path optimization method based on reinforcement learning. This method can solve complex problems in a model less way and improve the efficiency of the method. The goal is to restore maximum power to the grid. The constraints include over voltage, power flow, frequency, and self-excitation. Through continuous interactive learning between the agent and the power grid during the execution of the recovery path, the Q-value function of the power grid state and the recovery path was obtained. Based on IEEE system data simulation, the effectiveness and rationality of the proposed method are verified.
基于强化学习的电网恢复路径优化方法研究
在发生停电事故后,根据合理的恢复路径,加快电网恢复。提出了一种基于强化学习的恢复路径优化方法。该方法可以以无模型的方式求解复杂问题,提高了方法的效率。目标是恢复电网的最大电力供应。约束条件包括过电压、功率流、频率和自激。在恢复路径执行过程中,通过智能体与电网的持续交互学习,得到电网状态与恢复路径的q值函数。基于IEEE系统数据仿真,验证了所提方法的有效性和合理性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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