基于深度强化学习的可移动能源灾后路由方法

Mukesh Gautam, N. Bhusal, M. Benidris
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引用次数: 2

摘要

在极端事件发生后,在没有其他能源形式的情况下,可移动能源是恢复关键负荷以增强电力系统弹性的有效途径。由于极端事件后MERs的最佳位置取决于系统运行状态(例如,每个节点的负载,系统分支的开/停状态等),现有的基于人口的分析方法必须在系统运行状态发生变化时重复整个分析和计算。相反,基于深度强化学习(DRL)的方法如果经过各种场景的充分训练,可以在系统状态变化的情况下快速确定最佳或接近最佳的位置。利用基于深度q -学习的方法,提出了优化部署MERs以提高电力系统弹性的方法。如果可用,也可以使用MERs来补充其他类型的资源。在极端事件发生后,建议的方法分为两个阶段。首先将配电网建模为图,然后利用Kruskal的生成森林搜索算法(KSFSA)对配电网进行重新配置。在第二阶段确定MERs的最优或接近最优位置,以最大限度地提高临界负载恢复。以33节点分布测试系统为例,验证了该方法在MERs灾后路由中的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Deep Reinforcement Learning-based Approach to Post-Disaster Routing of Movable Energy Resources
After the occurrence of an extreme event, movable energy resources (MERs) can be an effective way to restore criti-cal loads to enhance power system resilience when no other forms of energy sources are available. Since the optimal locations of MERs after an extreme event are dependent on system operating states (e.g., loads at each node, on/off status of system branches, etc.), existing analytical and population-based approaches must repeat the entire analysis and computation when the system operating states change. Conversely, deep reinforcement learning (DRL)-based approaches can quickly determine optimal or near-optimal locations despite changes in system states if they are adequately trained with a variety of scenarios. The optimal deployment of MERs to improve power system resilience is proposed using a Deep Q-Learning-based approach. If they are available, MERs can also be used to supplement other types of resources. Following an extreme event, the proposed approach operates in two stages. The distribution network is modeled as a graph in the first stage, and Kruskal's spanning forest search algorithm (KSFSA) is used to reconfigure the network using tie-switches. The optimal or near-optimal locations of MERs are determined in the second stage to maximize critical load recovery. A case study on a 33-node distribution test system demonstrates the effectiveness and efficacy of the proposed approach for post-disaster routing of MERs.
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