基于深度q -学习的配电网络可靠性重构

Mukesh Gautam, N. Bhusal, M. Benidris
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引用次数: 4

摘要

事实证明,配电网重构是提高配电网可靠性的一种经济有效的方法。由于网络的最优配置取决于系统的运行状态(例如,每个节点的负载),现有的基于分析和种群的方法需要重复整个分析和计算,才能找到系统运行状态变化时的最优网络配置。与此相反,如果经过适当的训练,基于深度强化学习(DRL)的DNR即使在系统状态发生变化的情况下也能快速确定最优或接近最优配置。本文提出了一种基于深度Q学习的最优DNR框架,以提高系统的可靠性。优化问题的目标函数是使平均抑制功率最小。优化问题的约束是径向拓扑约束和所有节点遍历约束。将配电网建模为图,通过搜索最优生成树来确定配电网的最优配置。最优生成树是指平均截断功率最小的生成树。通过33节点和69节点分布测试系统的实例研究,验证了该框架的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Deep Q-Learning-based Distribution Network Reconfiguration for Reliability Improvement
Distribution network reconfiguration (DNR) has proved to be an economical and effective way to improve the reliability of distribution systems. As optimal network configuration depends on system operating states (e.g., loads at each node), existing analytical and population-based approaches need to repeat the entire analysis and computation to find the optimal network configuration with a change in system operating states. Contrary to this, if properly trained, deep reinforcement learning (DRL)-based DNR can determine optimal or nearoptimal configuration quickly even with changes in system states. In this paper, a Deep Q Learning-based framework is proposed for the optimal DNR to improve reliability of the system. An optimization problem is formulated with an objective function that minimizes the average curtailed power. Constraints of the optimization problem are radial topology constraint and all nodes traversing constraint. The distribution network is modeled as a graph and the optimal network configuration is determined by searching for an optimal spanning tree. The optimal spanning tree is the spanning tree with the minimum value of the average curtailed power. The effectiveness of the proposed framework is demonstrated through several case studies on 33-node and 69node distribution test systems.
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