基于图的变拓扑电力系统自主调度深度强化学习框架

Yu Zhao, J. Liu, Xiaoming Liu, Keyu Yuan, Kezheng Ren, Mengqin Yang
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引用次数: 1

摘要

可再生能源、柔性负荷和分布式电源的日益普及,使现代电力系统具有高度的复杂性和不确定性。此外,拓扑结构的变化会大大降低传统自治操作策略的有效性和实时性。因此,开发自主电力调度方法对保证现代电力系统的经济性和可靠性具有重要意义。提出了一种考虑拓扑变化的基于图的深度强化学习(DRL)自主电力调度框架。在马尔可夫决策过程(MDP)的基础上,采用近似策略优化(PPO)算法进行模仿学习预训练,获得有效及时的电力调度策略。此外,为了获得泛化能力,以适应突发事件、维护计划和电网建设引起的拓扑变化,在DRL代理中嵌入GraphSAGE算法,以捕捉电网的变化特征。在改进的IEEE 118总线系统上进行了实例研究,结果表明所提出的框架具有良好的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Graph-based Deep Reinforcement Learning Framework for Autonomous Power Dispatch on Power Systems with Changing Topologies
Increasing penetrations of renewable energy, flexible loads and distributed power supplies is prompting the mordern power system to be highly complex and uncertain. Besides, topology changes can greatly discount the effectiveness and real-time performance of traditional autonomous operation policies. Therefore, developing autonomous power dispatch methods is of great importance to the ensurance of modern power sytem economy and reliability. This paper proposes a novel graph-based deep reinforcement learning (DRL) framework for autonomous power dispatch considering topology changes. Based on the formulation of Markov decision process (MDP), a proximal policy optimization (PPO) algorithm with pre-training of imitation learning is adopted to obtain effective and timely power dispatch policies. Plus, to get the generalization ability to adopt to changing topologies caused by emergencies, maintenance plan and power grid construction, the GraphSAGE algorithm is embedded in the DRL agent to capture changing charcteristics of the power network. The case study is conducted on a modified IEEE 118-bus system and the results suggest good performance of the proposed framework.
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