Deep Reinforcement Learning in Power Distribution Systems: Overview, Challenges, and Opportunities

Yuanqi Gao, N. Yu
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引用次数: 14

Abstract

To facilitate the integration of distributed energy resources and improve existing operational strategies, power distribution systems have seen a rapid proliferation of deep reinforcement learning (DRL) based applications. DRL approach is well suited for dynamic, complex, and uncertain operational environments such as power distribution systems. This paper reviews the rapidly growing body of literature that develops applications of reinforcement learning in power distribution systems. These applications include active grid management, energy management system, retail electricity market, and demand response. This paper also summarizes the challenges of deploying DRL based solutions in distribution systems such as safety, robustness, interpretability, and sample efficiency. Finally, the research opportunities that can be pursued to address the challenges are provided.
配电系统中的深度强化学习:概述、挑战和机遇
为了促进分布式能源的整合和改进现有的运营策略,配电系统已经看到了基于深度强化学习(DRL)的应用的快速扩散。DRL方法非常适合于动态、复杂和不确定的运行环境,如配电系统。本文回顾了在配电系统中发展强化学习应用的快速增长的文献。这些应用包括主动电网管理、能源管理系统、零售电力市场和需求响应。本文还总结了在分销系统中部署基于DRL的解决方案所面临的挑战,如安全性、鲁棒性、可解释性和样本效率。最后,提供了可以追求的研究机会,以解决这些挑战。
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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