Deep Reinforcement Learning for Volt/VAR Control in Distribution Systems: A Review

D. Hai, Tao Zhu, Shangqi Duan, Wei Huang, Wenyu Li
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Abstract

An increasing number of distributed generators are integrated to distribution systems, which has a huge impact on the network power flow and leads to severe voltage fluctuation problems. Volt/VAR control is regarded as an effective approach to improve voltage quality and reduce power loss. Deep reinforcement learning is a data-driven approach to effectively solve decision-making problems. The application of deep reinforcement learning in volt/VAR control circumvent the accurate knowledge of network information, and is endowed with less computational burden. This paper provides a general review of the application of deep reinforcement learning in volt/VAR control in terms of basic notations, Markov decision process formulations, and control framework. Future directions are also discussed.
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配电系统中伏/无功控制的深度强化学习研究综述
越来越多的分布式发电机被集成到配电系统中,这对电网潮流产生了巨大的影响,并导致了严重的电压波动问题。电压/无功控制被认为是提高电压质量和降低功率损耗的有效途径。深度强化学习是一种有效解决决策问题的数据驱动方法。将深度强化学习应用于电压/无功控制中,避免了对网络信息的准确了解,且计算量较小。本文从基本符号、马尔可夫决策过程公式和控制框架等方面综述了深度强化学习在伏特/无功控制中的应用。并讨论了未来的发展方向。
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