基于多智能体深度强化学习的分布式光伏配电网电压控制策略

Hansheng Tang, Xiaoming Wang, Hao Zheng, Bin Xu, Wenguang Zhao, Hongbin Wu
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引用次数: 0

摘要

控制光伏设备输出随机波动引起的电压波动和网损增加,对于配电网的稳定运行具有重要意义。为了解决配电网的电压波动问题。首先,提出了一种基于深度确定性策略梯度算法的无模型多智能体强化学习框架。采用集中训练、分散执行的方法来解决电压波动问题。然后,在控制电压波动的前提下,调整算法的奖励函数以降低无功损耗。调整后能较好地满足配电网的电压控制要求。深度强化学习算法不需要精确的潮流建模,也不依赖于对前一天数据的预测,因此适用于一些通信能力较弱的观测配电网。最后通过算例验证了该算法具有较强的电压控制能力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Voltage Control Strategy of Distribution Networks with Distributed Photovoltaic Based on Multi-agent Deep Reinforcement Learning
It is of great significance to control the voltage fluctuation and network loss increase caused by the random fluctuation of photovoltaic equipment output for the stable operation of distribution network. In order to solve the distribution network, voltage fluctuation problem. Firstly, a model-free multi-agent reinforcement learning framework based on depth deterministic strategy gradient algorithm is proposed. The method of centralized training and decentralized execution is adopted to solve the voltage fluctuation problem. Then, the reward function of the algorithm is adjusted to reduce reactive power loss under the premise of controlling voltage fluctuation. The adjustment can better meet the voltage control requirements of the distribution network. The deep reinforcement learning algorithm does not require accurate power flow modeling, nor does it depend on the prediction of the data before the day, so it is suitable for some observation distribution networks with weak communication capability. Finally, an example is given to verify that the algorithm has strong voltage control ability.
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