基于联合决斗深度q网络的配电网协同能源调度

Yanhong Yang, Wei Pei, Tianyi Xu, Dawei Wang, Abdelbari Redouane
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引用次数: 0

摘要

源-负荷-储能协同能量调度在满足配电网主动控制需求方面具有很大的潜力。在本研究中,开发了一个联邦深度强化学习框架,以促进配电网的协同能源调度和总经济效益最大化。然后,考虑马尔可夫决策过程在能源调度中的应用,提出了基于时空图卷积网络变压器的可再生能源发电打包模型,并设计了基于联邦duelling深度q网络的协同能源调度策略。仿真结果表明,所提出的协同调度策略能够在保证数据隐私的同时实现配电网经济效益的最大化。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Federated duelling deep Q-network based collaborative energy scheduling for a power distribution network

Federated duelling deep Q-network based collaborative energy scheduling for a power distribution network

The collaborative energy scheduling of source-load-energy storage has great potential to meet the active control requirements of power-distribution networks. In this study, a federated deep reinforcement learning framework was developed to facilitate collaborative energy scheduling and maximize the total economic benefit in a distribution network. Then, considering the application of Markov decision processes for energy scheduling, a spatial temporal graph convolutional network transformer based power generation packaging model for renewable energy sources was presented, and a collaborative energy scheduling strategy based on a federated duelling deep Q-network was designed. The simulation results indicate that the developed collaborative scheduling strategy can maximize the economic benefits of a power distribution network while ensuring data privacy.

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