Multi-Agent Reinforcement Learning for Fast-Timescale Demand Response of Residential Loads

Vincent Mai, Philippe Maisonneuve, Tianyu Zhang, Hadi Nekoei, L. Paull, Antoine Lesage-Landry
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引用次数: 1

Abstract

To integrate high amounts of renewable energy resources, electrical power grids must be able to cope with high amplitude, fast timescale variations in power generation. Frequency regulation through demand response has the potential to coordinate temporally flexible loads, such as air conditioners, to counteract these variations. Existing approaches for discrete control with dynamic constraints struggle to provide satisfactory performance for fast timescale action selection with hundreds of agents. We propose a decentralized agent trained with multi-agent proximal policy optimization with localized communication. We explore two communication frameworks: hand-engineered, or learned through targeted multi-agent communication. The resulting policies perform well and robustly for frequency regulation, and scale seamlessly to arbitrary numbers of houses for constant processing times.
住宅负荷快速时间尺度需求响应的多智能体强化学习
为了整合大量的可再生能源资源,电网必须能够应对发电的高振幅、快速时间尺度变化。通过需求响应进行频率调节有可能协调临时灵活的负载,例如空调,以抵消这些变化。现有的具有动态约束的离散控制方法难以为具有数百个智能体的快速时间尺度动作选择提供令人满意的性能。我们提出了一种分散式智能体训练方法,该方法具有局部通信的多智能体近端策略优化。我们探索了两种通信框架:手工设计的,或通过有针对性的多智能体通信学习的。由此产生的策略在频率调节方面表现良好且稳健,并且可以无缝地扩展到任意数量的房屋,以实现恒定的处理时间。
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