A Reinforcement Learning approach to the management of Renewable Energy Communities

L. Guiducci, Giulia Palma, Marta Stentati, A. Rizzo, S. Paoletti
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Abstract

Optimal management of renewable energy is an important pillar of environmental sustainability, as it maximizes the use of clean and renewable resources. This article considers the optimal management of a renewable energy community that receives incentives for virtual self-consumption. This incentive scheme has been adopted in the Italian energy framework since 2020. The optimization problem maximizes the social welfare of the community, which includes the incentive together with the exploitation of renewable energy sources. A key role in such a problem is played by the battery energy storage system (BESS), which is crucial in balancing supply and demand. We propose a novel Reinforcement Learning-based BESS controller, aiming at maximizing the community social welfare by acting in real time and relying only on data available at the current time-step. Through different simulations in several scenarios, we demonstrate the effectiveness of our approach and its ability to outperform a state-of-the-art rule-based controller. Moreover, we assess the proposed approach by comparing its performance with that of the actual, though ideal, optimal control policy based on an oracle providing perfect knowledge of future data.
可再生能源社区管理的强化学习方法
可再生能源的优化管理是环境可持续性的重要支柱,因为它可以最大限度地利用清洁和可再生资源。本文考虑了一个可再生能源社区的最优管理,该社区接受虚拟自我消费的激励。自2020年以来,这一激励计划已被纳入意大利能源框架。优化问题使社区的社会福利最大化,其中包括对可再生能源开发的激励。电池储能系统(BESS)在这一问题中扮演着关键角色,它对平衡供需至关重要。我们提出了一种新的基于强化学习的BESS控制器,旨在通过实时行动和仅依赖当前时间步的可用数据来最大化社区社会福利。通过在不同场景下的不同模拟,我们证明了我们的方法的有效性及其优于最先进的基于规则的控制器的能力。此外,我们通过将其性能与基于oracle的实际(尽管是理想的)最优控制策略的性能进行比较来评估所提出的方法,该策略提供了对未来数据的完美了解。
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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