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Cooperative multi-agent deep reinforcement learning based decentralized framework for dynamic renewable hosting capacity assessment in distribution grids

机译:基于多智能体深度强化学习的协作式去中心化框架,用于配电网中动态可再生能源托管容量评估

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摘要

Renewable hosting capacity (RHC) means the total renewable power that can be integrated into the power grid without violation of network constraints. In this paper, a cooperative multi-agent deep reinforcement learning (CMADRL) based decentralized method is proposed to assess the dynamic renewable hosting capacity (RHC) of distribution grids, aiming to duly make decisions for renewable energy interconnection requests and ensure consistent power grids reliability simultaneously. According to the time-varying load-generation operation conditions, the proposed CMADRL method can continuously derive multi-timescale operation strategies for volt-var control devices, e.g., static var compensators (SVCs) and on-load tap changer (OLTC), improving the RHC of distribution grids. With three independent agents (SVC, OLTC and renewable agents), the proposed CMADRL method follows the manner of centralized training and decentralized execution, which guarantees the algorithm convergence under time-varying load-generation uncertainties and meanwhile ensures the feasibility of online applications. The case studies are carried out on a modified IEEE 37-node distribution system to demonstrate the effectiveness of the proposed real-time RHC assessment method. Numerical results verify that the proposed CMADRL method has a better performance than conventional optimization methods on computation efficiency. COPY; 2023 The Authors. Published by Elsevier Ltd. This is an open access article under the CC BY-NC-ND license (http://creativecommons.org/licenses/by-nc-nd/4.0/).
机译:可再生托管容量 (RHC) 是指可以在不违反网络约束的情况下并入电网的总可再生能源。本文提出一种基于CMADRL的协作式多智能体深度强化学习(CMADRL)去中心化方法,评估配电网的动态可再生能源托管容量(RHC),旨在对可再生能源互联请求做出适当的决策,同时确保电网的可靠性一致。根据随时变化的负荷产生工况,所提出的CMADRL方法可以连续推导电压-无功控制器件(如静态无功补偿器(SVC)和有载分接开关(OLTC)等多时间尺度的运行策略,从而提高配电网的RHC。所提CMADRL方法采用SVC、OLTC和可再生代理3个独立智能体,遵循集中训练和分散执行的方式,保证了算法在时变负载生成不确定性下的收敛性,同时保证了在线应用的可行性。案例研究在改进的 IEEE 37 节点分布系统上进行,以证明所提出的实时 RHC 评估方法的有效性。数值结果验证了所提CMADRL方法在计算效率上优于传统优化方法。& 复制;2023 作者。由以下开发商制作:Elsevier Ltd.这是 CC BY-NC-ND 许可 (http://creativecommons.org/licenses/by-nc-nd/4.0/) 下的开放获取文章。

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