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控制与算法 强化学习 微电网 黑启动 构网型GFM ★ 5.0

面向频率与电压约束的网络化微电网安全恢复的深度强化学习方法

Safe Deep Reinforcement Learning for Robust Frequency and Voltage-Constrained Networked Microgrid Restoration

作者 Alaa Selim · Junbo Zhao · Jin Dong · Jianming Lian
期刊 IEEE Transactions on Industry Applications
出版日期 2025年10月
卷/期 第 62 卷 第 2 期
技术分类 控制与算法
技术标签 强化学习 微电网 黑启动 构网型GFM
相关度评分 ★★★★★ 5.0 / 5.0
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中文摘要

本文提出一种基于安全软演员-评论家(SAC)强化学习的控制器,用于网络化微电网黑启动恢复。将恢复过程建模为带显式电压/频率约束的有限时域CMDP,协同优化构网型与跟网型逆变器的有功/无功功率设定值,并通过MPSI/MQSI保障功率均分。

English Abstract

This paper proposes a safe soft actor-critic reinforcement learning (RL) algorithm–based controller for networked microgrid restoration. It formulates the post black-start start as a finite-horizon constrained Markov decision process. The RL agent co-optimizes real and reactive power set-points for both grid-forming and grid-following inverters under explicit voltage and frequency constraints, while enforcing proper power sharing via the Mean Active Power Sharing Index (MPSI) and Mean Reactive Power Sharing Index (MQSI). Numerical results obtained on the IEEE 123-bus distribution system show that the proposed method achieves a mean voltage build-up time of 0.01 s without breaching the 5% sharing-violation budget under various load scenarios, considering MPSI and MQSI indices. These findings demonstrate that the proposed method yields fast and safe black-start schedules without resorting to heuristic penalties.
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SunView 深度解读

该研究高度契合阳光电源在构网型储能系统(如PowerTitan、ST系列PCS)及光储一体化微电网解决方案中的核心技术需求。其安全强化学习框架可直接嵌入iSolarCloud智能运维平台,提升黑启动策略的自主性与鲁棒性;建议在PowerTitan系统中集成该算法,增强其在离网/弱网场景下的自主组网与快速电压频率重建能力,并适配组串式逆变器的GFM模式协同控制。