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基于深度强化学习的移动式风力发电机分配策略以提升配电网韧性

Deep Reinforcement Learning-Based Allocation of Mobile Wind Turbines for Enhancing Resilience in Power Distribution Systems

作者 Ruotan Zhang · Jinshun Su · Payman Dehghanian · Mohannad Alhazmi · Xiaoyuan Fan
期刊 IEEE Transactions on Sustainable Energy
出版日期 2025年6月
卷/期 第 17 卷 第 1 期
技术分类 智能化与AI应用
技术标签 强化学习 深度学习 微电网 调峰调频
相关度评分 ★★★★ 4.0 / 5.0
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中文摘要

本文提出一种多智能体深度强化学习框架,用于极端事件后调度移动式风力发电机(MWTs)开展配电网服务恢复;采用DQL与DDQL算法,并引入动作约束抑制风电波动影响;在电力-交通耦合系统上验证了其提升系统韧性的有效性。

English Abstract

The growing adoption of wind energy resources has demonstrated notable benefits in combating climate change. Mobile wind turbines (MWTs) are uniquely positioned to navigate transportation systems, being towed by trucks, and supply energy to power distribution systems (PDSs). This flexibility enables MWTs to serve as emergency power sources, thereby contributing to enhancing the system resilience by facilitating service restoration following extreme events. This paper presents a novel framework based on Multi-agent Deep Reinforcement Learning (MADRL) to dispatch MWTs for service restoration. Deep Q-learning (DQL) and Double Deep Q-learning (DDQL) approaches are implemented within the agent for training and comparison purposes. Additionally, an action limitation is incorporated into the proposed framework in order to mitigate the influence of wind power fluctuations. Case studies conducted on an integrated power-transport system, comprising a Sioux Falls transportation system and four IEEE 33-bus test systems, illustrate the effectiveness of the proposed restoration scheduling policy in enhancing PDSs’ resilience against disasters.
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SunView 深度解读

该研究虽聚焦风电场景,但其MADRL调度框架与动态功率协同控制思想可迁移至阳光电源PowerTitan/PowerStack储能系统在灾害响应中的智能调度,尤其适用于iSolarCloud平台集成AI运维模块。建议将DDQL算法适配至ST系列PCS的黑启动与孤岛微网协同控制逻辑中,增强光储柴多源应急供电系统的自主决策能力;同时为风光储一体化项目提供边缘侧实时优化新范式。