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基于鲁棒强化学习的网络化微电网韧性运行方法
Robust Reinforcement Learning-Based Resilient Operation of Networked Microgrids
| 作者 | Guokai Hao · Yuanzheng Li · Yang Li · Jiehui Zheng · Wei Yao · Lin Jiang · Yunfeng Luo |
| 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 | 智能化与AI应用 |
| 技术标签 | 强化学习 微电网 储能变流器PCS 构网型GFM |
| 相关度评分 | ★★★★★ 5.0 / 5.0 |
| 关键词 |
语言:
中文摘要
针对工业园区微电网(PIPMG)在主网故障下供电韧性不足问题,本文提出连接园区微电网与社区微电网的网络化微电网(NMG)架构,并设计鲁棒强化学习算法优化调度策略,确保仿真到实机迁移中性能下界可控,提升关键负荷支撑能力与跨微电网功率动态协同能力。
English Abstract
As critical hubs of regional economies, process-oriented industrial parks (PIPs) are typically highly dependent on the main grid for power supply due to their continuous production processes and significant energy consumption. However, unexpected extreme events or disasters may cause main grid outages, resulting in production line shutdowns in PIPs. To enhance the resilience of PIPs, research has focused on transforming PIPs into microgrids (PIPMGs) that integrate renewable energy and local generation, utilizing energy dispatching methods to facilitate island operation during main grid outages. However, relying solely on its internal power generation equipment may not meet the high energy demands of PIPMGs, and existing dispatching methods frequently overlook the discrepancy between simulation models and real world systems. This paper introduces a networked microgrid (NMG) model, which connects PIPMGs with community microgrids (CMGs). By prioritizing power allocation to critical loads during outages and enabling the transfer of excess energy between different microgrids, this approach achieves the dynamic transfer of redundant power supply capacity, thereby improving the resilience of PIPMGs. Additionally, a robust reinforcement learning algorithm is constructed to optimize dispatching policies. By optimizing the agent’s reward lower bound within the environmental uncertainty set, the algorithm ensures that its performance in real-world environments is at least as good as in simulated environments, thereby improving the robustness and adaptability of the dispatching policy. Finally, through a comparative analysis under various scenarios and algorithms, combined with metrics such as cumulative reward and task completion rate, the effectiveness of the proposed method in enhancing the resilience of PIPMG and the adaptability of the dispatching policy has been validated.
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SunView 深度解读
该研究高度契合阳光电源在构网型微电网与智能能量管理领域的战略布局。其鲁棒强化学习调度框架可直接赋能iSolarCloud平台的微电网群协同决策模块,并适配ST系列PCS及PowerTitan系统在多微电网互联场景下的动态功率分配与黑启动支援功能。建议将该算法集成至PowerStack集群控制器固件,增强工商业光储充一体化项目在极端天气下的自主韧性运行能力,尤其适用于高比例新能源渗透的工业园区示范项目。