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基于稀疏模型集成学习策略的主动配电网端到端协同优化调度
End-to-End Collaborative Optimization for Active Distribution Network Power Dispatch Based on Sparse Model-Ensemble Learning Policy
| 作者 | Lilin Cheng · Kang Sun · Haixiang Zang · Guoqiang Sun · Zhinong Wei |
| 期刊 | IEEE Transactions on Sustainable Energy |
| 出版日期 | 2025年8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 机器学习 模型预测控制MPC 微电网 |
| 相关度评分 | ★★★★★ 5.0 / 5.0 |
| 关键词 |
语言:
中文摘要
针对分布式新能源高渗透下源荷双不确定性导致的传统‘预测-优化’调度性能偏差问题,本文提出端到端调度策略,跳过功率预测环节,直接融合数值天气预报等多源信息决策;采用稀疏模型集成学习与约束策略优化求解,在光伏无功调节与需求响应场景中显著提升实时调度性能。
English Abstract
With the higher penetration of distributed renewable power sources, novel active distribution networks are increasingly implementing flexible adjustment strategies. Currently, the dual uncertainties from both sources and demand significantly affect power dispatch in distribution networks. Typically, power dispatch is performed using a predict-then-optimize approach, making it challenging to quantify the gap between the real-time and theoretically optimal dispatch performances due to inaccuracies in power predictions. Hence, this study introduces a novel end-to-end policy to solve a collaborative optimization between prediction and dispatch. The policy directly utilizes all available information, such as gridded numerical weather forecasts, for dispatch decision-making, which eliminates the need for power predictions as intermediate variables for dispatch. To address the challenges of high-dimensional and open-scenario model training in end-to-end policies, sparse model-ensemble learning is proposed to formulate the dispatch policy model. The model is solved using constrained policy optimization. Comparative studies show that the proposed end-to-end policy outperforms the predict-then-optimize policy in real-time dispatch cases involving photovoltaic reactive power ancillary service and demand response within distribution networks.
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SunView 深度解读
该研究高度契合阳光电源在智能调度与光储协同控制领域的战略布局。其端到端AI调度框架可直接赋能iSolarCloud平台升级,提升对ST系列PCS、PowerTitan及组串式逆变器集群的实时协同调控能力;尤其适用于工商业光储一体化项目中的动态无功支撑与需求响应。建议将稀疏模型集成策略嵌入iSolarCloud边缘智能模块,并与PowerStack系统联动,实现配网级构网型(GFM)与跟网型(GFL)设备的混合优化调度。