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面向决策的学习在不确定性电力系统决策中的应用
Decision-Focused Learning for Power System Decision-Making Under Uncertainty
| 作者 | Haipeng Zhang · Ran Li · Qintao Du · Junyi Tao · Salvador Pineda · Georges Kariniotakis · Simon Camal · Claire Bizon Monroc · Mingyang Sun · Can Wan · Wangkun Xu · Fei Teng |
| 期刊 | IEEE Transactions on Power Systems |
| 出版日期 | 2025年8月 |
| 卷/期 | 第 41 卷 第 1 期 |
| 技术分类 | 智能化与AI应用 |
| 技术标签 | 机器学习 强化学习 深度学习 模型预测控制MPC |
| 相关度评分 | ★★★★ 4.0 / 5.0 |
| 关键词 |
语言:
中文摘要
本文综述了决策聚焦学习(DFL)在电力系统中的应用,提出以决策损失替代统计损失的端到端范式,构建场景、分类、应用与对比基准四维分析框架,并开源电力系统专用评估基准,为DFL工程落地提供技术路线图。
English Abstract
More accurate forecasts may not necessarily lead to better decision-making. To address this challenge, decision-focused learning (DFL) has been proposed as a new branch of machine learning that replaces traditional statistical loss with a decision loss to form an end-to-end paradigm. Applications of DFL in power systems have been developed in recent years. However, existing applications remain fragmented without systematic analysis of methodologies or comparative benchmarks. This review addresses this gap by performing a set of scenario analysis, taxonomy analysis, application analysis and comparative analysis. It first illustrates the inherent mismatch between statistical accuracy and operational decisions through power system example scenarios. It then establishes a structured taxonomy of DFL techniques, categorizing methods by model structure (direct/indirect) and gradient handling (gradient-based/free). An application-based analysis reviews existing DFL applications by forecasting targets and decision contexts. Furthermore, an open-source comparative benchmark is developed to assess different DFL models through power system-specific metrics like cost reduction, forecasting accuracy, decision speed, providing a baseline for future research. Finally, this paper identifies the challenges to adopting DFL in power systems and presents future research directions, offering researchers a roadmap to advance DFL beyond theoretical analysis into power grid-tailored models.
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SunView 深度解读
该文对阳光电源iSolarCloud智能运维平台及PowerTitan/ST系列储能系统的优化调度具有直接参考价值:DFL可提升光伏出力-负荷-电价多源不确定性下的实时功率指令生成质量,增强组串式逆变器与PCS协同响应能力。建议在iSolarCloud中集成DFL模块,面向光储一体化电站开展成本敏感型功率分配验证;同时将DFL嵌入PowerStack能量管理算法,提升调峰调频决策鲁棒性。