一种gnn引导下的最优解高效求导方法

IF 7.2 1区 工程技术 Q1 ENGINEERING, ELECTRICAL & ELECTRONIC IEEE Transactions on Power Systems Pub Date : 2025-01-22 DOI:10.1109/TPWRS.2025.3526634
Lishen Wei;Xiaomeng Ai;Jiakun Fang;Shichang Cui;Shiwu Liao;Jinyu Wen
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引用次数: 0

摘要

随着电力系统规模的不断扩大,对机组承诺(UC)计算效率的要求越来越高。本文介绍了一种解决这一问题的新方法,将图神经网络(GNN)引入到分支和界(B&B)中,整合UC问题中的变量选择(VS)特征。我们的方法侧重于使用gnn引导的VS方法有效地获得最优解。具体来说,我们研究了在解决UC问题时高质量但耗时的VS启发式的特点。然后,GNN结合这些特征,准确、快速地做出高质量的VS决策。在实现中,使用高质量但耗时的VS启发式方法来收集训练数据来解决UC模型。利用这些数据训练GNN模型,设计标签平滑和深度自适应机制,利用这些特征在UC问题中进行加速。为了评估有效性,我们在IEEE118、RTS-GMLC和中国一个真实的省级系统上进行了各种实验。整体性能在计算效率上有显著提高(分别为4.6倍、1.5倍和1.8倍)。对比实验表明,所提出的机制有助于提高学习性能,从而进一步加速UC。此外,我们的方法显示出有希望的泛化能力。
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A GNN-Guided Variable Selection Approach for Efficient Derivation of the Optimal Solution in Unit Commitment
The growing scale of the power system has intensified the demand for computational efficiency in unit commitment (UC). This paper introduces a novel approach that addresses this issue by adopting graph neural networks (GNN) into the Branch and Bound (B&B), integrating the characteristics of variable selection (VS) within UC problems. Our method focuses on efficiently obtaining optimal solutions using the GNN-guided VS approach. Specifically, we investigate the characteristics of the high-quality but time-consuming VS heuristic when solving UC problems. Then, the GNN incorporates these characteristics to make high-quality VS decisions accurately and quickly. In the implementation, the UC model is solved using a high-quality but time-consuming VS heuristic to collect training data. These data are employed to train the GNN model with designed label-smooth and depth-adaptive mechanisms, which exploit these characteristics in UC problems for acceleration. To evaluate the effectiveness, we conduct various experiments on the IEEE118, RTS-GMLC, and a real-world provincial system in China. The overall performance demonstrates significant improvements (4.6x, 1.5x, and 1.8x, respectively) in computational efficiency. The comparison experiments show that the proposed mechanisms contribute to enhanced learning performance and, thus, further UC acceleration. Moreover, our approach exhibits promising generalization capabilities.
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来源期刊
IEEE Transactions on Power Systems
IEEE Transactions on Power Systems 工程技术-工程:电子与电气
CiteScore
15.80
自引率
7.60%
发文量
696
审稿时长
3 months
期刊介绍: The scope of IEEE Transactions on Power Systems covers the education, analysis, operation, planning, and economics of electric generation, transmission, and distribution systems for general industrial, commercial, public, and domestic consumption, including the interaction with multi-energy carriers. The focus of this transactions is the power system from a systems viewpoint instead of components of the system. It has five (5) key areas within its scope with several technical topics within each area. These areas are: (1) Power Engineering Education, (2) Power System Analysis, Computing, and Economics, (3) Power System Dynamic Performance, (4) Power System Operations, and (5) Power System Planning and Implementation.
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