Self-Supervised Learning for Large-Scale Preventive Security Constrained DC Optimal Power Flow

IF 7.2 1区 工程技术 Q1 ENGINEERING, ELECTRICAL & ELECTRONIC IEEE Transactions on Power Systems Pub Date : 2024-11-14 DOI:10.1109/TPWRS.2024.3498705
Seonho Park;Pascal Van Hentenryck
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Abstract

Security-Constrained Optimal Power Flow (SCOPF) plays a crucial role in power grid stability but becomes increasingly complex as systems grow. This paper introduces Primal-Dual Learning (PDL) for SCOPF (PDL-SCOPF), a self-supervised end-to-end primal-dual learning framework for producing near-optimal solutions to large-scale SCOPF problems in milliseconds. Indeed, PDL-SCOPF remedies the limitations of supervised counterparts that rely on training instances with their optimal solutions, which becomes impractical for large-scale SCOPF problems. PDL-SCOPF mimics an Augmented Lagrangian Method (ALM) for training primal and dual networks that learn the primal solutions and the Lagrangian multipliers, respectively, to the unconstrained optimizations. In addition, PDL-SCOPF incorporates a repair layer to ensure the feasibility of the power balance in the nominal case, and a binary search layer to compute, using the Automatic Primary Response (APR), the generator dispatches in the contingencies. The resulting differentiable program can then be trained end-to-end using the objective function of the SCOPF and the power balance constraints of the contingencies. Experimental results demonstrate that the PDL-SCOPF delivers accurate feasible solutions with minimal optimality gaps. The framework underlying PDL-SCOPF aims at bridging the gap between traditional optimization methods and machine learning, highlighting the potential of self-supervised end-to-end primal-dual learning for large-scale optimization tasks.
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大规模预防性安全约束直流优化功率流的自监督学习
安全约束的最优潮流(SCOPF)在电网稳定中起着至关重要的作用,但随着系统的发展,该问题变得越来越复杂。本文介绍了SCOPF的原始对偶学习(PDL-SCOPF),这是一个自监督的端到端原始对偶学习框架,用于在毫秒内生成大规模SCOPF问题的近最优解。事实上,PDL-SCOPF弥补了有监督的对等体依赖于训练实例的最优解决方案的局限性,这对于大规模的SCOPF问题来说是不切实际的。PDL-SCOPF模拟增广拉格朗日方法(ALM),用于训练分别学习无约束优化的原始解和拉格朗日乘子的原始和对偶网络。此外,PDL-SCOPF还包含一个修复层,以确保在标称情况下功率平衡的可行性,并包含一个二进制搜索层,用于使用自动主响应(APR)计算发电机在突发情况下的调度。然后可以使用SCOPF的目标函数和偶然性的功率平衡约束对得到的可微程序进行端到端训练。实验结果表明,PDL-SCOPF能以最小的最优性差距给出准确的可行解。PDL-SCOPF框架旨在弥合传统优化方法与机器学习之间的差距,突出自监督端到端原始对偶学习在大规模优化任务中的潜力。
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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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