Learning-assisted optimization for transmission switching.

Top (Berlin, Germany) Pub Date : 2024-01-01 Epub Date: 2024-04-10 DOI:10.1007/s11750-024-00672-0
Salvador Pineda, Juan Miguel Morales, Asunción Jiménez-Cordero
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Abstract

The design of new strategies that exploit methods from machine learning to facilitate the resolution of challenging and large-scale mathematical optimization problems has recently become an avenue of prolific and promising research. In this paper, we propose a novel learning procedure to assist in the solution of a well-known computationally difficult optimization problem in power systems: The Direct Current Optimal Transmission Switching (DC-OTS) problem. The DC-OTS problem consists in finding the configuration of the power network that results in the cheapest dispatch of the power generating units. With the increasing variability in the operating conditions of power grids, the DC-OTS problem has lately sparked renewed interest, because operational strategies that include topological network changes have proved to be effective and efficient in helping maintain the balance between generation and demand. The DC-OTS problem includes a set of binaries that determine the on/off status of the switchable transmission lines. Therefore, it takes the form of a mixed-integer program, which is NP-hard in general. In this paper, we propose an approach to tackle the DC-OTS problem that leverages known solutions to past instances of the problem to speed up the mixed-integer optimization of a new unseen model. Although our approach does not offer optimality guarantees, a series of numerical experiments run on a real-life power system dataset show that it features a very high success rate in identifying the optimal grid topology (especially when compared to alternative competing heuristics), while rendering remarkable speed-up factors.

传输交换的学习辅助优化。
利用机器学习方法设计新策略,以帮助解决具有挑战性的大规模数学优化问题,最近已成为一个多产且前景广阔的研究领域。在本文中,我们提出了一种新颖的学习程序,以帮助解决电力系统中一个众所周知的计算困难的优化问题:直流优化输电切换 (DC-OTS) 问题。DC-OTS 问题包括找到能以最经济的方式调度发电设备的电力网络配置。随着电网运行条件的不断变化,DC-OTS 问题最近再次引起了人们的关注,因为事实证明,包括拓扑网络变化在内的运行策略在帮助维持发电和需求之间的平衡方面是有效和高效的。DC-OTS 问题包括一组决定可切换输电线路开/关状态的二进制。因此,它采用了混合整数程序的形式,一般来说具有 NP 难度。在本文中,我们提出了一种解决 DC-OTS 问题的方法,即利用该问题过去实例的已知解决方案,加快新的未见模型的混合整数优化。虽然我们的方法不能保证最优性,但在实际电力系统数据集上进行的一系列数值实验表明,该方法在确定最优电网拓扑结构方面具有极高的成功率(尤其是与其他竞争启发式方法相比),同时还具有显著的加速因素。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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