基于物理信息的直流最优潮流最坏违例最小化神经网络

Rahul Nellikkath, Spyros Chatzivasileiadis
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引用次数: 19

摘要

物理信息神经网络利用底层物理系统的现有模型,以更少的数据生成更高精度的结果。这种方法可以帮助大大减少计算时间,并对电力系统中的计算密集型过程(如动态安全评估或最优潮流)产生良好的估计。结合对神经网络性能的最坏情况保证提取,该神经网络可以应用于电力系统的安全关键应用,并在电力系统运营商之间建立高度的信任。本文迈出了第一步,并首次将具有最坏情况保证的物理通知神经网络应用于直流最优潮流问题。我们寻找与(i)最大约束违反,(ii)预测和最优决策变量之间的最大距离,以及(iii)整个输入域的最大次最优性相关的保证。在一系列PGLib-OPF网络中,我们展示了物理信息神经网络如何提供最坏情况保证,以及与传统神经网络相比,它们如何减少最坏情况违规。
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Physics-Informed Neural Networks for Minimising Worst-Case Violations in DC Optimal Power Flow
Physics-informed neural networks exploit the existing models of the underlying physical systems to generate higher accuracy results with fewer data. Such approaches can help drastically reduce the computation time and generate a good estimate of computationally intensive processes in power systems, such as dynamic security assessment or optimal power flow. Combined with the extraction of worst-case guarantees for the neural network performance, such neural networks can be applied in safety-critical applications in power systems and build a high level of trust among power system operators. This paper takes the first step and applies, for the first time to our knowledge, Physics-Informed Neural Networks with Worst-Case Guarantees for the DC Optimal Power Flow problem. We look for guarantees related to (i) maximum constraint violations, (ii) maximum distance between predicted and optimal decision variables, and (iii) maximum sub-optimality in the entire input domain. In a range of PGLib-OPF networks, we demonstrate how physics-informed neural networks can be supplied with worst-case guarantees and how they can lead to reduced worst-case violations compared with conventional neural networks.
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