The optimal power flow (OPF) problem, as a critical component of power system operations, becomes increasingly difficult to solve due to the variability, intermittency, and unpredictability of renewable energy brought to the power system. Although traditional optimization techniques, such as stochastic and robust optimization approaches, could be used to address the OPF problem in the face of renewable energy uncertainty, their effectiveness in dealing with large-scale problems remains limited. As a result, deep learning techniques, such as neural networks, have recently been developed to improve computational efficiency in solving large-scale OPF problems. However, the feasibility and optimality of the solution may not be guaranteed. In this paper, we propose an optimization model-informed generative adversarial network (MI-GAN) framework to solve OPF under uncertainty. The main contributions are summarized into three aspects: (1) to ensure feasibility and improve optimality of generated solutions, three important layers are proposed: feasibility filter layer, comparison layer, and gradient-guided layer; (2) in the GAN-based framework, an efficient model-informed selector incorporating these three new layers is established; and (3) a new recursive iteration algorithm is also proposed to improve solution optimality. The numerical results on IEEE test systems show that the proposed method is very effective and promising.
翻译:由于可再生能源在电力系统中的可变性、间歇性和不可预测性,作为电力系统运作的一个关键组成部分,最佳电力流问题日益难以解决,因为可再生能源的变异性、间歇性和不可预测性。虽然传统的优化技术,如随机和稳健的优化方法,可以用来在可再生能源不确定的情况下解决电力流问题,但在处理大规模问题方面,它们的效力仍然有限。因此,最近开发了诸如神经网络等深层学习技术,以提高计算解决大规模电流系统问题的计算效率。然而,可能无法保证解决办法的可行性和最佳性。在本文件中,我们提议了一个在不确定的情况下解决电流和电流的基于最优化模型的基因对抗网络(MI-GAN)框架。主要贡献可归纳为三个方面:(1) 确保可行性和提高所产生的解决办法的最佳性,提出了三个重要层面:可行性过滤层、比较层和梯度制层;(2)在基于全球大气网的框架中,建立一个高效的、了解模型的选择器,纳入这三个新的层次;(3)在新的再现式测试方法上,提出了一种最有希望的系统。