Deep learning approaches for the Alternating Current-Optimal Power Flow (AC-OPF) problem are under active research in recent years. A common shortcoming in this area of research is the lack of a dataset that includes both a realistic power network topology and the corresponding realistic loads. To address this issue, we construct an AC-OPF formulation-ready dataset called TAS-97 that contains realistic network information and realistic bus loads from Tasmania's electricity network. We found that the realistic loads in Tasmania are correlated between buses and they show signs of an underlying multivariate normal distribution. Feasibility-optimized end-to-end deep neural network models are trained and tested on the constructed dataset. Trained on samples with bus loads generated from a fitted multivariate normal distribution, our learning-based AC-OPF solver achieves 0.13% cost optimality gap, 99.73% feasibility rate, and 38.62 times of speedup on realistic testing samples when compared to PYPOWER.
翻译:近些年来,正在积极研究当前最佳电流(AC-OPF)问题的深层次学习方法。这一研究领域的一个常见缺点是缺乏数据集,其中既包括现实的电网地形,也包括相应的实际负荷。为了解决这个问题,我们建造了一个AC-OPF配制-备案数据集,名为TAS-97,其中载有现实的网络信息和塔斯马尼亚电网的现实客车负荷。我们发现塔斯马尼亚的现实载荷与大客车是相互关联的,它们显示出内在的多变量正常分布迹象。对可行性优化端对端深神经网络模型进行了培训,并在构建的数据集上进行了测试。对由安装多变量正常分布产生的客车载样本进行了培训,我们基于学习的AC-OPF求解码实现了0.13%的成本最佳化差距、99.73%的可行性率和与PYPOWER相比实际测试样品加速38.62次。