We propose a multi-fidelity neural network (MFNN) tailored for rapid high-dimensional grid power flow simulations and contingency analysis with scarce high-fidelity contingency data. The proposed model comprises two networks -- the first one trained on DC approximation as low-fidelity data and coupled to a high-fidelity neural net trained on both low- and high-fidelity power flow data. Each network features a latent module which parametrizes the model by a discrete grid topology vector for generalization (e.g., $n$ power lines with $k$ disconnections or contingencies, if any), and the targeted high-fidelity output is a weighted sum of linear and nonlinear functions. We tested the model on 14- and 118-bus test cases and evaluated its performance based on the $n-k$ power flow prediction accuracy with respect to imbalanced contingency data and high-to-low-fidelity sample ratio. The results presented herein demonstrate MFNN's potential and its limits with up to two orders of magnitude faster and more accurate power flow solutions than DC approximation.
翻译:我们建议建立一个多纤维性神经网络(MFNN),专门用于快速高维电网电流模拟和应急分析,并配有稀缺的高纤维性应急数据。拟议模式包括两个网络 -- -- 第一个网络是作为低纤维性数据接受过DC近距离近似训练的低纤维性数据,并配有高纤维性神经网,同时接受过低和高纤维性电流数据的培训。每个网络都有一个潜在模块,它通过离散电网地形矢量将模型配准为一般化(例如,如果有的话,用美元进行断电或意外事故的电线线,则以美元为单位),而目标的高纤维性产出是线性和非线性功能的加权和总和。我们测试了14和118巴测试模型,并根据美元电流预测准确度,对不平衡的应急数据和高到低纤维性能抽样比率进行了评估。这里介绍的结果显示了最惠国的潜力及其极限,其范围为两个数量级的快速和准确的电流解决方案,比DC近两个。