The goal of the state estimation (SE) algorithm is to estimate complex bus voltages as state variables based on the available set of measurements in the power system. Because phasor measurement units (PMUs) are increasingly being used in transmission power systems, there is a need for a fast SE solver that can take advantage of PMU high sampling rates. This paper proposes training a graph neural network (GNN) to learn the estimates given the PMU voltage and current measurements as inputs, with the intent of obtaining fast and accurate predictions during the evaluation phase. GNN is trained using synthetic datasets, created by randomly sampling sets of measurements in the power system and labelling them with a solution obtained using a linear SE with PMUs solver. The presented results display the accuracy of GNN predictions in various test scenarios and tackle the sensitivity of the predictions to the missing input data.
翻译:国家估算(SE)算法的目标是根据电力系统现有的一套测量数据,将复杂的公共汽车电压作为国家变量来估计。由于在传输动力系统中越来越多地使用散射测量单位,因此需要快速的SE求解器,可以利用PMU的高采样率。本文提议培训一个图形神经网络(GNN),以了解根据PMU的电压和当前测量值得出的估计数,作为投入,目的是在评估阶段获得快速和准确的预测。GNN接受培训时使用合成数据集,该数据集由电源系统中随机抽样成套测量数据制作,并用用PMUS求解器用线性SE获得的溶液标出。所介绍的结果显示了各种测试情景中GNN预测的准确性,并解决预测对缺失的输入数据的敏感性问题。