The power system state estimation (SE) algorithm estimates the complex bus voltages based on the available set of measurements. Because phasor measurement units (PMUs) are becoming more widely employed in transmission power systems, a fast SE solver capable of exploiting PMUs' high sample rates is required. To accomplish this, we present a method for training a model based on graph neural networks (GNNs) to learn estimates from PMU voltage and current measurements, which, once it is trained, has a linear computational complexity with respect to the number of nodes in the power system. We propose an original GNN implementation over the power system's factor graph to simplify the incorporation of various types and numbers of measurements both on power system buses and branches. Furthermore, we augment the factor graph to improve the robustness of GNN predictions. Training and test examples were generated by randomly sampling sets of power system measurements and annotated with the exact solutions of linear SE with PMUs. The numerical results demonstrate that the GNN model provides an accurate approximation of the SE solutions. Additionally, errors caused by PMU malfunctions or the communication failures that make the SE problem unobservable have a local effect and do not deteriorate the results in the rest of the power system.
翻译:电源系统(SE)算法根据现有的一套测量方法估算了复杂的客车电压。由于在传输电源系统中正在日益广泛使用气流测量单位(PMUs),因此需要一个能够利用PMUs高采样率的快速SE求解器。为此,我们提出了一个方法,用于培训一个基于图形神经网络(GNNs)的模型,以从PMU电压和当前测量中获取估算,该模型经过培训后,在电源系统中的节点数量方面具有线性计算复杂性。我们提议对电源系统因子图实施原型GNN(GNNs),以简化电源系统客车和分支中各种类型和数量的测量的集成。此外,我们增加要素图,以提高GNNU预测的稳健性。通过随机抽样成套电源系统测量和用PMUs对线性S的精确解决方案附加说明,培训和测试实例。数字结果表明,GNNN模式为SE解决方案提供了准确的近似近近。此外,由于PMU的故障或通信故障导致SE系统不易位效应。