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Fault Location in Power Distribution Systems via Deep Graph Convolutional Networks

机译:通过深图卷积网络电力分配系统中的故障位置

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This paper develops a novel graph convolutional network (GCN) framework for fault location in power distribution networks. The proposed approach integrates multiple measurements at different buses while taking system topology into account. The effectiveness of the GCN model is corroborated by the IEEE 123 bus benchmark system. Simulation results show that the GCN model significantly outperforms other widely-used machine learning schemes with very high fault location accuracy. In addition, the proposed approach is robust to measurement noise and data loss errors. Data visualization results of two competing neural networks are presented to explore the mechanism of GCNs superior performance. A data augmentation procedure is proposed to increase the robustness of the model under various levels of noise and data loss errors. Further experiments show that the model can adapt to topology changes of distribution networks and perform well with a limited number of measured buses.
机译:本文开发了用于配电网络中的故障位置的新型图形卷积网络(GCN)框架。该方法在考虑系统拓扑时,在不同的总线上集成了多个测量。 GCN模型的有效性由IEEE 123总线基准系统得到证实。仿真结果表明,GCN模型具有非常高的故障定位精度的其他普遍用过的机器学习方案显着优势。此外,所提出的方法是对测量噪声和数据丢失错误的强大。提出了两个竞争神经网络的数据可视化结果,以探讨GCNS卓越性能的机制。建议在各种噪声和数据丢失错误下提高模型的鲁棒性的数据增强程序。进一步的实验表明,该模型可以适应分配网络的拓扑变化,并使用有限数量的测量总线执行。

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