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基于图神经网络的变电站二次回路故障定位方法

Method for locating secondary circuit faults in substations based on graph neural networks.

作者信息

Peng Ziping, Chen Gang, Zhang Junjie, Liu Junting, Chen Jiajun, Wang Junfeng

机构信息

Guangdong Power Grid Limited Liability Company Jiangmen Power Supply Bureau, China.

XJ Electric Co.,Ltd., China.

出版信息

Heliyon. 2024 Nov 1;10(22):e40042. doi: 10.1016/j.heliyon.2024.e40042. eCollection 2024 Nov 30.

Abstract

To improve the accuracy and portability of fault location in secondary circuits of smart substations, a fault location method for secondary circuits based on graph neural networks is proposed. First, a fault analysis of the secondary circuits in smart substations is conducted, and a graph database model of the secondary circuits is constructed, revealing the connection relationships between the secondary devices. Then, the fault location problem in secondary circuits is defined as a graph classification problem, and a fault graph generation model is proposed based on a representation method for fault information in secondary circuits. Finally, a fault location model for secondary circuits based on graph neural networks is constructed, and a performance optimization method based on binary cross-entropy is proposed to achieve accurate fault location in substation secondary circuits. Using the secondary circuits of a 220 kV smart substation as a reference, different case studies of secondary circuit faults are generated by altering the network topology, connection relationships, and network configurations through the fault graph generation model. Experiments comparing the proposed location method with other models show that this method has higher location accuracy and robustness.

摘要

为提高智能变电站二次回路故障定位的准确性和便携性,提出一种基于图神经网络的二次回路故障定位方法。首先,对智能变电站二次回路进行故障分析,构建二次回路的图数据库模型,揭示二次设备之间的连接关系。然后,将二次回路中的故障定位问题定义为图分类问题,并基于二次回路故障信息的表示方法提出故障图生成模型。最后,构建基于图神经网络的二次回路故障定位模型,并提出基于二元交叉熵的性能优化方法,以实现变电站二次回路的准确故障定位。以某220kV智能变电站的二次回路为参考,通过故障图生成模型改变网络拓扑、连接关系和网络配置,生成不同的二次回路故障案例。将所提出的定位方法与其他模型进行比较的实验表明,该方法具有更高的定位准确性和鲁棒性。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/2207/11615497/4920beb4c3b1/gr1.jpg

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