一种考虑配电网络划分的深度学习故障定位方法

Jiaqing Zhao, Zhongjian Dai, Zhongyao Chen, Hongen Ding, Puliang Du
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摘要

本文提出了一种基于深度学习的考虑配电网分区的故障定位方法,该方法利用Tensorflow框架建立并构造配电网的故障定位模型。该方法首先通过馈线终端单元采集电流和电压数据,形成故障数据向量。结合复杂网络理论,计算各节点度表示节点优先级,并对配电网拓扑进行划分,形成各区域模型。其次,构建特征提取网络和深度神经网络,挖掘故障数据向量与故障剖面之间的映射关系,通过训练形成最终的故障定位模型;实例研究表明,与BP神经网络模型和支持向量机模型相比,深度学习模型具有更快的收敛速度和更高的故障定位精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Fault Location Method Considering Distribution Network Partition Based on Deep Learning
In this paper, a fault location method considering distribution network partition based on deep learning is proposed, in which the Tensorflow framework is employed to establish and construct the fault location model of the distribution network. This method firstly collects the current and voltage data to form fault data vectors through the Feeder Terminal Unit. Combined with the complex network theory, each node degree is calculated to represent the node priority, and the topology of the distribution network is partitioned to form each regional model. Secondly, it builds a feature extracting network and a Deep Neural network to mine the mapping relations between fault data vectors and fault sections and form the final fault location model through training. Case studies show that compared to the back propagation (BP) neural network model and the support vector machine (SVM) model, the deep learning model has faster convergence speed and higher fault location accuracy.
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