Detection of fault location in branching power distribution network using deep learning algorithm

Daiki Nagata, Shunya Fujioka, Tohlu Matshushima, H. Kawano, Y. Fukumoto
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引用次数: 1

Abstract

An immediate response is desired when any failure on overhead power distribution systems has occurred, and the TDR(Time Domain Reflecting) method has been introduced to detect fault detection locations. However, accurate detection of the fault point is difficult due to waveform distortion and decrease in amplitude of TDR pulse in complex networks with multiple branches and electric power distribution equipment such as transformers and switchgear. A method for detecting fault points from TDR waveforms using deep learning is proposed in this study. The proposed method can be applied to detect fault locations and fault types in branching power distribution networks where multiple reflected waves are observed. Since the deep learning algorithm requires a large amount of waveform data, we developed a fast simulation method to create the data. To simulate the circuit rapidly, the power distribution line was treated as a transmission line, thereby deriving the fundamental matrix of the transmission line. Additionally, the equivalent circuit model of the power distribution network was represented by cascading the fundamental matrix. The TDR waveform data was obtained rapidly by calculating the equivalent circuit using MATLAB. We used this to create many TDR waveform data of an overhead distribution network model with multiple branches and performed fault locations detection using a deep learning algorithm. As a result, it was shown that the location of accident was identified with 96.8% accuracy.
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基于深度学习算法的分支配电网故障定位检测
当架空配电系统发生故障时,需要立即响应,并引入时域反射(TDR)方法来检测故障检测位置。然而,在具有多支路和变压器、开关设备等配电设备的复杂网络中,由于TDR脉冲波形失真和幅度减小,给准确检测故障点带来了困难。本文提出了一种基于深度学习的TDR波形故障点检测方法。该方法可用于分支配电网中存在多反射波的故障位置和故障类型的检测。由于深度学习算法需要大量的波形数据,我们开发了一种快速仿真方法来创建数据。为了快速模拟电路,将配电线路视为传输线,从而推导出传输线的基本矩阵。另外,将配电网等效电路模型用基本矩阵级联表示。利用MATLAB计算等效电路,快速得到TDR波形数据。我们使用它来创建具有多个分支的架空配电网络模型的许多TDR波形数据,并使用深度学习算法进行故障定位检测。结果表明,识别事故位置的准确率为96.8%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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