Vibration-Based High Voltage Shunt Reactor Fault Diagnosis with Incep-DenseNet

Changwei Zhao, Zhongyong Liu, Yucheng Qian, L. Mao
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Abstract

It is of great significance to perform high voltage shunt reactor (HVSR) fault diagnosis and take appropriate action to strengthen HVSR reliability and durability. In general, vibration signal is commonly used for HVSR fault diagnosis. However, with development of HVSR faults like internal screw bolt loose, its vibration signal will show subtle difference, and only limited studies have been devoted to identify various fault degree. In this paper, a novel densely connected neural network defined as Incep-DenseNet is proposed for diagnosing various HVSR internal screw bolt loose faults, which integrates advantages of InceptionNet and DenseNet to extract more specific and robust features from HVSR vibration signal. In the analysis, the collected HVSR vibration signal is transformed into 2D image data, which is then used to train the Incep-DenseNet. Results demonstrate that with the trained Incep-DenseNet, the diagnostic accuracy for four different HVSR internal screw bolt loose faults can reach 94.7%.
基于振动的高压并联电抗器故障诊断
对高压并联电抗器进行故障诊断并采取相应措施,对提高高压并联电抗器的可靠性和耐久性具有重要意义。一般情况下,振动信号是常用的高压变频器故障诊断方法。然而,随着HVSR内螺杆松动等故障的发展,其振动信号会出现细微的差异,对不同故障程度的识别研究有限。本文将InceptionNet和DenseNet的优点结合起来,提出了一种新型的密集连接神经网络InceptionNet -DenseNet,用于HVSR内部螺栓松动故障的诊断,从HVSR振动信号中提取出更具体、更鲁棒的特征。在分析中,将采集到的HVSR振动信号转换成二维图像数据,然后用于训练Incep-DenseNet。结果表明,使用训练好的Incep-DenseNet对4种HVSR内螺杆松动故障的诊断准确率可达94.7%。
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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