基于谱残差的机器学习高压并联电抗器故障诊断方法

Zongxi Zhang, Mingfu Fu, Jie Mei, Ming Zhu, Jing Zhang, Lingjun Xiao
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引用次数: 0

摘要

高压并联电抗器是一种主要的电力设备,在电力系统中起着重要的作用。在高压并联电抗器故障诊断中,振动信号是一种容易获取的信息。但在高压并联电抗器故障初期,振动信号特征信息较弱,噪声干扰较大。本文采集了高压并联电抗器四面24个采样点在不同状态下的振动信号。提出了一种基于谱残差和机器学习的高压并联电抗器故障诊断方法。该方法不仅可以有效地去除频率分量中的微弱直流分量,而且可以突出基频分量和倍频分量。在实验中,我们分别利用支持向量机(SVM)和卷积神经网络(CNN)建立故障诊断模型,比较原始振动信号频谱的残差信号。结果表明,与原始振动信号相比,谱残差算法分别提高了9%和10.75%的精度状态。因此,谱残差可以提高高压并联电抗器的故障诊断精度。
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A new machine learning-basd fault diagnosis method of high voltage shunt reactor using spectral residual
High voltage shunt reactor is a primary electric power apparatus and plays a significance role in electric power system. In term of diagnosing the fault of high voltage shunt reactor, vibration signal is an easy acquired information. However, in the initial fault stage of high voltage shunt reactor, the characteristic information of vibration signal is weak and the noise interference is large. In this paper, we collect vibration signal from 24 sampling position on the four sides of high voltage shunt reactor under different kinds of state. We put forward a way which is based on spectral residual and machine learning to diagnosis high voltage shunt reactors fault. This method not only can effectively remove the weak direct current component in the frequency component but also can highlight the fundamental frequency component and frequency doubling component. In the experiment, we set up the fault diagnosis models by Support Vector Machine (SVM) and Convolutional Neural Network (CNN) respectively to compare the residual signals of raw vibration signal spectrum. The results show that compared to the raw vibration signal, the spectrum residual algorithm improved accuracy state by 9% and 10.75% respectively. Therefore, spectral residual can improve the fault diagnosis accuracy of high voltage shunt reactors.
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