A new method of fault diagnosis for HV circuit breakers based on wavelet packet

Peidong Zhuang, Laijun Sun, Mingliang Liu, Guangzhong Ye, Jianju Zhen
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引用次数: 3

Abstract

Based on the theory of wavelet packet for signal analysis, a new method to diagnose mechanical fault for circuit breakers is presented. Firstly, vibration signal after noise removing is wp-decomposed at the fourth level, and the signal of each junction at the fourth level are reconstructed; Secondly, the characteristic vector is extracted with the proportion of envelope energy of each two junctions at the fourth level, while the each two junctions have an father node at the third level; lastly, the classification of characteristic parameters is realized with simple BP neural network for fault diagnosis. The experimentation without loads indicates the method can easily and accurately diagnose the mechanical faults of circuit breakers, and provide a new road for fault diagnosis of HV circuit breakers.
基于小波包的高压断路器故障诊断新方法
基于小波包信号分析理论,提出了一种断路器机械故障诊断的新方法。首先,对去噪后的振动信号在第4级进行wp分解,并对第4级各节点信号进行重构;其次,在第四级提取每两个结点包络能量的比例作为特征向量,在第三级提取每两个结点有一个父节点;最后,利用简单的BP神经网络实现了特征参数的分类,用于故障诊断。无负荷试验表明,该方法能方便、准确地诊断断路器的机械故障,为高压断路器的故障诊断提供了一条新的途径。
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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