基于chirp-Z变换和zoom-MUSIC的三相异步电动机轴承故障诊断

Xiangjun Wang, Fang Fang
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引用次数: 6

摘要

本文介绍了一种基于chirp-Z变换(CZT)和变焦倍频信号分类(ZMUSIC)的定子电流谱分析新方法,用于诊断三相异步电动机轴承故障的发生。与传统的FFT相比,CZT和ZMUSIC适用于需要分析非平稳信号,如感应电机的电流信号。本文首先利用CZT对电源频率进行评估,将基波分量移至0Hz,使其变为直流分量。然后利用ZMUSIC对轴承特征故障频率周围的窄频带进行分析。通过消除占主导地位的基元分量和噪声,使频谱中的故障特征频率分量清晰可见。通过对三相异步电动机轴承故障的诊断,验证了该方法的有效性。
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Bearing failure diagnosis in three-phase induction motor by chirp-Z transform and zoom-MUSIC
This paper introduces a new approach of the stator current spectral analysis, based on chirp-Z transform (CZT) and Zoom Multiple signal classification (ZMUSIC), for diagnosing the occurrence of bearing faults in three-phase induction motor. In contrast with traditional FFT, CZT and ZMUSIC are suitable when it is necessary to analyze a not stationary signal such as the current signal of the induction motor. In this paper, firstly, the supply frequency is evaluated by CZT, and the fundamental component is turned to be DC component by shifting it to 0Hz. Then the narrow frequency bands around the characteristic bearing fault frequencies are analyzed by using ZMUSIC. The fault characteristic frequency components in the spectrum are clear visible by the elimination of the dominant fundamental component and noise. The proposed technique is verified by applying to diagnose the bearing failures in a three-phase induction motor.
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