基于经验小波变换的电机状态监测

L. Eren, Y. Çekiç, M. Devaney
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引用次数: 3

摘要

轴承故障是迄今为止电机故障的最大单一来源。快速傅立叶变换(基于频率)和小波变换(基于时间尺度)通常用于分析原始振动或电流数据以检测轴承故障。本文采用经验小波变换(EWT)混合方法对轴承振动数据进行故障检测,提高了故障检测的精度。该方法对原始振动数据进行快速傅里叶变换处理。然后,自适应地将振动信号的傅立叶谱分成若干段,每段包含部分频带;接下来,将小波变换应用于所有段。最后,利用傅里叶反变换从小波变换系数中得到感兴趣频带的时域信号,进行轴承故障检测。通过比较健康轴承振动信号段与故障轴承振动信号段的均方根值,识别出轴承故障相关段。该方法的主要优点是可以从原始振动数据中提取出感兴趣的部分,从而确定故障类型和严重程度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Motor Condition Monitoring by Empirical Wavelet Transform
Bearing faults are by far the biggest single source of motor failures. Both fast Fourier (frequency based) and wavelet (time-scale based) transforms are used commonly in analyzing raw vibration or current data to detect bearing faults. A hybrid method, Empirical Wavelet Transform (EWT), is used in this study to provide better accuracy in detecting faults from bearing vibration data. In the proposed method, the raw vibration data is processed by fast Fourier transform. Then, the Fourier spectrum of the vibration signal is divided into segments adaptively with each segment containing part of the frequency band. Next, the wavelet transform is applied to all segments. Finally, inverse Fourier transform is utilized to obtain time domain signal with the frequency band of interest from EWT coefficients to detect bearing faults. The bearing fault related segments are identified by comparing rms values of healthy bearing vibration signal segments with the same segments of faulty bearing. The main advantage of the proposed method is the possibility of extracting the segments of interest from the original vibration data for determining both fault type and severity.
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