基于频率的离散小波变换检测异步电动机轴承故障方法

A. Ghods, Hong‐Hee Lee
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引用次数: 14

摘要

感应电动机的故障检测是当前电机领域的一个热点。检测异步电动机电气和机械故障的方法有几种;其中,快速傅里叶变换、短时傅里叶变换和小波变换最为常用。大多数这些解决方案面临的一个主要缺陷是无法检测低能量故障,例如机械轴承故障。本文提出的新方案侧重于应用离散小波变换(DWT)对低能故障进行检测和预测;输出信号通过高通和低通滤波器,从而推导出系数。本文提出的方法包括推导每一级离散化的频谱。特别是在高分解水平下,通过监测高分解水平的DWT频谱,可以更早地检测到内圈轴承故障。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A frequency-based approach to detect bearing faults in induction motors using discrete wavelet transform
Detection of faults in induction motors is nowadays is a hot trend in the field of electrical machinery. There are several methods to detect electrical and mechanical faults in an asynchronous motor; fast Fourier transform, short-time Fourier transform, and wavelet transform are the most popular ones. A major deficiency that most of these solutions face is not being able to detect low energy faults, such as mechanical bearing faults. The new solution proposed in this paper focuses on detection and prediction of low energy faults applying discrete wavelet transform (DWT); the output signal is passed through high pass and low pass filters and coefficients are derived consequently. The method offered by the authors of this paper includes deriving frequency spectrum of each level of discretization. Especially in high decomposition levels, inner race bearing faults can be detected earlier by monitoring frequency spectrum of high levels in DWT.
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