An experimental study of induction motor current signature analysis techniques for incipient broken rotor bar detection

N. Mariun, M. R. Mehrjou, M. Marhaban, N. Misron
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引用次数: 12

Abstract

Incipient fault detection of the induction machines (IM) prevents the unscheduled downtime and hence reduces maintenance costs. Condition monitoring, signal processing and data analysis are the key parts of the EVI fault detection scheme. The Motor Current Signature Analysis (MCSA) is considered as an effective condition monitoring method in any EVI. However, a signal processing technique, which enhances the fault signature and suppress the dominant system dynamics and noise, must be considered. Windowed Fourier transform analysis and wavelet are of the most considered signal processing methods. However, some parameters influence their ability and accuracy. This paper intends to investigate the effectiveness of these methods for incipient fault detection. Accordingly, current signal was measured and analyzed for broken rotor bar diagnosis in a squirrel-cage induction machine. Results indicated that though windowing improves Fourier transform analysis, it is not capable of accurate incipient fault detection. In other words, wavelet analysis is superior for this purpose.
感应电机早期断条检测电流特征分析技术的实验研究
感应电机(IM)的早期故障检测可以防止计划外停机,从而降低维护成本。状态监测、信号处理和数据分析是EVI故障检测方案的关键部分。电机电流特征分析(MCSA)被认为是一种有效的EVI状态监测方法。然而,必须考虑一种既能增强故障特征又能抑制主要系统动力学和噪声的信号处理技术。窗口傅里叶变换分析和小波分析是目前最常用的信号处理方法。然而,一些参数影响了它们的能力和准确性。本文旨在研究这些方法在早期故障检测中的有效性。据此,对鼠笼式感应电机转子断条的电流信号进行了测量和分析。结果表明,虽然加窗改进了傅里叶变换分析,但不能准确地检测出早期故障。换句话说,小波分析在这方面更胜一筹。
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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