Induction motor fault diagnosis based on analytic wavelet transform via Frequency B-Splines

J. Pons-Llinares, J. Antonino-Daviu, M. Riera-Guasp, M. Pineda-Sánchez, V. Climente-Alarcón
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引用次数: 13

Abstract

In this paper a new methodology of Transient Motor Current Signature Analysis (TMCSA) is proposed. The approach consists on obtaining a 2D time frequency plot representing the time-frequency evolution of all the harmonics present on an electric machine transient current. Identifying characteristic patterns in the time-frequency plane, produced by some of the fault related components, permits the machine diagnosis. Unlike other CWT based methods, this work uses Complex Frequency B-Splines Wavelets. It is shown that these wavelets enable high detail in the time-frequency maps and an efficient filtering in the region neighbouring the main frequency. These characteristics make easy the identification of the patterns related to the fault components. As an example, the technique has been applied to no load startup currents of healthy motors and motors with broken bars, showing the Complex FBS Wavelets capabilities. The diagnosis has been done via the identification of the Upper Sideband Harmonic.
基于频率b样条解析小波变换的感应电机故障诊断
本文提出了一种新的暂态电机电流特征分析方法。该方法包括获得一个二维时频图,表示电机瞬态电流中存在的所有谐波的时频演变。识别由一些故障相关部件产生的时频平面上的特征模式,使机器诊断成为可能。与其他基于CWT的方法不同,这项工作使用了复频率b样条小波。结果表明,这些小波在时频图中具有很高的细节性,并且在主频率附近的区域具有有效的滤波效果。这些特征使识别与故障组件相关的模式变得容易。作为一个例子,该技术已应用于健康电机和断条电机的空载启动电流,显示了复杂FBS小波的能力。诊断是通过识别上边带谐波完成的。
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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