FPGA-Based Online Induction Motor Multiple-Fault Detection with Fused FFT and Wavelet Analysis

E. Cabal-Yépez, R. Osornio-Ríos, R. Romero-Troncoso, J. R. Razo-Hernandez, R. Lopez-Garcia
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引用次数: 20

Abstract

Online monitoring of rotary machines, like induction motors, can effectively diagnosis electrical and mechanical faults. The origin of most recurrent faults in rotary machines is in the components: bearings, stator, rotor and others. Different methodologies based on current and vibration monitoring have been proposed using FFT and wavelet analysis for preventive monitoring of induction motors resulting in countless techniques for diagnosing specific faults, arising the necessity for a generalized technique that allows multiple fault detection. This work presents a novel methodology and its FPGA implementation for multiple fault online detection analyzing the current and vibration signals of an induction motor combining FFT and wavelet processing during its startup transient and steady state, precisely performing the identification of different faults like misalignment, unbalance, outer-race bearing defects and broken bars. The results obtained using the proposed methodology show its effectiveness providing a precise diagnosis of the induction motor condition.
基于fpga的感应电机多故障在线检测与FFT和小波分析
在线监测旋转机械,如感应电机,可以有效地诊断电气和机械故障。旋转机械中大多数经常性故障的根源在于部件:轴承、定子、转子和其他部件。已经提出了基于电流和振动监测的不同方法,使用FFT和小波分析对感应电动机进行预防性监测,导致无数诊断特定故障的技术,从而产生了允许多种故障检测的通用技术的必要性。本文提出了一种新的多故障在线检测方法及其FPGA实现,结合FFT和小波处理对异步电动机启动瞬态和稳态时的电流和振动信号进行分析,精确地识别出不同的故障,如不对准、不平衡、外圈轴承缺陷和断棒等。使用该方法获得的结果表明,该方法能够准确诊断异步电动机的状态。
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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