Detection Of Induction Motor Bearing Damage With Starting Current Analysis Using Wavelet Discrete Transform And Artificial Neural Network

Eva Navasari, D. A. Asfani, Made Yulistya Negara
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引用次数: 6

Abstract

Bearing damage in induction motor is one of the most common fault. The type of bearing damage itself consists of damage to the inner-race, outer-race and ball bearing. The occurrence of this bearing damage may cause increased vibration, temperature rise and may cause damage to the shafts, rotor and stator. To speed up the repair process, bearing damage detection should be classified according to the type of damage occurring. In this study, bearing damage will be detected by transient current analysis using discrete wavelet transform method. To determine the occurrence of damage, processing of transient current signals using discrete wavelet transforms performed by comparing the signal sub-band frequency at normal bearings and during fault. Furthermore, artificial neural networks are used to provide information on classification of types of fault. Analysis of result show that the presentage of successness classification as 100% for inner-race damage, 98% for outter-race damage and 100% for ball bearing damage. With the classification of damage to this bearing, it is expected to simplify and speed up the repair process.
基于小波离散变换和人工神经网络的起动电流分析检测感应电机轴承损伤
轴承损坏是感应电动机中最常见的故障之一。轴承本身的损坏类型包括内圈、外圈和球轴承的损坏。这种轴承损坏的发生可能导致振动增加,温度升高,并可能导致轴,转子和定子的损坏。为了加快维修过程,应根据发生的损伤类型对轴承损伤检测进行分类。在本研究中,将采用离散小波变换方法对暂态电流分析进行轴承损伤检测。为了确定损坏的发生,使用离散小波变换对瞬态电流信号进行处理,通过比较正常轴承和故障期间的信号子带频率。此外,利用人工神经网络提供故障类型分类信息。分析结果表明,内圈损伤成功率为100%,外圈损伤成功率为98%,滚珠轴承损伤成功率为100%。随着对该轴承损坏的分类,预计将简化和加快维修过程。
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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