Intelligent bearing fault monitoring system using support vector machine and wavelet packet decomposition for induction motors

Hari Om Vishwakarma, K. S. Sajan, Bhaskar Maheshwari, Yougal Deep Dhiman
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引用次数: 8

Abstract

In this paper an intelligent condition monitoring of induction motor based on the wavelet packet decomposition and time domain features have been presented. The classification has been done using the support vector machine (SVM) on the basis of statistical learning theory. The data has been collected on a 10 HP induction motor in the lab having different bearing defects using piezoelectric type accelerometer. The signal is then processed to extract the time domain and wavelet features. Wavelet packet decomposition is used to extract the features from time-frequency domain. In this work, 3rd level wavelet packet decomposition has been considered. The experimental results shows that the classification of the bearing faults of the induction motor based on wavelet packet decomposition and time domain features and pattern recognition using support vector machine provides a new approach for intelligent bearing fault diagnosis of induction motor. GUI using MATLAB is developed for the work to make it more users friendly.
基于支持向量机和小波包分解的感应电机轴承故障智能监测系统
本文提出了一种基于小波包分解和时域特征的感应电机状态智能监测方法。在统计学习理论的基础上,利用支持向量机(SVM)进行分类。使用压电式加速度计在实验室中对具有不同轴承缺陷的10 HP感应电机进行了数据收集。然后对信号进行处理,提取时域和小波特征。采用小波包分解从时频域提取特征。本研究考虑了小波包三阶分解。实验结果表明,基于小波包分解和时域特征的异步电动机轴承故障分类以及基于支持向量机的模式识别为异步电动机轴承故障智能诊断提供了一种新的方法。使用MATLAB为本工作开发了GUI,使其更加用户友好。
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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