Detection of bearing failures using wavelet transformation and machine learning approach

Maciej Golgowski, S. Osowski
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Abstract

The paper analyzes and compares two forms of wavelet transformation: discrete (DWT) and continuous (CWT) combined with machine learning in the analysis of the bearing failure. It presents the automatic system to detect the anomaly in the rolling bearing based on wavelet analysis of vibration waveforms combined with the set of classical and deep classifiers. The wavelet transformation is used in the stage of pre-processing of the signal for generating the input attributes in the final classification system. The considered structures of the classifiers include 6 classical machine learning tools integrated into an ensemble and a combination of a few deep Convolutional Neural Networks (CNN) to develop the most accurate diagnostics of the bearing. The calculations have been done in Python and Matlab. The results of both approaches DWT and CWT are discussed and compared. They show the high effectiveness of the approach based on the cooperation of wavelet transform and machine learning methods.
基于小波变换和机器学习方法的轴承故障检测
本文分析比较了结合机器学习的两种小波变换形式:离散小波变换和连续小波变换在轴承故障分析中的应用。提出了一种基于振动波形小波分析与经典分类器和深度分类器相结合的滚动轴承异常自动检测系统。在信号预处理阶段使用小波变换生成最终分类系统的输入属性。分类器的考虑结构包括集成到集成中的6个经典机器学习工具和几个深度卷积神经网络(CNN)的组合,以开发最准确的轴承诊断。在Python和Matlab中进行了计算。对两种方法的结果进行了讨论和比较。结果表明,基于小波变换和机器学习方法相结合的方法具有很高的有效性。
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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