Fault Detection of Bearing using Signal Processing Technique and Machine Learning Approach

Q4 Energy
Manjunatha G, H. C. Chittappa, Dilip Kumar K
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引用次数: 0

Abstract

In large- or small-scale industries, machines have rotary element supported by bearings for accurate drive and fixed support. Fault diagnosis has gained much importance in recent times due to increased bearing failures. This demands an efficient diagnosis methodology to detect faults in bearings. In this work, fault diagnosis for the acquired vibration signals of healthy and fault seeded in rolling element bearings were investigated using signal processing technique and online machine learning approach. The research work is carried out in two phases. The first phase of research work investigates fault detection of bearing using conventional signal processing techniques such as time domain analysis and spectrum analysis. The results show that signal processing techniques may be useful for revealing post fault detection information. It was also concluded that the use of different signal processing techniques is often necessary to achieve meaningful diagnostic information from the signals. The second phase of research work describes fault diagnosis of bearing using machine learning approach. Using MATLAB, Discrete Wavelet Features (DWT), were extracted from acquired signals for different rolling element bearing conditions. J48 algorithm was implemented to extract most significant features. Extracted features were used as input to different classifiers to obtain maximum classification accuracy of rolling element bearings. The results showed that machine learning technique could be used to detect and classify the different fault sizes effectively with vibration signals.
基于信号处理技术和机器学习方法的轴承故障检测
在大型或小型工业中,机器具有由轴承支撑的旋转元件,用于精确驱动和固定支撑。近年来,由于轴承故障的增加,故障诊断变得越来越重要。这就需要一种有效的诊断方法来检测轴承故障。利用信号处理技术和在线机器学习方法,对获取的滚动轴承健康振动信号和种子振动信号进行故障诊断研究。研究工作分两个阶段进行。第一阶段的研究工作是利用传统的信号处理技术,如时域分析和频谱分析来检测轴承的故障。结果表明,信号处理技术可能有助于揭示故障后检测信息。还得出结论,为了从信号中获得有意义的诊断信息,通常需要使用不同的信号处理技术。第二阶段的研究工作描述了使用机器学习方法进行轴承故障诊断。利用MATLAB对采集到的不同滚动体承载工况信号进行离散小波特征提取。采用J48算法提取最显著特征。将提取的特征作为不同分类器的输入,以获得最大的滚动轴承分类精度。结果表明,机器学习技术可以有效地利用振动信号对不同故障大小进行检测和分类。
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来源期刊
Journal of Mines, Metals and Fuels
Journal of Mines, Metals and Fuels Energy-Fuel Technology
CiteScore
0.20
自引率
0.00%
发文量
101
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