Support vector machines based non-contact fault diagnosis system for bearings

被引:0
作者
Deepam Goyal
Anurag Choudhary
B. S. Pabla
S. S. Dhami
机构
[1] National Institute of Technical Teachers Training and Research,Department of Mechanical Engineering
[2] National Institute of Technical Teachers Training and Research,Department of Electrical Engineering
来源
Journal of Intelligent Manufacturing | 2020年 / 31卷
关键词
Support vector machines (SVM); Vibration signatures; Bearings; Discrete wavelet transform (DWT); Non-contact fault diagnosis;
D O I
暂无
中图分类号
学科分类号
摘要
Bearing defects have been accepted as one of the major causes of failure in rotating machinery. It is important to identify and diagnose the failure behavior of bearings for the reliable operation of equipment. In this paper, a low-cost non-contact vibration sensor has been developed for detecting the faults in bearings. The supervised learning method, support vector machine (SVM), has been employed as a tool to validate the effectiveness of the developed sensor. Experimental vibration data collected for different bearing defects under various loading and running conditions have been analyzed to develop a system for diagnosing the faults for machine health monitoring. Fault diagnosis has been accomplished using discrete wavelet transform for denoising the signal. Mahalanobis distance criteria has been employed for selecting the strongest feature on the extracted relevant features. Finally, these selected features have been passed to the SVM classifier for identifying and classifying the various bearing defects. The results reveal that the vibration signatures obtained from developed non-contact sensor compare well with the accelerometer data obtained under the same conditions. A developed sensor is a promising tool for detecting the bearing damage and identifying its class. SVM results have established the effectiveness of the developed non-contact sensor as a vibration measuring instrument which makes the developed sensor a cost-effective tool for the condition monitoring of rotating machines.
引用
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页码:1275 / 1289
页数:14
相关论文
共 132 条
[1]  
Ali JB(2015)Application of empirical mode decomposition and artificial neural network for automatic bearing fault diagnosis based on vibration signals Applied Acoustics 89 16-27
[2]  
Fnaiech N(2014)Multi-fault diagnosis study on roller bearing based on multi-kernel support vector machine with chaotic particle swarm optimization Measurement 47 576-590
[3]  
Saidi L(2019)Condition monitoring and fault diagnosis of induction motors: A review Archives of Computational Methods in Engineering 26 1221-1238
[4]  
Chebel-Morello B(2017)Comparative investigation of vibration and current monitoring for prediction of mechanical and electrical faults in induction motor based on multiclass-support vector machine algorithms Mechanical Systems and Signal Processing 94 464-481
[5]  
Fnaiech F(2019)Fault diagnosis of single-phase induction motor based on acoustic signals Mechanical Systems and Signal Processing 117 65-80
[6]  
Chen F(2015)Condition based maintenance of machine tools—A review CIRP Journal of Manufacturing Science and Technology 10 24-35
[7]  
Tang B(2016)The vibration monitoring methods and signal processing techniques for structural health monitoring: A review Archives of Computational Methods in Engineering 23 585-594
[8]  
Song T(2016)Development of non-contact structural health monitoring system for machine tools Journal of Applied Research and Technology 14 245-258
[9]  
Li L(1998)Support vector machines for classification and regression ISIS Technical Report 14 5-16
[10]  
Choudhary A(2015)Thermal image based fault diagnosis for rotating machinery Infrared Physics & Technology 73 78-87