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Bearing fault identification and classification with convolutional neural network

Publication Type : Conference Paper

Publisher : Proceedings of IEEE International Conference on Circuit, Power and Computing Technologies,

Source : Proceedings of IEEE International Conference on Circuit, Power and Computing Technologies, ICCPCT 2017, Institute of Electrical and Electronics Engineers Inc. (2017)

Url : https://www.scopus.com/inward/record.uri?eid=2-s2.0-85037355839&doi=10.1109%2fICCPCT.2017.8074401&partnerID=40&md5=0dfd050b833cec2b1fbb404cdcca87dc

ISBN : 9781509049660

Keywords : Accelerometers, Bearing fault detection, Bearing fault diagnosis, Computer circuits, Condition monitoring, Condition-based monitoring, Convolution, Convolution filters, Convolutional neural network, Failure analysis, Fault detection, Neural networks, Normal condition, Pattern recognition, Statistical features, Vibration analysis, Vibration data

Campus : Coimbatore

School : School of Engineering

Center : Computational Engineering and Networking

Department : Mechanical Engineering

Year : 2017

Abstract : Condition-based monitoring (CBM) is widely used methodology for the fault diagnosis, which provides the analysis for the safe and proper operations of any device or element. Vibration analysis is most accurate and reliable technique of CBM to reveal the condition of device or element. In this technique, fault can be diagnosed by analysing the vibration data acquired from accelerometer. Convolutional Neural Network (CNN) has emerged as one of the most widely used methodology in application of pattern recognition and acoustic data analysis. In this paper, CNN is used as back-end classifier for bearing fault detection. Vibration data is collected for three different conditions of bearings i.e. normal condition, inner race fault and outer race fault. Statistical features are extracted from vibration data and used as input to CNN classifier. Convolution filters are learned by training CNN and are used to detect the unique features for each condition of bearing. The obtained accuracy shows that CNN is very reliable and effective technique for bearing fault diagnosis. It exhibits good performance compared to peer algorithms. © 2017 IEEE.

Cite this Research Publication : M. Bhadane and Dr. K. I. Ramachandran, “Bearing fault identification and classification with convolutional neural network”, in Proceedings of IEEE International Conference on Circuit, Power and Computing Technologies, ICCPCT 2017, 2017.

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