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Fault Diagnosis of Rotary Machines using Deep Convolutional Neural Network with three axis signal input

Authors :
Kolar, Davor
Lisjak, Dragutin
Pajak, Michal
Pavkovic, Danijel
Publication Year :
2019

Abstract

Recent trends focusing on Industry 4.0 concept and smart manufacturing arise a data-driven fault diagnosis as key topic in condition-based maintenance. Fault diagnosis is considered as an essential task in rotary machinery since possibility of an early detection and diagnosis of the faulty condition can save both time and money. Traditional data-driven techniques of fault diagnosis require signal processing for feature extraction, as they are unable to work with raw signal data, consequently leading to need for expert knowledge and human work. The emergence of deep learning architectures in condition-based maintenance promises to ensure high performance fault diagnosis while lowering necessity for expert knowledge and human work. This paper presents developed technique for deep learning-based data-driven fault diagnosis of rotary machinery. The proposed technique input raw three axis accelerometer signal as high-definition image into deep learning layers which automatically extract signal features, enabling high classification accuracy.<br />Comment: I need to do a major revision of this article to make it publishable

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.1906.02444
Document Type :
Working Paper