Enhanced Bearing Fault Detection Using Multichannel, Multilevel 1d Cnn Classifier
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Date
2022
Authors
Journal Title
Journal ISSN
Volume Title
Publisher
Springer
Open Access Color
Green Open Access
No
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Publicly Funded
No
Abstract
Electric motors are widely used in many industrial applications on account of stability, solidity and ease of use. Mechanical bearing faults have the highest statistical occurrence percentage among all of the motor fault types. Accurate and advance detection of the bearing faults is critical to avoid unpredicted breakdowns of electric motors. Through early detection of bearing faults, it would be possible to solve the problem at a lower cost by repairing and/or replacing relevant parts. Most of the fault detection works in the literature attempted to detect binary {healthy, faulty} motor fault case based on a single input. In this study, we propose an enhanced performance bearing fault diagnosis system based on multichannel, multilevel 1D-CNN classifier processing vibration data collected from multiple accelerometers mounted on bearings in a test bed. Effectiveness and feasibility of the proposed method are validated by applying it to the benchmark IMS bearing vibration dataset for inner race and rolling element faults and comparing the results with the conventional single-axis data-based fault detection.
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ORCID
Keywords
Multilevel bearing fault detection, Multi-channel convolutional neural networks, Intelligent fault detection system, Broken Rotor Bar, Wavelet Packet Decomposition, Induction Machines, Damage Detection, Turn Insulation, Diagnosis, Transform, System, Signal
Fields of Science
0202 electrical engineering, electronic engineering, information engineering, 02 engineering and technology
Citation
WoS Q
Q3
Scopus Q
Q2

OpenCitations Citation Count
41
Source
Electrıcal Engıneerıng
Volume
104
Issue
2
Start Page
435
End Page
447
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CrossRef : 1
Scopus : 65
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Mendeley Readers : 28
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