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Cited 19 time in webofscience Cited 22 time in scopus
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Deep Transfer Learning Framework for Bearing Fault Detection in Motorsopen access

Authors
Kumar, PrashantKumar, PrinceHati, Ananda ShankarKim, Heung Soo
Issue Date
Dec-2022
Publisher
MDPI
Keywords
deep learning; transfer learning; prognostics and health management; bearing fault; electrical motor
Citation
Mathematics, v.10, no.24, pp 1 - 14
Pages
14
Indexed
SCIE
SCOPUS
Journal Title
Mathematics
Volume
10
Number
24
Start Page
1
End Page
14
URI
https://scholarworks.dongguk.edu/handle/sw.dongguk/21779
DOI
10.3390/math10244683
ISSN
2227-7390
Abstract
The domain of fault detection has seen tremendous growth in recent years. Because of the growing demand for uninterrupted operations in different sectors, prognostics and health management (PHM) is a key enabling technology to achieve this target. Bearings are an essential component of a motor. The PHM of bearing is crucial for uninterrupted operation. Conventional artificial intelligence techniques require feature extraction and selection for fault detection. This process often restricts the performance of such approaches. Deep learning enables autonomous feature extraction and selection. Given the advantages of deep learning, this article presents a transfer learning-based method for bearing fault detection. The pretrained ResNetV2 model is used as a base model to develop an effective fault detection strategy for bearing faults. The different bearing faults, including the outer race fault, inner race fault, and ball defect, are included in developing an effective fault detection model. The necessity for manual feature extraction and selection has been reduced by the proposed method. Additionally, a straightforward 1D to 2D data conversion has been suggested, altogether eliminating the requirement for manual feature extraction and selection. Different performance metrics are estimated to confirm the efficacy of the proposed strategy, and the results show that the proposed technique effectively detected bearing faults.
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College of Engineering (Department of Mechanical, Robotics and Energy Engineering)
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