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Efficient Fault Diagnosis of Rolling Bearings Using Neural Network Architecture Search and Sharing Weights

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Abstract
Bearing is one of the most vital components of industrial machinery. The failure of bearing causes severe problems in the machinery. Therefore, continuous monitoring for the bearings is essential rather than regular manual checking, with the requirement for accuracy of prediction and efficiency. This paper proposes a novel intelligent bearing fault condition monitoring and diagnosis method focusing on computation efficiency, which is an important aspect of a continuous monitoring and embedded-based diagnosis device. In the proposed method, acoustic emission signals containing bearing health information are converted into 2-D spectrograms by Constant Q-Transform (CQT) before using a convolutional neural network to infer the bearing state. To reduce the latency while maintaining high accuracy, we propose an efficient search space for neural network architecture search, i.e., a channel distribution search, that automatically obtain the best performing network. Moreover, we present a separation between two processes of condition monitoring and fault diagnosis to save overall computing resources, with a policy of sharing weights in the training process and sharing features in the testing process. The experimental results show that the proposed method reduces about 50% inference time compared to previous methods while achieving an accuracy of 99.82% for eight types of single and compound fault diagnosis for variable rotational speeds.
Author(s)
MINH TUAN PHAM r김종면김철홍
Issued Date
2021
Type
Article
Keyword
Acoustic emissionbearing fault condition monitoringbearing fault diagnosisComputer architectureconvolutional neural networkFault diagnosisFeature extractionMonitoringneural network architecture searchNeural networksTask analysisTime-frequency analysis
DOI
10.1109/ACCESS.2021.3096036
URI
https://oak.ulsan.ac.kr/handle/2021.oak/9155
https://ulsan-primo.hosted.exlibrisgroup.com/primo-explore/fulldisplay?docid=TN_cdi_ieee_primary_9478881&context=PC&vid=ULSAN&lang=ko_KR&search_scope=default_scope&adaptor=primo_central_multiple_fe&tab=default_tab&query=any,contains,Efficient%20Fault%20Diagnosis%20of%20Rolling%20Bearings%20Using%20Neural%20Network%20Architecture%20Search%20and%20Sharing%20Weights&offset=0&pcAvailability=true
Publisher
IEEE ACCESS
Location
미국
Language
영어
ISSN
2169-3536
Citation Volume
9
Citation Number
1
Citation Start Page
98800
Citation End Page
98811
Appears in Collections:
Engineering > IT Convergence
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