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An Improved Graph Convolutional Networks for Fault Diagnosis of Rolling Bearing with Limited Labeled Data
Xiao, Xiangqu1; Li, Chaoshun1; Huang, Jie1; Yu ,Tian1; Wong, Pak Kin2
2023-08-23
Source PublicationMeasurement Science and Technology
ISSN0957-0233
Volume34Issue:12Pages:125109
Abstract

Rolling bearings are essential parts of rotating equipment. Due to their unique operating environment, bearings are vulnerable to failure. Graph neural network (GNN) provides an effective way of mining relationships between data samples. However, various existing GNN models suffer from issues like poor graph-structured data quality and high computational consumption. Moreover, the available fault samples are typically insufficient in real practice. Therefore, an improved graph convolutional network (GCN) is proposed for bearing fault diagnosis with limited labeled data. This method consists of two steps: graph structure data acquisition and improved graph convolution network building. Defining edge failure thresholds simplifies the generated weighted graph-structured data, thereby enhancing data quality and reducing training computation costs. Improvements to standard GCNs can effectively aggregate data features of different receptive field sizes without noticeably raising the computational complexity of the model. Experiments with limited labeled data are conducted on two public datasets and an actual experimental platform dataset to verify the superiority of the proposed method. In addition, experiments on imbalanced datasets also fully demonstrate the robustness of the proposed method.

KeywordFault Diagnosis Improved Graph Convolutional Network Graph-structured Data Limited Labeled Data Rolling Bearing
DOI10.1088/1361-6501/acefea
URLView the original
Indexed BySCIE
Language英語English
WOS Research AreaEngineering ; Instruments & Instrumentation
WOS SubjectEngineering, Multidisciplinary ; Instruments & Instrumentation
WOS IDWOS:001053338100001
PublisherIOP Publishing Ltd
Scopus ID2-s2.0-85169547447
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Citation statistics
Document TypeJournal article
CollectionFaculty of Science and Technology
DEPARTMENT OF ELECTROMECHANICAL ENGINEERING
Corresponding AuthorLi, Chaoshun
Affiliation1.School of Civil and Hydraulic Engineering, Huazhong University of Science and Technology, Wuhan 430074, People’s Republic of China
2.Department of Electromechanical Engineering, University of Macau, Macau, People’s Republic of China
Recommended Citation
GB/T 7714
Xiao, Xiangqu,Li, Chaoshun,Huang, Jie,et al. An Improved Graph Convolutional Networks for Fault Diagnosis of Rolling Bearing with Limited Labeled Data[J]. Measurement Science and Technology, 2023, 34(12), 125109.
APA Xiao, Xiangqu., Li, Chaoshun., Huang, Jie., Yu ,Tian., & Wong, Pak Kin (2023). An Improved Graph Convolutional Networks for Fault Diagnosis of Rolling Bearing with Limited Labeled Data. Measurement Science and Technology, 34(12), 125109.
MLA Xiao, Xiangqu,et al."An Improved Graph Convolutional Networks for Fault Diagnosis of Rolling Bearing with Limited Labeled Data".Measurement Science and Technology 34.12(2023):125109.
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