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Faculty of Scien... [2]
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WONG PAK KIN [1]
YANG ZHIXIN [1]
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Conference paper [1]
Journal article [1]
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2023 [1]
2019 [1]
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英語English [2]
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2019 IEEE Intern... [1]
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An Improved Graph Convolutional Networks for Fault Diagnosis of Rolling Bearing with Limited Labeled Data
Journal article
Xiao, Xiangqu, Li, Chaoshun, Huang, Jie, Yu ,Tian, Wong, Pak Kin. An Improved Graph Convolutional Networks for Fault Diagnosis of Rolling Bearing with Limited Labeled Data[J]. Measurement Science and Technology, 2023, 34(12), 125109.
Authors:
Xiao, Xiangqu
;
Li, Chaoshun
;
Huang, Jie
;
Yu ,Tian
;
Wong, Pak Kin
Favorite
|
TC[WOS]:
10
TC[Scopus]:
10
IF:
2.7
/
2.4
|
Submit date:2023/08/29
Fault Diagnosis
Improved Graph Convolutional Network
Graph-structured Data
Limited Labeled Data
Rolling Bearing
Intelligent Fault Diagnosis of Rolling Element Bearing Based on Convolutional Neural Network and Frequency Spectrograms
Conference paper
Liang,Pengfei, Deng,Chao, Wu,Jun, Yang,Zhixin, Zhu,Jinxuan. Intelligent Fault Diagnosis of Rolling Element Bearing Based on Convolutional Neural Network and Frequency Spectrograms[C], IEEE, 345 E 47TH ST, NEW YORK, NY 10017 USA:IEEE, 2019, 8819444.
Authors:
Liang,Pengfei
;
Deng,Chao
;
Wu,Jun
;
Yang,Zhixin
;
Zhu,Jinxuan
Favorite
|
TC[WOS]:
22
TC[Scopus]:
21
|
Submit date:2021/03/11
Fault Diagnosis
Rolling Bearing
Convolutional Neural Networks
Frequency Spectrograms