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Semi-supervised adversarial discriminative learning approach for intelligent fault diagnosis of wind turbine
Te Han
, Wenzhen Xie
*
, Zhongyi Pei
*
Corresponding author for this work
Tsinghua University
National Engineering Research Center for Big Data Software
Research output
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Contribution to journal
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Article
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peer-review
114
Citations (Scopus)
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Computer Science
Learning Approach
100%
Fault Diagnosis
100%
Intelligent Fault Diagnosis
100%
Deep Learning
25%
Discriminative Feature
25%
Deep Neural Network
25%
Supervised Learning
25%
Training Process
25%
Generation System
25%
Energy Generation
25%
Operational Environment
25%
Chemical Engineering
Deep Learning
100%
Deep Neural Network
100%
Supervised Learning
100%