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Recognition of partial discharge in GIS based on image feature fusion
by
Chen, Yini
, Xu, Ziqiang
, Xu, Honghua
, Chen, Shoulong
, Yuan, Chao
in
Accuracy
/ Algorithms
/ Discharge
/ Discriminant analysis
/ Eigenvalues
/ Electrical faults
/ Evolutionary computation
/ Feature extraction
/ Feature selection
/ Identification
/ Neural networks
/ Risk assessment
/ Search algorithms
/ Signal processing
/ Support vector machines
/ Switchgear
2024
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Recognition of partial discharge in GIS based on image feature fusion
by
Chen, Yini
, Xu, Ziqiang
, Xu, Honghua
, Chen, Shoulong
, Yuan, Chao
in
Accuracy
/ Algorithms
/ Discharge
/ Discriminant analysis
/ Eigenvalues
/ Electrical faults
/ Evolutionary computation
/ Feature extraction
/ Feature selection
/ Identification
/ Neural networks
/ Risk assessment
/ Search algorithms
/ Signal processing
/ Support vector machines
/ Switchgear
2024
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Do you wish to request the book?
Recognition of partial discharge in GIS based on image feature fusion
by
Chen, Yini
, Xu, Ziqiang
, Xu, Honghua
, Chen, Shoulong
, Yuan, Chao
in
Accuracy
/ Algorithms
/ Discharge
/ Discriminant analysis
/ Eigenvalues
/ Electrical faults
/ Evolutionary computation
/ Feature extraction
/ Feature selection
/ Identification
/ Neural networks
/ Risk assessment
/ Search algorithms
/ Signal processing
/ Support vector machines
/ Switchgear
2024
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Recognition of partial discharge in GIS based on image feature fusion
Journal Article
Recognition of partial discharge in GIS based on image feature fusion
2024
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Overview
Partial discharge (PD) is a significant electrical fault in gas-insulated switchgear (GIS), with various types posing different risks to insulation. Accurate identification of PD types is essential for enhancing GIS management and ensuring the reliability of electrical grids. This study proposes a novel approach for PD identification in GIS integrating completed local binary pattern (CLBP) feature extraction, feature engineering, and an optimized support vector machine (SVM). PD faults were simulated in GIS and phase-resolved pulse sequence (PRPS) data for four different forms of PD were gathered. CLBP was used to extract image features, and then the support vector machine recursive feature elimination (SVM-RFE) algorithm was used to evaluate feature importance. Then, linear discriminant analysis (LDA) was used to fuse the selected features and reduce redundancy. The fused features were classified using a bald eagle search algorithm combined with differential evolution (IBES)-optimized SVM, achieving a recognition accuracy of 99.38%. The results indicate that the proposed method effectively distinguishes between different PD PRPS patterns in GIS.
Publisher
American Institute of Mathematical Sciences
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