Details of Research Outputs

TitleSemi-supervised learning for fault identification in electricity distribution networks
Creator
Date Issued2021
Conference Name12th International Conference on Signal Processing Systems
Source PublicationProceedings of SPIE - The International Society for Optical Engineering
ISBN9781510642751
ISSN0277-786X
Volume11719
Conference Date6 - 9 November 2020
Conference PlaceShanghai
Abstract

The detection and identification of faults in electricity distribution networks is essential in improving the reliability of power supply. After observing many fault current signals we found that: (1) features of many recorded fault electrical signals were unknown or obscure; (2) the fault types of most sample signals had no clear definition, that is, the labeled sample were very limited. In this situation, the semi-supervised support vector machine (S3VM) and SVM active learning were firstly introduced to distinguish the short circuit and grounding in distribution networks. We used wavelet packet analysis to extract features based on energy spectrum as the physical features of electric signals, then some statistical characteristics were also computed and selected to form a mixed feature set. A case study was conducted on a real data set including 72 labeled and 7720 unlabeled electrical signals for fault diagnosis. By performing transductive support vector machine (TSVM) and SVM active learning with mixed features, our experimental results showed that both of the two models can effectively identify the fault types. Meanwhile, the accuracy of TSVM is higher than that of SVM active learning.

Keywordcircuit fault classification S3VM statistical features wavelet packet energy spectrum analysis
DOI10.1117/12.2589229
URLView source
Indexed ByCPCI-S
Language英语English
WOS Research AreaComputer Science ; Engineering ; Optics ; Imaging Science & Photographic Technology
WOS SubjectComputer Science, Artificial Intelligence ; Computer Science, Software Engineering ; Engineering, Electrical & Electronic ; Optics ; Imaging Science & Photographic Technology
WOS IDWOS:000668544700010
Scopus ID2-s2.0-85100005098
Citation statistics
Cited Times:2[WOS]   [WOS Record]     [Related Records in WOS]
Document TypeConference paper
Identifierhttp://repository.uic.edu.cn/handle/39GCC9TT/6101
CollectionFaculty of Science and Technology
Corresponding AuthorPeng, Xiaoling
Affiliation
1.School of Mathematical Sciences,Ocean University of China,Qingdao,266100,China
2.Guangzhou Stratac Information Technology Co. Ltd,Gaungzhou,511400,China
3.Division of Science and Technology,BNU-HKBU United International College,Zhuhai,519087,China
Corresponding Author AffilicationBeijing Normal-Hong Kong Baptist University
Recommended Citation
GB/T 7714
Li, Xinyang,Meng, Hongfa,Peng, Xiaoling. Semi-supervised learning for fault identification in electricity distribution networks[C], 2021.
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