Hilbert ID Considering Multi-Window Feature Extraction for Transformer Deep Vision Fault Positioning

Most of the power transformer fault diagnostic researches so far focuses on its fault type diagnosis, but there are less related researches on fault positioning, and the diagnostic methods of which are still less intelligent. This paper proposes a two-dimensional Hilbert ID considering multi-window...

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Main Authors: Xiaoxin Wu, Yigang He, Chenyuan Wang, Wenjie Wu, Chuankun Wang, Jiajun Duan
Format: Article
Language:English
Published: IEEE 2020-01-01
Series:IEEE Access
Subjects:
Online Access:https://ieeexplore.ieee.org/document/9084158/
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spelling doaj-6c047e0539bb41a880ca4822566b778f2021-03-30T02:44:10ZengIEEEIEEE Access2169-35362020-01-018912769128610.1109/ACCESS.2020.29918449084158Hilbert ID Considering Multi-Window Feature Extraction for Transformer Deep Vision Fault PositioningXiaoxin Wu0https://orcid.org/0000-0003-3176-2502Yigang He1Chenyuan Wang2Wenjie Wu3Chuankun Wang4Jiajun Duan5https://orcid.org/0000-0001-5857-796XSchool of Electrical Engineering and Automation, Wuhan University, Wuhan, ChinaSchool of Electrical Engineering and Automation, Wuhan University, Wuhan, ChinaSchool of Electrical Engineering and Automation, Wuhan University, Wuhan, ChinaSchool of Electrical Engineering and Automation, Wuhan University, Wuhan, ChinaSchool of Electrical Engineering and Automation, Wuhan University, Wuhan, ChinaSchool of Electrical Engineering and Automation, Wuhan University, Wuhan, ChinaMost of the power transformer fault diagnostic researches so far focuses on its fault type diagnosis, but there are less related researches on fault positioning, and the diagnostic methods of which are still less intelligent. This paper proposes a two-dimensional Hilbert ID considering multi-window feature extraction for deep vision fault positioning of the transformer winding. Firstly, sweep frequency response data containing complex fault characteristics is obtained based on pspice simulation. Next, a multi-window feature extraction method with logarithmic constraints is introduced to process the original data to obtain feature sequences. Then the proposed Hilbert visualization is used to further highlight the graphic feature of the feature sequences, and obtain Hilbert ID (MAPE) dataset. Finally, it is used to conduct transfer learning on the convolutional neural network. Different intelligent positioning methods are compared, and the proposed deep vision fault positioning method is 6.51% higher than other methods on average. What's more, the positioning effects based on different data processing methods are also compared. The accuracy of the proposed Hibert ID (MAPE) dataset is 10.35% higher than the other data processing methods on average. Finally, the positioning accuracy of Hilbert ID (MAPE+CC) combining two feature sequences can reach 96.09%, having an increase of 2.50%.https://ieeexplore.ieee.org/document/9084158/Convolutional neural network (CNN)deep transfer learning (DTL)fault positioningHilbert visualizationmulti-window feature extractionpower transformer
collection DOAJ
language English
format Article
sources DOAJ
author Xiaoxin Wu
Yigang He
Chenyuan Wang
Wenjie Wu
Chuankun Wang
Jiajun Duan
spellingShingle Xiaoxin Wu
Yigang He
Chenyuan Wang
Wenjie Wu
Chuankun Wang
Jiajun Duan
Hilbert ID Considering Multi-Window Feature Extraction for Transformer Deep Vision Fault Positioning
IEEE Access
Convolutional neural network (CNN)
deep transfer learning (DTL)
fault positioning
Hilbert visualization
multi-window feature extraction
power transformer
author_facet Xiaoxin Wu
Yigang He
Chenyuan Wang
Wenjie Wu
Chuankun Wang
Jiajun Duan
author_sort Xiaoxin Wu
title Hilbert ID Considering Multi-Window Feature Extraction for Transformer Deep Vision Fault Positioning
title_short Hilbert ID Considering Multi-Window Feature Extraction for Transformer Deep Vision Fault Positioning
title_full Hilbert ID Considering Multi-Window Feature Extraction for Transformer Deep Vision Fault Positioning
title_fullStr Hilbert ID Considering Multi-Window Feature Extraction for Transformer Deep Vision Fault Positioning
title_full_unstemmed Hilbert ID Considering Multi-Window Feature Extraction for Transformer Deep Vision Fault Positioning
title_sort hilbert id considering multi-window feature extraction for transformer deep vision fault positioning
publisher IEEE
series IEEE Access
issn 2169-3536
publishDate 2020-01-01
description Most of the power transformer fault diagnostic researches so far focuses on its fault type diagnosis, but there are less related researches on fault positioning, and the diagnostic methods of which are still less intelligent. This paper proposes a two-dimensional Hilbert ID considering multi-window feature extraction for deep vision fault positioning of the transformer winding. Firstly, sweep frequency response data containing complex fault characteristics is obtained based on pspice simulation. Next, a multi-window feature extraction method with logarithmic constraints is introduced to process the original data to obtain feature sequences. Then the proposed Hilbert visualization is used to further highlight the graphic feature of the feature sequences, and obtain Hilbert ID (MAPE) dataset. Finally, it is used to conduct transfer learning on the convolutional neural network. Different intelligent positioning methods are compared, and the proposed deep vision fault positioning method is 6.51% higher than other methods on average. What's more, the positioning effects based on different data processing methods are also compared. The accuracy of the proposed Hibert ID (MAPE) dataset is 10.35% higher than the other data processing methods on average. Finally, the positioning accuracy of Hilbert ID (MAPE+CC) combining two feature sequences can reach 96.09%, having an increase of 2.50%.
topic Convolutional neural network (CNN)
deep transfer learning (DTL)
fault positioning
Hilbert visualization
multi-window feature extraction
power transformer
url https://ieeexplore.ieee.org/document/9084158/
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AT chenyuanwang hilbertidconsideringmultiwindowfeatureextractionfortransformerdeepvisionfaultpositioning
AT wenjiewu hilbertidconsideringmultiwindowfeatureextractionfortransformerdeepvisionfaultpositioning
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