A transfer-learning-based robust technique for multi-type fault detection and classification using Hilbert–Huang transform in low-voltage power distribution grids
In this paper, the authors present a new transfer-learning-based robust technique for detection and classification of multi-type faults in low-voltage power distribution grids. Three-phase current and voltage signals were initially measured and sampled at a medium-voltage/low-voltage substation upon...
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Veröffentlicht in: | Neural computing & applications 2024-09, Vol.36 (26), p.16125-16139 |
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description | In this paper, the authors present a new transfer-learning-based robust technique for detection and classification of multi-type faults in low-voltage power distribution grids. Three-phase current and voltage signals were initially measured and sampled at a medium-voltage/low-voltage substation upon occurrence of a certain type of fault. Subsequently, a Hilbert–Huang transform was applied to the corresponding sampled fault signals to construct a time–frequency energy matrix as a
35
×
35
pixel matrix of the digital image after passing through a band-pass filter. Additionally, and for the sake of comprehensiveness, a residual network (ResNet) was designed as a fault detector and classifier to accurately identify the location and type of faults, while guaranteeing the robustness of the proposed technique against both white and connection noises. For the sake of evaluation, a three-phase 10 kV test system was implemented in the MATLAB/Simulink environment under different faulty operating conditions designs. The performance of the introduced technique was also examined in the Python environment. Based on simulation results, several conclusions can be drawn: (i) The ResNet outshines the neural architecture search network, Inception, and Xception by elevating the average accuracy by 2.23%; (ii) the ResNet-101 model is robust against white Gaussian noise and electromagnetic interference with values of 20, 30, and 40 dB; (iii) the proposed technique enhances functional coverage up to a radius of 30 km for fault detection along 14 points in the test system; and (iv) in the presence of distributed energy resources, the proposed technique is superior to other network architectures with an average of 5.44%. |
doi_str_mv | 10.1007/s00521-024-10007-6 |
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35
×
35
pixel matrix of the digital image after passing through a band-pass filter. Additionally, and for the sake of comprehensiveness, a residual network (ResNet) was designed as a fault detector and classifier to accurately identify the location and type of faults, while guaranteeing the robustness of the proposed technique against both white and connection noises. For the sake of evaluation, a three-phase 10 kV test system was implemented in the MATLAB/Simulink environment under different faulty operating conditions designs. The performance of the introduced technique was also examined in the Python environment. Based on simulation results, several conclusions can be drawn: (i) The ResNet outshines the neural architecture search network, Inception, and Xception by elevating the average accuracy by 2.23%; (ii) the ResNet-101 model is robust against white Gaussian noise and electromagnetic interference with values of 20, 30, and 40 dB; (iii) the proposed technique enhances functional coverage up to a radius of 30 km for fault detection along 14 points in the test system; and (iv) in the presence of distributed energy resources, the proposed technique is superior to other network architectures with an average of 5.44%.</description><identifier>ISSN: 0941-0643</identifier><identifier>EISSN: 1433-3058</identifier><identifier>DOI: 10.1007/s00521-024-10007-6</identifier><language>eng</language><publisher>London: Springer London</publisher><subject>Artificial Intelligence ; Bandpass filters ; Classification ; Computational Biology/Bioinformatics ; Computational Science and Engineering ; Computer Science ; Data Mining and Knowledge Discovery ; Digital imaging ; Electric potential ; Electric power distribution ; Electromagnetic interference ; Energy sources ; Fault detection ; Fault location ; Image filters ; Image Processing and Computer Vision ; Learning ; Noise levels ; Original Article ; Phase current ; Probability and Statistics in Computer Science ; Random noise ; Robustness ; Substations ; Test systems ; Voltage</subject><ispartof>Neural computing & applications, 2024-09, Vol.36 (26), p.16125-16139</ispartof><rights>The Author(s), under exclusive licence to Springer-Verlag London Ltd., part of Springer Nature 2024. Springer Nature or its licensor (e.g. a society or other partner) holds exclusive rights to this article under a publishing agreement with the author(s) or other rightsholder(s); author self-archiving of the accepted manuscript version of this article is solely governed by the terms of such publishing agreement and applicable law.</rights><lds50>peer_reviewed</lds50><woscitedreferencessubscribed>false</woscitedreferencessubscribed><cites>FETCH-LOGICAL-c1856-52104c323a911c1fb6446c67501b227b33e9d0ca6b276a537c61fec0c40058b63</cites><orcidid>0000-0001-6301-0239</orcidid></display><links><openurl>$$Topenurl_article</openurl><openurlfulltext>$$Topenurlfull_article</openurlfulltext><thumbnail>$$Tsyndetics_thumb_exl</thumbnail><linktopdf>$$Uhttps://link.springer.com/content/pdf/10.1007/s00521-024-10007-6$$EPDF$$P50$$Gspringer$$H</linktopdf><linktohtml>$$Uhttps://link.springer.com/10.1007/s00521-024-10007-6$$EHTML$$P50$$Gspringer$$H</linktohtml><link.rule.ids>314,780,784,27924,27925,41488,42557,51319</link.rule.ids></links><search><creatorcontrib>Rasouli-Eshghabad, Jalal</creatorcontrib><creatorcontrib>Shivaie, Mojtaba</creatorcontrib><creatorcontrib>Weinsier, Philip D.</creatorcontrib><title>A transfer-learning-based robust technique for multi-type fault detection and classification using Hilbert–Huang transform in low-voltage power distribution grids</title><title>Neural computing & applications</title><addtitle>Neural Comput & Applic</addtitle><description>In this paper, the authors present a new transfer-learning-based robust technique for detection and classification of multi-type faults in low-voltage power distribution grids. Three-phase current and voltage signals were initially measured and sampled at a medium-voltage/low-voltage substation upon occurrence of a certain type of fault. Subsequently, a Hilbert–Huang transform was applied to the corresponding sampled fault signals to construct a time–frequency energy matrix as a
35
×
35
pixel matrix of the digital image after passing through a band-pass filter. Additionally, and for the sake of comprehensiveness, a residual network (ResNet) was designed as a fault detector and classifier to accurately identify the location and type of faults, while guaranteeing the robustness of the proposed technique against both white and connection noises. For the sake of evaluation, a three-phase 10 kV test system was implemented in the MATLAB/Simulink environment under different faulty operating conditions designs. The performance of the introduced technique was also examined in the Python environment. Based on simulation results, several conclusions can be drawn: (i) The ResNet outshines the neural architecture search network, Inception, and Xception by elevating the average accuracy by 2.23%; (ii) the ResNet-101 model is robust against white Gaussian noise and electromagnetic interference with values of 20, 30, and 40 dB; (iii) the proposed technique enhances functional coverage up to a radius of 30 km for fault detection along 14 points in the test system; and (iv) in the presence of distributed energy resources, the proposed technique is superior to other network architectures with an average of 5.44%.</description><subject>Artificial Intelligence</subject><subject>Bandpass filters</subject><subject>Classification</subject><subject>Computational Biology/Bioinformatics</subject><subject>Computational Science and Engineering</subject><subject>Computer Science</subject><subject>Data Mining and Knowledge Discovery</subject><subject>Digital imaging</subject><subject>Electric potential</subject><subject>Electric power distribution</subject><subject>Electromagnetic interference</subject><subject>Energy sources</subject><subject>Fault detection</subject><subject>Fault location</subject><subject>Image filters</subject><subject>Image Processing and Computer Vision</subject><subject>Learning</subject><subject>Noise levels</subject><subject>Original Article</subject><subject>Phase current</subject><subject>Probability and Statistics in Computer Science</subject><subject>Random noise</subject><subject>Robustness</subject><subject>Substations</subject><subject>Test systems</subject><subject>Voltage</subject><issn>0941-0643</issn><issn>1433-3058</issn><fulltext>true</fulltext><rsrctype>article</rsrctype><creationdate>2024</creationdate><recordtype>article</recordtype><recordid>eNp9UctOBCEQJEYT18cPeCLxjMLAMDtHY9Q12cSLngkwzIqZhbVhNN78B3_BL_NLxB0Tb56guqur01UInTB6xihtzhOldcUIrQQpmDZE7qAZE5wTTuv5LprRVpS2FHwfHaT0VDhCzusZ-rzAGXRIvQMyOA3BhxUxOrkOQzRjyjg7-xj88-hwHwGvxyF7kt82Beryx50rhOxjwDp02A46Jd97q7elMRU5vPCDcZC_3j8Woy54WhhhjX3AQ3wlL3HIeuXwJr46wJ1PGbwZtwor8F06Qnu9HpI7_n0P0cP11f3lgizvbm4vL5bEsnktSXGACssrrlvGLOuNFEJa2dSUmapqDOeu7ajV0lSN1DVvrGS9s9SK4t7cSH6ITifdDcRycMrqKY4QykrFaVvME62oCquaWBZiSuB6tQG_1vCmGFU_aagpDVXSUNs01I80n4ZSIYeVgz_pf6a-AZTvkVs</recordid><startdate>20240901</startdate><enddate>20240901</enddate><creator>Rasouli-Eshghabad, Jalal</creator><creator>Shivaie, Mojtaba</creator><creator>Weinsier, Philip D.</creator><general>Springer London</general><general>Springer Nature B.V</general><scope>AAYXX</scope><scope>CITATION</scope><orcidid>https://orcid.org/0000-0001-6301-0239</orcidid></search><sort><creationdate>20240901</creationdate><title>A transfer-learning-based robust technique for multi-type fault detection and classification using Hilbert–Huang transform in low-voltage power distribution grids</title><author>Rasouli-Eshghabad, Jalal ; Shivaie, Mojtaba ; Weinsier, Philip D.</author></sort><facets><frbrtype>5</frbrtype><frbrgroupid>cdi_FETCH-LOGICAL-c1856-52104c323a911c1fb6446c67501b227b33e9d0ca6b276a537c61fec0c40058b63</frbrgroupid><rsrctype>articles</rsrctype><prefilter>articles</prefilter><language>eng</language><creationdate>2024</creationdate><topic>Artificial Intelligence</topic><topic>Bandpass filters</topic><topic>Classification</topic><topic>Computational Biology/Bioinformatics</topic><topic>Computational Science and Engineering</topic><topic>Computer Science</topic><topic>Data Mining and Knowledge Discovery</topic><topic>Digital imaging</topic><topic>Electric potential</topic><topic>Electric power distribution</topic><topic>Electromagnetic interference</topic><topic>Energy sources</topic><topic>Fault detection</topic><topic>Fault location</topic><topic>Image filters</topic><topic>Image Processing and Computer Vision</topic><topic>Learning</topic><topic>Noise levels</topic><topic>Original Article</topic><topic>Phase current</topic><topic>Probability and Statistics in Computer Science</topic><topic>Random noise</topic><topic>Robustness</topic><topic>Substations</topic><topic>Test systems</topic><topic>Voltage</topic><toplevel>peer_reviewed</toplevel><toplevel>online_resources</toplevel><creatorcontrib>Rasouli-Eshghabad, Jalal</creatorcontrib><creatorcontrib>Shivaie, Mojtaba</creatorcontrib><creatorcontrib>Weinsier, Philip D.</creatorcontrib><collection>CrossRef</collection><jtitle>Neural computing & applications</jtitle></facets><delivery><delcategory>Remote Search Resource</delcategory><fulltext>fulltext</fulltext></delivery><addata><au>Rasouli-Eshghabad, Jalal</au><au>Shivaie, Mojtaba</au><au>Weinsier, Philip D.</au><format>journal</format><genre>article</genre><ristype>JOUR</ristype><atitle>A transfer-learning-based robust technique for multi-type fault detection and classification using Hilbert–Huang transform in low-voltage power distribution grids</atitle><jtitle>Neural computing & applications</jtitle><stitle>Neural Comput & Applic</stitle><date>2024-09-01</date><risdate>2024</risdate><volume>36</volume><issue>26</issue><spage>16125</spage><epage>16139</epage><pages>16125-16139</pages><issn>0941-0643</issn><eissn>1433-3058</eissn><abstract>In this paper, the authors present a new transfer-learning-based robust technique for detection and classification of multi-type faults in low-voltage power distribution grids. Three-phase current and voltage signals were initially measured and sampled at a medium-voltage/low-voltage substation upon occurrence of a certain type of fault. Subsequently, a Hilbert–Huang transform was applied to the corresponding sampled fault signals to construct a time–frequency energy matrix as a
35
×
35
pixel matrix of the digital image after passing through a band-pass filter. Additionally, and for the sake of comprehensiveness, a residual network (ResNet) was designed as a fault detector and classifier to accurately identify the location and type of faults, while guaranteeing the robustness of the proposed technique against both white and connection noises. For the sake of evaluation, a three-phase 10 kV test system was implemented in the MATLAB/Simulink environment under different faulty operating conditions designs. The performance of the introduced technique was also examined in the Python environment. Based on simulation results, several conclusions can be drawn: (i) The ResNet outshines the neural architecture search network, Inception, and Xception by elevating the average accuracy by 2.23%; (ii) the ResNet-101 model is robust against white Gaussian noise and electromagnetic interference with values of 20, 30, and 40 dB; (iii) the proposed technique enhances functional coverage up to a radius of 30 km for fault detection along 14 points in the test system; and (iv) in the presence of distributed energy resources, the proposed technique is superior to other network architectures with an average of 5.44%.</abstract><cop>London</cop><pub>Springer London</pub><doi>10.1007/s00521-024-10007-6</doi><tpages>15</tpages><orcidid>https://orcid.org/0000-0001-6301-0239</orcidid></addata></record> |
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subjects | Artificial Intelligence Bandpass filters Classification Computational Biology/Bioinformatics Computational Science and Engineering Computer Science Data Mining and Knowledge Discovery Digital imaging Electric potential Electric power distribution Electromagnetic interference Energy sources Fault detection Fault location Image filters Image Processing and Computer Vision Learning Noise levels Original Article Phase current Probability and Statistics in Computer Science Random noise Robustness Substations Test systems Voltage |
title | A transfer-learning-based robust technique for multi-type fault detection and classification using Hilbert–Huang transform in low-voltage power distribution grids |
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