LAPSE:2023.19165
Published Article

LAPSE:2023.19165
A Parameter-Free Approach for Fault Section Detection on Distribution Networks Employing Gated Recurrent Unit
March 9, 2023
Abstract
Faults in distribution networks can result in severe transients, equipment failure, and power outages. The quick and accurate detection of the faulty section enables the operator to avoid prolonged power outages and economic losses by quickly retrieving the network. However, the occurrence of diverse fault types with various resistances and locations and the highly non-linear nature of distribution networks make fault section detection challenging for numerous conventional techniques. This study presents a cutting-edge deep learning-based algorithm to distinguish fault sections in distribution networks to address these issues. The proposed gated recurrent unit model utilizes only two samples of the angle between the voltage and current on either side of the feeders, which record by smart feeder meters, to detect faulty sections in real time. When a network fault occurs, the protection relays trigger the trip command for the breakers. Immediately, the angle data are obtained from all smart feeder meters of the network, which comprises a pre-fault sample and a post-fault sample. The data are then employed as an input to the pre-trained gated recurrent unit model to determine the faulted line. The performance of this novel algorithm was validated through simulations of various fault types in the IEEE-33 bus system. The model recognizes the faulty section with competitive performance in terms of accuracy.
Faults in distribution networks can result in severe transients, equipment failure, and power outages. The quick and accurate detection of the faulty section enables the operator to avoid prolonged power outages and economic losses by quickly retrieving the network. However, the occurrence of diverse fault types with various resistances and locations and the highly non-linear nature of distribution networks make fault section detection challenging for numerous conventional techniques. This study presents a cutting-edge deep learning-based algorithm to distinguish fault sections in distribution networks to address these issues. The proposed gated recurrent unit model utilizes only two samples of the angle between the voltage and current on either side of the feeders, which record by smart feeder meters, to detect faulty sections in real time. When a network fault occurs, the protection relays trigger the trip command for the breakers. Immediately, the angle data are obtained from all smart feeder meters of the network, which comprises a pre-fault sample and a post-fault sample. The data are then employed as an input to the pre-trained gated recurrent unit model to determine the faulted line. The performance of this novel algorithm was validated through simulations of various fault types in the IEEE-33 bus system. The model recognizes the faulty section with competitive performance in terms of accuracy.
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Keywords
deep learning, distribution network, fault section, GRU, real time, smart feeder meter
Subject
Suggested Citation
Shadi MR, Mirshekali H, Dashti R, Ameli MT, Shaker HR. A Parameter-Free Approach for Fault Section Detection on Distribution Networks Employing Gated Recurrent Unit. (2023). LAPSE:2023.19165
Author Affiliations
Shadi MR: Department of Electrical Engineering, Shahid Beheshti University, Tehran 1983969411, Iran [ORCID]
Mirshekali H: Clinical-Laboratory Center of Power System & Protection, Faculty of Intelligent Systems Engineering and Data Science, Persian Gulf University, Bushehr 75169113817, Iran
Dashti R: Clinical-Laboratory Center of Power System & Protection, Faculty of Intelligent Systems Engineering and Data Science, Persian Gulf University, Bushehr 75169113817, Iran [ORCID]
Ameli MT: Department of Electrical Engineering, Shahid Beheshti University, Tehran 1983969411, Iran
Shaker HR: Center for Energy Informatics, University of Southern Denmark, DK-5230 Odense, Denmark [ORCID]
Mirshekali H: Clinical-Laboratory Center of Power System & Protection, Faculty of Intelligent Systems Engineering and Data Science, Persian Gulf University, Bushehr 75169113817, Iran
Dashti R: Clinical-Laboratory Center of Power System & Protection, Faculty of Intelligent Systems Engineering and Data Science, Persian Gulf University, Bushehr 75169113817, Iran [ORCID]
Ameli MT: Department of Electrical Engineering, Shahid Beheshti University, Tehran 1983969411, Iran
Shaker HR: Center for Energy Informatics, University of Southern Denmark, DK-5230 Odense, Denmark [ORCID]
Journal Name
Energies
Volume
14
Issue
19
First Page
6361
Year
2021
Publication Date
2021-10-05
ISSN
1996-1073
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Original Submission
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PII: en14196361, Publication Type: Journal Article
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LAPSE:2023.19165
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https://doi.org/10.3390/en14196361
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Mar 9, 2023
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