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ISSN Approved Journal || eISSN: 2582-8185 || CODEN: IJSRO2 || Impact Factor 8.2 || Google Scholar and CrossRef Indexed

Peer Reviewed and Referred Journal || Free Certificate of Publication

Research and review articles are invited for publication in March 2026 (Volume 18, Issue 3) Submit manuscript

Machine learning advances in transmission line fault detection: A literature review

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  • Machine learning advances in transmission line fault detection: A literature review

Judy Lhyn Porlaje Sarmiento *, Jam Cyrex De Villa Delfino and Edwin Romeroso Arboleda

Department of Computer, Electronics and Electrical Engineering, College of Engineering and Information Technology, Cavite State University Main-Campus, Indang, Cavite, Philippines.

Review Article
 
International Journal of Science and Research Archive, 2024, 12(01), 2880–2887.
Article DOI: 10.30574/ijsra.2024.12.1.1150
DOI url: https://doi.org/10.30574/ijsra.2024.12.1.1150

Received on 13 May 2024; revised on 24 June 2024; accepted on 27 June 2024

Fault detection in transmission lines plays a role in maintaining the dependability and steadiness of power networks. Traditional methods for identifying faults often struggle to handle the diverse nature of real world fault situations. Machine learning (ML) algorithms offer a data centered approach that can adjust and learn from datasets potentially overcoming the limitations of traditional approaches. This document presents a review of progress in using ML for detecting faults in transmission lines. By drawing insights from a variety of studies we explore how ML algorithms have evolved in fault detection, including techniques like networks, recurrent neural networks featuring Long Short Term Memory and convolutional neural networks. We delve into the spectrum of applications where ML is used for fault detection across fault scenarios and operational settings. Additionally we discuss the obstacles and prospects linked to putting ML based fault detection systems into practice such as challenges with data quality, model interpretability and integration with existing grid monitoring systems. Lastly we outline future research paths focused on pushing forward the boundaries of fault detection, in power transmission systems through approaches and collaborative endeavors involving academia, industry players and policymakers. In general, this review highlights how machine learning has the power to revolutionize fault detection methods enhancing the resilience and dependability of power systems.

Transmission line fault detection; Machine learning; Neural networks; Fault scenarios

https://ijsra.net/sites/default/files/fulltext_pdf/IJSRA-2024-1150.pdf

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Judy Lhyn Porlaje Sarmiento, Jam Cyrex De Villa Delfino and Edwin Romeroso Arboleda. Machine learning advances in transmission line fault detection: A literature review. International Journal of Science and Research Archive, 2024, 12(01), 2880–2887. Article DOI: https://doi.org/10.30574/ijsra.2024.12.1.1150

Copyright © Author(s). All rights reserved. This article is published under the terms of the Creative Commons Attribution 4.0 International License (CC BY 4.0), which permits use, sharing, adaptation, distribution, and reproduction in any medium or format, as long as appropriate credit is given to the original author(s) and source, a link to the license is provided, and any changes made are indicated.


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