Robust fault detection and classification in power transmission lines via ensemble machine learning models

Abstract Transmission lines are vital for delivering electricity over long distances, yet they face reliability challenges due to faults that can disrupt power supply and pose safety risks. This research introduces a novel approach for fault detection and classification by analyzing voltage and curr...

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Main Authors: Tahir Anwar, Chaoxu Mu, Muhammad Zain Yousaf, Wajid Khan, Saqib Khalid, Ahmad O. Hourani, Ievgen Zaitsev
Format: Article
Language:English
Published: Nature Portfolio 2025-01-01
Series:Scientific Reports
Subjects:
Online Access:https://doi.org/10.1038/s41598-025-86554-2
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author Tahir Anwar
Chaoxu Mu
Muhammad Zain Yousaf
Wajid Khan
Saqib Khalid
Ahmad O. Hourani
Ievgen Zaitsev
author_facet Tahir Anwar
Chaoxu Mu
Muhammad Zain Yousaf
Wajid Khan
Saqib Khalid
Ahmad O. Hourani
Ievgen Zaitsev
author_sort Tahir Anwar
collection DOAJ
description Abstract Transmission lines are vital for delivering electricity over long distances, yet they face reliability challenges due to faults that can disrupt power supply and pose safety risks. This research introduces a novel approach for fault detection and classification by analyzing voltage and current patterns across transmission line phases. Leveraging a comprehensive dataset of diverse fault scenarios, various machine learning algorithms—including Random Forest (RF), K-Nearest Neighbors (KNN), and Long Short-Term Memory (LSTM) networks—are evaluated. An ensemble methodology, RF-LSTM Tuned KNN, is proposed to enhance detection accuracy and robustness. Results indicate that RF-LSTM Tuned KNN achieves a remarkable accuracy of 99.96% on a multi-label dataset, outperforming RF (97.50%) and KNN (96.55%). In binary classification, KNN attains the highest accuracy of 99.85%, closely followed by RF at 99.72%. This methodology provides significant advancements in fault detection capabilities, offering valuable insights for improving grid reliability and stability, and ensuring a more resilient power supply.
format Article
id doaj-art-ed08382622074769b038044fe0161ccc
institution Kabale University
issn 2045-2322
language English
publishDate 2025-01-01
publisher Nature Portfolio
record_format Article
series Scientific Reports
spelling doaj-art-ed08382622074769b038044fe0161ccc2025-01-26T12:24:13ZengNature PortfolioScientific Reports2045-23222025-01-0115111710.1038/s41598-025-86554-2Robust fault detection and classification in power transmission lines via ensemble machine learning modelsTahir Anwar0Chaoxu Mu1Muhammad Zain Yousaf2Wajid Khan3Saqib Khalid4Ahmad O. Hourani5Ievgen Zaitsev6School of Electrical and Information Engineering, Tianjin UniversitySchool of Electrical and Information Engineering, Tianjin UniversityCenter for Renewable Energy and Microgrids, Huanjiang Laboratory, Zhejiang UniversitySchool of Electrical and Information Engineering, Tianjin UniversitySchool of Electrical Engineering, The University of LahoreHourani Center for Applied Scientific Research, Al-Ahliyya Amman UniversityDepartment of Theoretical Electrical Engineering and Diagnostics of Electrical Equipment, Institute of Electrodynamics, National Academy of Sciences of UkraineAbstract Transmission lines are vital for delivering electricity over long distances, yet they face reliability challenges due to faults that can disrupt power supply and pose safety risks. This research introduces a novel approach for fault detection and classification by analyzing voltage and current patterns across transmission line phases. Leveraging a comprehensive dataset of diverse fault scenarios, various machine learning algorithms—including Random Forest (RF), K-Nearest Neighbors (KNN), and Long Short-Term Memory (LSTM) networks—are evaluated. An ensemble methodology, RF-LSTM Tuned KNN, is proposed to enhance detection accuracy and robustness. Results indicate that RF-LSTM Tuned KNN achieves a remarkable accuracy of 99.96% on a multi-label dataset, outperforming RF (97.50%) and KNN (96.55%). In binary classification, KNN attains the highest accuracy of 99.85%, closely followed by RF at 99.72%. This methodology provides significant advancements in fault detection capabilities, offering valuable insights for improving grid reliability and stability, and ensuring a more resilient power supply.https://doi.org/10.1038/s41598-025-86554-2Transmission linesFault detectionMachine learningEnsemble learningPower stability
spellingShingle Tahir Anwar
Chaoxu Mu
Muhammad Zain Yousaf
Wajid Khan
Saqib Khalid
Ahmad O. Hourani
Ievgen Zaitsev
Robust fault detection and classification in power transmission lines via ensemble machine learning models
Scientific Reports
Transmission lines
Fault detection
Machine learning
Ensemble learning
Power stability
title Robust fault detection and classification in power transmission lines via ensemble machine learning models
title_full Robust fault detection and classification in power transmission lines via ensemble machine learning models
title_fullStr Robust fault detection and classification in power transmission lines via ensemble machine learning models
title_full_unstemmed Robust fault detection and classification in power transmission lines via ensemble machine learning models
title_short Robust fault detection and classification in power transmission lines via ensemble machine learning models
title_sort robust fault detection and classification in power transmission lines via ensemble machine learning models
topic Transmission lines
Fault detection
Machine learning
Ensemble learning
Power stability
url https://doi.org/10.1038/s41598-025-86554-2
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AT saqibkhalid robustfaultdetectionandclassificationinpowertransmissionlinesviaensemblemachinelearningmodels
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