Fault detection and classification of an HVDC transmission line using a heterogenous multi‐machine learning algorithm
Abstract This paper presents a novel integrated multi‐Machine Learning (ML) system architecture for the protection of bipolar HVDC transmission line in which different ML models of Support Vector Machine (SVM) and K‐Nearest Neighbours (KNN) are used for fault detection and classification. The KNN fa...
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Online Access: | https://doi.org/10.1049/gtd2.12180 |
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doaj-48e938f2fa924c71963a9615e72203de2021-07-14T13:26:05ZengWileyIET Generation, Transmission & Distribution1751-86871751-86952021-08-0115162319233210.1049/gtd2.12180Fault detection and classification of an HVDC transmission line using a heterogenous multi‐machine learning algorithmSaber Ghashghaei0Mahdi Akhbari1Department of Electrical Engineering Shahed University Tehran IranDepartment of Electrical Engineering Shahed University Tehran IranAbstract This paper presents a novel integrated multi‐Machine Learning (ML) system architecture for the protection of bipolar HVDC transmission line in which different ML models of Support Vector Machine (SVM) and K‐Nearest Neighbours (KNN) are used for fault detection and classification. The KNN fault type classifier is designed as a dual‐purpose module, which not only detects the fault type but also acts as a redundant module for unsure fault declaration from the startup unit. Gradients and standard deviations of DC current, voltage, harmonic current, and a correlation coefficient between the aerial and zero modes of DC current are appropriate feature vector extracted from single‐end signal measurement. Overall, 154 training cases and 53 main test cases are obtained by simulating various fault and non‐fault states on a ±650 kV‐1000 km Current Source Converter (CSC)–HVDC using an EMTDC/PSCAD platform. The ML modules are trained in MATLAB and tested under different severe conditions with a total of 2220 test cases. Thanks to the appropriate feature vector and the proposed system architecture, the obtained results show that the proposed algorithm is effective enough to detect and distinguish a variety of internal faults and pseudo‐faults/external faults. Also, it needs low training data requirements.https://doi.org/10.1049/gtd2.12180 |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Saber Ghashghaei Mahdi Akhbari |
spellingShingle |
Saber Ghashghaei Mahdi Akhbari Fault detection and classification of an HVDC transmission line using a heterogenous multi‐machine learning algorithm IET Generation, Transmission & Distribution |
author_facet |
Saber Ghashghaei Mahdi Akhbari |
author_sort |
Saber Ghashghaei |
title |
Fault detection and classification of an HVDC transmission line using a heterogenous multi‐machine learning algorithm |
title_short |
Fault detection and classification of an HVDC transmission line using a heterogenous multi‐machine learning algorithm |
title_full |
Fault detection and classification of an HVDC transmission line using a heterogenous multi‐machine learning algorithm |
title_fullStr |
Fault detection and classification of an HVDC transmission line using a heterogenous multi‐machine learning algorithm |
title_full_unstemmed |
Fault detection and classification of an HVDC transmission line using a heterogenous multi‐machine learning algorithm |
title_sort |
fault detection and classification of an hvdc transmission line using a heterogenous multi‐machine learning algorithm |
publisher |
Wiley |
series |
IET Generation, Transmission & Distribution |
issn |
1751-8687 1751-8695 |
publishDate |
2021-08-01 |
description |
Abstract This paper presents a novel integrated multi‐Machine Learning (ML) system architecture for the protection of bipolar HVDC transmission line in which different ML models of Support Vector Machine (SVM) and K‐Nearest Neighbours (KNN) are used for fault detection and classification. The KNN fault type classifier is designed as a dual‐purpose module, which not only detects the fault type but also acts as a redundant module for unsure fault declaration from the startup unit. Gradients and standard deviations of DC current, voltage, harmonic current, and a correlation coefficient between the aerial and zero modes of DC current are appropriate feature vector extracted from single‐end signal measurement. Overall, 154 training cases and 53 main test cases are obtained by simulating various fault and non‐fault states on a ±650 kV‐1000 km Current Source Converter (CSC)–HVDC using an EMTDC/PSCAD platform. The ML modules are trained in MATLAB and tested under different severe conditions with a total of 2220 test cases. Thanks to the appropriate feature vector and the proposed system architecture, the obtained results show that the proposed algorithm is effective enough to detect and distinguish a variety of internal faults and pseudo‐faults/external faults. Also, it needs low training data requirements. |
url |
https://doi.org/10.1049/gtd2.12180 |
work_keys_str_mv |
AT saberghashghaei faultdetectionandclassificationofanhvdctransmissionlineusingaheterogenousmultimachinelearningalgorithm AT mahdiakhbari faultdetectionandclassificationofanhvdctransmissionlineusingaheterogenousmultimachinelearningalgorithm |
_version_ |
1721302681308364800 |