A Support Vector Machine Learning-Based Protection Technique for MT-HVDC Systems

High voltage direct current (HVDC) transmission systems are suitable for power transfer to meet the increasing demands of bulk energy and encourage interconnected power systems to incorporate renewable energy sources without any fear of loss of synchronism, reliability, and efficiency. The main chal...

Full description

Bibliographic Details
Main Authors: Raheel Muzzammel, Ali Raza
Format: Article
Language:English
Published: MDPI AG 2020-12-01
Series:Energies
Subjects:
Online Access:https://www.mdpi.com/1996-1073/13/24/6668
id doaj-ec9f95657e14485b90a381c69d9b3fee
record_format Article
spelling doaj-ec9f95657e14485b90a381c69d9b3fee2020-12-18T00:02:44ZengMDPI AGEnergies1996-10732020-12-01136668666810.3390/en13246668A Support Vector Machine Learning-Based Protection Technique for MT-HVDC SystemsRaheel Muzzammel0Ali Raza1Department of Electrical Engineering, University of Lahore, Lahore 54000, PakistanDepartment of Electrical Engineering, University of Lahore, Lahore 54000, PakistanHigh voltage direct current (HVDC) transmission systems are suitable for power transfer to meet the increasing demands of bulk energy and encourage interconnected power systems to incorporate renewable energy sources without any fear of loss of synchronism, reliability, and efficiency. The main challenge associated with DC grid protection is the timely diagnosis of DC faults because of its rapid built up, resulting in failures of power electronic circuitries. Therefore, the demolition of HVDC systems is evaded by identification, classification, and location of DC faults within milliseconds (ms). In this research, the support vector machine (SVM)-based protection algorithm is developed so that DC faults could be identified, classified, and located in multi-terminal high voltage direct current (MT-HVDC) systems. A four-terminal HVDC system is developed in Matlab/Simulink for the analysis of DC voltages and currents. Pole to ground and pole to pole faults are applied at different locations and times. Principal component analysis (PCA) is used to extract reduced dimensional features. These features are employed for the training and testing of SVM. It is found from simulations that DC faults are identified, classified, and located within 0.15 ms, ensuring speedy DC grid protection. The realization and practicality of the proposed machine learning algorithm are demonstrated by analyzing more straightforward computations of standard deviation and normalization.https://www.mdpi.com/1996-1073/13/24/6668DC grid protectionMT-HVDC transmission systemsfault identificationfault classificationfault locationsupport vector machine (SVM)
collection DOAJ
language English
format Article
sources DOAJ
author Raheel Muzzammel
Ali Raza
spellingShingle Raheel Muzzammel
Ali Raza
A Support Vector Machine Learning-Based Protection Technique for MT-HVDC Systems
Energies
DC grid protection
MT-HVDC transmission systems
fault identification
fault classification
fault location
support vector machine (SVM)
author_facet Raheel Muzzammel
Ali Raza
author_sort Raheel Muzzammel
title A Support Vector Machine Learning-Based Protection Technique for MT-HVDC Systems
title_short A Support Vector Machine Learning-Based Protection Technique for MT-HVDC Systems
title_full A Support Vector Machine Learning-Based Protection Technique for MT-HVDC Systems
title_fullStr A Support Vector Machine Learning-Based Protection Technique for MT-HVDC Systems
title_full_unstemmed A Support Vector Machine Learning-Based Protection Technique for MT-HVDC Systems
title_sort support vector machine learning-based protection technique for mt-hvdc systems
publisher MDPI AG
series Energies
issn 1996-1073
publishDate 2020-12-01
description High voltage direct current (HVDC) transmission systems are suitable for power transfer to meet the increasing demands of bulk energy and encourage interconnected power systems to incorporate renewable energy sources without any fear of loss of synchronism, reliability, and efficiency. The main challenge associated with DC grid protection is the timely diagnosis of DC faults because of its rapid built up, resulting in failures of power electronic circuitries. Therefore, the demolition of HVDC systems is evaded by identification, classification, and location of DC faults within milliseconds (ms). In this research, the support vector machine (SVM)-based protection algorithm is developed so that DC faults could be identified, classified, and located in multi-terminal high voltage direct current (MT-HVDC) systems. A four-terminal HVDC system is developed in Matlab/Simulink for the analysis of DC voltages and currents. Pole to ground and pole to pole faults are applied at different locations and times. Principal component analysis (PCA) is used to extract reduced dimensional features. These features are employed for the training and testing of SVM. It is found from simulations that DC faults are identified, classified, and located within 0.15 ms, ensuring speedy DC grid protection. The realization and practicality of the proposed machine learning algorithm are demonstrated by analyzing more straightforward computations of standard deviation and normalization.
topic DC grid protection
MT-HVDC transmission systems
fault identification
fault classification
fault location
support vector machine (SVM)
url https://www.mdpi.com/1996-1073/13/24/6668
work_keys_str_mv AT raheelmuzzammel asupportvectormachinelearningbasedprotectiontechniqueformthvdcsystems
AT aliraza asupportvectormachinelearningbasedprotectiontechniqueformthvdcsystems
AT raheelmuzzammel supportvectormachinelearningbasedprotectiontechniqueformthvdcsystems
AT aliraza supportvectormachinelearningbasedprotectiontechniqueformthvdcsystems
_version_ 1724378938444087296