LAPSE:2023.6981v1
Published Article

LAPSE:2023.6981v1
Machine Learning Based Protection Scheme for Low Voltage AC Microgrids
February 24, 2023
Abstract
The microgrid (MG) is a popular concept to handle the high penetration of distributed energy resources, such as renewable and energy storage systems, into electric grids. However, the integration of inverter-interfaced distributed generation units (IIDGs) imposes control and protection challenges. Fault identification, classification and isolation are major concerns with IIDGs-based active MGs where IIDGs reveal arbitrary impedance and thus different fault characteristics. Moreover, bidirectional complex power flow creates extra difficulties for fault analysis. This makes the conventional methods inefficient, and a new paradigm in protection schemes is needed for IIDGs-dominated MGs. In this paper, a machine-learning (ML)-based protection technique is developed for IIDG-based AC MGs by extracting unique and novel features for detecting and classifying symmetrical and unsymmetrical faults. Different signals, namely, 400 samples, for wide variations in operating conditions of an MG are obtained through electromagnetic transient simulations in DIgSILENT PowerFactory. After retrieving and pre-processing the signals, 10 different feature extraction techniques, including new peaks metric and max factor, are applied to obtain 100 features. They are ranked using the Kruskal−Wallis H-Test to identify the best performing features, apart from estimating predictor importance for ensemble ML classification. The top 18 features are used as input to train 35 classification learners. Random Forest (RF) outperformed all other ML classifiers for fault detection and fault type classification with faulted phase identification. Compared to previous methods, the results show better performance of the proposed method.
The microgrid (MG) is a popular concept to handle the high penetration of distributed energy resources, such as renewable and energy storage systems, into electric grids. However, the integration of inverter-interfaced distributed generation units (IIDGs) imposes control and protection challenges. Fault identification, classification and isolation are major concerns with IIDGs-based active MGs where IIDGs reveal arbitrary impedance and thus different fault characteristics. Moreover, bidirectional complex power flow creates extra difficulties for fault analysis. This makes the conventional methods inefficient, and a new paradigm in protection schemes is needed for IIDGs-dominated MGs. In this paper, a machine-learning (ML)-based protection technique is developed for IIDG-based AC MGs by extracting unique and novel features for detecting and classifying symmetrical and unsymmetrical faults. Different signals, namely, 400 samples, for wide variations in operating conditions of an MG are obtained through electromagnetic transient simulations in DIgSILENT PowerFactory. After retrieving and pre-processing the signals, 10 different feature extraction techniques, including new peaks metric and max factor, are applied to obtain 100 features. They are ranked using the Kruskal−Wallis H-Test to identify the best performing features, apart from estimating predictor importance for ensemble ML classification. The top 18 features are used as input to train 35 classification learners. Random Forest (RF) outperformed all other ML classifiers for fault detection and fault type classification with faulted phase identification. Compared to previous methods, the results show better performance of the proposed method.
Record ID
Keywords
AC microgrid protection, Fault Detection, fault type classification, faulted phase identification, feature extraction, Machine Learning, max factor, peaks metric
Subject
Suggested Citation
Uzair M, Eskandari M, Li L, Zhu J. Machine Learning Based Protection Scheme for Low Voltage AC Microgrids. (2023). LAPSE:2023.6981v1
Author Affiliations
Uzair M: School of Electrical and Data Engineering, University of Technology Sydney, Ultimo, NSW 2007, Australia [ORCID]
Eskandari M: School of Electrical Engineering and Telecommunication, University of New South Wales, Sydney, NSW 2052, Australia [ORCID]
Li L: School of Electrical and Data Engineering, University of Technology Sydney, Ultimo, NSW 2007, Australia [ORCID]
Zhu J: School of Electrical and Information Engineering, The University of Sydney, Camperdown, NSW 2006, Australia [ORCID]
Eskandari M: School of Electrical Engineering and Telecommunication, University of New South Wales, Sydney, NSW 2052, Australia [ORCID]
Li L: School of Electrical and Data Engineering, University of Technology Sydney, Ultimo, NSW 2007, Australia [ORCID]
Zhu J: School of Electrical and Information Engineering, The University of Sydney, Camperdown, NSW 2006, Australia [ORCID]
Journal Name
Energies
Volume
15
Issue
24
First Page
9397
Year
2022
Publication Date
2022-12-12
ISSN
1996-1073
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Original Submission
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PII: en15249397, Publication Type: Journal Article
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LAPSE:2023.6981v1
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https://doi.org/10.3390/en15249397
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