LAPSE:2023.21117
Published Article

LAPSE:2023.21117
Partial Discharge Classification Using Deep Learning Methods—Survey of Recent Progress
March 21, 2023
Abstract
This paper examines the recent advances made in the field of Deep Learning (DL) methods for the automated identification of Partial Discharges (PD). PD activity is an indication of the state and operational conditions of electrical equipment systems. There are several techniques for on-line PD measurements, but the typical classification and recognition method is made off-line and involves an expert manually extracting appropriate features from raw data and then using these to diagnose PD type and severity. Many methods have been developed over the years, so that the appropriate features expertly extracted are used as input for Machine Learning (ML) algorithms. More recently, with the developments in computation and data storage, DL methods have been used for automated features extraction and classification. Several contributions have demonstrated that Deep Neural Networks (DNN) have better accuracy than the typical ML methods providing more efficient automated identification techniques. However, improvements could be made regarding the general applicability of the method, the data acquisition, and the optimal DNN structure.
This paper examines the recent advances made in the field of Deep Learning (DL) methods for the automated identification of Partial Discharges (PD). PD activity is an indication of the state and operational conditions of electrical equipment systems. There are several techniques for on-line PD measurements, but the typical classification and recognition method is made off-line and involves an expert manually extracting appropriate features from raw data and then using these to diagnose PD type and severity. Many methods have been developed over the years, so that the appropriate features expertly extracted are used as input for Machine Learning (ML) algorithms. More recently, with the developments in computation and data storage, DL methods have been used for automated features extraction and classification. Several contributions have demonstrated that Deep Neural Networks (DNN) have better accuracy than the typical ML methods providing more efficient automated identification techniques. However, improvements could be made regarding the general applicability of the method, the data acquisition, and the optimal DNN structure.
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Keywords
deep learning, deep neural network, fault diagnosis, fault recognition, Machine Learning, partial discharges
Subject
Suggested Citation
Barrios S, Buldain D, Comech MP, Gilbert I, Orue I. Partial Discharge Classification Using Deep Learning Methods—Survey of Recent Progress. (2023). LAPSE:2023.21117
Author Affiliations
Barrios S: Ormazabal Corporate Technology, 48340 Amorebieta, Spain
Buldain D: Department of Electronic Engineering and Communications, University of Zaragoza, 50018 Zaragoza, Spain
Comech MP: Instituto CIRCE (Universidad de Zaragoza—Fundación CIRCE), 50018 Zaragoza, Spain
Gilbert I: Ormazabal Corporate Technology, 48340 Amorebieta, Spain
Orue I: Ormazabal Corporate Technology, 48340 Amorebieta, Spain
Buldain D: Department of Electronic Engineering and Communications, University of Zaragoza, 50018 Zaragoza, Spain
Comech MP: Instituto CIRCE (Universidad de Zaragoza—Fundación CIRCE), 50018 Zaragoza, Spain
Gilbert I: Ormazabal Corporate Technology, 48340 Amorebieta, Spain
Orue I: Ormazabal Corporate Technology, 48340 Amorebieta, Spain
Journal Name
Energies
Volume
12
Issue
13
Article Number
E2485
Year
2019
Publication Date
2019-06-27
ISSN
1996-1073
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Original Submission
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PII: en12132485, Publication Type: Review
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LAPSE:2023.21117
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https://doi.org/10.3390/en12132485
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Mar 21, 2023
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