Separation and Classification of Partial Discharge Sources in Substations

Author:

Melo João Victor Jales1ORCID,Lira George Rossany Soares2ORCID,Costa Edson Guedes2ORCID,Vilar Pablo Bezerra2ORCID,Andrade Filipe Lucena Medeiros3,Marotti Ana Cristina Freitas4,Costa Andre Irani4,Leite Neto Antonio Francisco1ORCID,Santos Júnior Almir Carlos dos1ORCID

Affiliation:

1. Postgraduate Program in Electrical Engineering, Federal University of Campina Grande, Campina Grande 58428-830, Brazil

2. Electrical Engineering Department, Federal University of Campina Grande, Campina Grande 58428-830, Brazil

3. Electrical Engineering Department, Federal Institute of Paraíba, Patos 58700-000, Brazil

4. Eletrobras, Centrais Elétricas Brasileiras S.A., Rio de Janeiro 20040-002, Brazil

Abstract

This work proposes a methodology for noise removal, separation, and classification of partial discharges in electrical system assets. Partial discharge analysis is an essential method for fault detection and evaluation of the operational conditions of high-voltage equipment. However, it faces several limitations in field measurements due to interference from radio signals, television transmissions, WiFi, corona signals, and multiple sources of partial discharges. To address these challenges, we propose the development of a clustering model to identify partial discharge sources and a classification model to identify the types of discharges. New features extracted from pulses are introduced to model the clustering and classification of discharge sources. The methodology is tested in the laboratory with controlled partial discharge sources, and field tests are conducted in substations to assess its practical applicability. The results of laboratory tests achieved an accuracy of 85% in classifying discharge sources. Field tests were performed in a substation of the Eletrobras group, allowing the identification of at least three potentially defective current transformers.

Funder

Coordination for the Improvement of Higher Education Personnel

National Council for Scientific and Technological Development

Brazilian Electricity Sector R&D Program

Publisher

MDPI AG

Reference27 articles.

1. Ju, H.J., Lee, J.G., Han, K.S., Kang, J.W., and Choi, W. (2022, January 15–18). An Analysis of Partial Discharge Characteristics due to Transformer Bushing Failure. Proceedings of the ICEPE-ST, Seoul, Republic of Korea.

2. Tanmaneeprasert, T., Lewin, P.L., and Callender, G. (2017, January 14–17). Analysis of degradation mechanisms of silicone insulation containing a spherical cavity using partial discharge detection. Proceedings of the EIC 2017, Baltimore, MD, USA.

3. McDermid, W., and Black, T. (2012, January 10–13). Failure of service aged 230 kV current transformers. Proceedings of the Conference Record of IEEE International Symposium on Electrical Insulation, San Juan, PR, USA.

4. Macêdo, E.C.T. (2014). Metodologia para a Classificação de Descargas Parciais Utilizando Redes Neurais Artificiais. [Doctoral Thesis, Universidade Federal de Campina Grande].

5. Lira, G.R.S., Marotti, A., Vilar, P.B., Costa, E.G., Leite Neto, A.F., Melo, J.V.J., Costa, A.I., Dias, I.M., Andrade, F.L., and Souza, J.P.A. (2023, January 26–29). Monitoramento inteligente das condições operacionais de transformadores de corrente. Proceedings of the XXVII SNPTEE, Brasilia, Brazil.

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