Determining the Remaining Functional Life of Power Transformers Using Multiple Methods of Diagnosing the Operating Condition Based on SVM Classification Algorithms

Author:

Aciu Ancuța-Mihaela1ORCID,Nițu Maria-Cristina1ORCID,Nicola Claudiu-Ionel12ORCID,Nicola Marcel12ORCID

Affiliation:

1. Research and Development Department, National Institute for Research, Development and Testing in Electrical Engineering-ICMET Craiova, 200746 Craiova, Romania

2. Department of Automatic Control and Electronics, University of Craiova, 200585 Craiova, Romania

Abstract

Starting from the current need for the safety of energy systems, in which power transformers play a key role, the study of the health of power transformers in service is a difficult and complex task, since the assessment consists of identifying indicators that can provide accurate data on the extent of degradation of transformer components and subcomponents, in order to establish a model for predicting the remaining life of transformers. Therefore, this paper proposes a model for assessing the remaining service life by diagnosing the condition of the transformer based on the health index (HI) obtained from a multi-parameter analysis. To determine the condition of power transformers, a number of methods are presented based on the combination of the combined Duval pentagon (PDC) method and ethylene concentration (C2H4) to determine the fault condition, the combination of the degree of polymerisation (DP) and moisture to determine the condition of the cellulose insulation and the use of the oil quality index (OQIN) to determine the condition of the oil. For each of the classification methods presented, applications based on machine learning (ML), in particular support vector machine (SVM), have been implemented for automatic classification using the Matlab development environment. The global algorithmic approach presented in this paper subscribes to the idea of event-based maintenance. Two case studies are also presented to validate SVM-based classification methods and algorithms.

Funder

Ministry of Research, Innovation, and Digitization

Publisher

MDPI AG

Subject

Electrical and Electronic Engineering,Industrial and Manufacturing Engineering,Control and Optimization,Mechanical Engineering,Computer Science (miscellaneous),Control and Systems Engineering

Reference47 articles.

1. CIGRÉ (2022). Life Extension of Oil Filled Transformers and Shunt Reactors, Technical Brochure No. 887; CIGRÉ. W.G. A2.55.

2. CIGRÉ (2019). Condition Assessment of Power Transformers, Technical Brochure No. 761; CIGRÉ. WG A2.49.

3. Prasojo, R.A., Setiawan, A., Suwarno, A., Maulidevi, N.U., and Soedjarno, B.A. (2021, January 12–14). Development of Power Transformer Remaining Life Model Using Multi-Parameters. Proceedings of the 13th International Conference on the Properties and Applications of Dielectric Materials (ICPADM), Johor Bahru, Malaysia.

4. Significance and detection of very low degree of polymerization of paper in transformers;Duval;IEEE Electr. Insul. Mag.,2017

5. Multiparameter-Based Fuzzy Logic Health Index Assessment for Oil-Immersed Power Transformers;Mharakurwa;Hindawi Adv. Fuzzy Sys.,2019

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