Machine Learning for Power Transformer Sfra Based Fault Detection

Author:

Bjelić Miloš1,Brković Bogdan1,Žarković Mileta1,Miljković Tatjana1

Affiliation:

1. University of Belgrade

Abstract

Abstract This paper presents machine learning methods for health assessment of power transformer based on sweep frequency response analysis. The paper presents an overview of monitoring and diagnostics based on statistical Sweep Frequency Response Analysis (SFRA) based indicators that are used to evaluate the state of the power transformer. Experimental data obtained from power transformers with internal short-circuit faults is used as a database for applying machine learning. Machine learning is implemented to achieve more precise asset management and condition-based maintenance. Unsupervised machine learning was applied through the k-means cluster method for classifying and dividing the examined power transformer state into groups with similar state and probability of failure. Artificial neural network (ANN) and Adaptive Neuro Fuzzy Inference System (ANFIS) as part of supervised machine learning are created in order to detect fault severity in tested power transformers of different lifetime. The presented machine learning methods can be used to improve health assessment of power transformers.

Publisher

Research Square Platform LLC

Reference21 articles.

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2. New SFRA measurement interpretation methodology for the diagnosis of power transformers;Secue JR;Electrical Engineering,2014

3. IEEE PC57.149/D8 (2012) Guide for the Application and Interpretation of Frequency Response Analysis for Oil Immersed Transformers

4. IEC 60076-18 (2012) Power transformers - Part 18: Measurement of frequency response.

5. CIGRE Working Group A2.26 (2008) Mechanical-condition assessment of transformer windings using frequency response analysis.

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