Energies (Jun 2024)

New Insights into Gas-in-Oil-Based Fault Diagnosis of Power Transformers

  • Felipe M. Laburú,
  • Thales W. Cabral,
  • Felippe V. Gomes,
  • Eduardo R. de Lima,
  • José C. S. S. Filho,
  • Luís G. P. Meloni

DOI
https://doi.org/10.3390/en17122889
Journal volume & issue
Vol. 17, no. 12
p. 2889

Abstract

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The dissolved gas analysis of insulating oil in power transformers can provide valuable information about fault diagnosis. Power transformer datasets are often imbalanced, worsening the performance of machine learning-based fault classifiers. A critical step is choosing the proper evaluation metric to select features, models, and oversampling techniques. However, no clear-cut, thorough guidance on that choice is available to date. In this work, we shed light on this subject by introducing new tailored evaluation metrics. Our results and discussions bring fresh insights into which learning setups are more effective for imbalanced datasets.

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