Winding Fault Detection in Power Transformers Based on Support Vector Machine and Discrete Wavelet Transform Approach

Research output: Contribution to journalArticlepeer-review

1 Citation (Scopus)

Abstract

Transformer winding faults (TWFs) can lead to insulation breakdown, internal short circuits, and catastrophic transformer failure. Due to their low current magnitude—particularly at early stages such as inter-turn short circuits, axial or radial displacement, or winding looseness—TWFs often induce minimal impedance changes and generate fault currents that remain within normal operating thresholds. As a result, conventional protection schemes like overcurrent relays, which are tuned for high-magnitude faults, fail to detect such internal anomalies. Moreover, frequency response deviations caused by TWFs often resemble those introduced by routine phenomena such as tap changer operations, load variation, or core saturation, making accurate diagnosis difficult using traditional FRA interpretation techniques. This paper presents a novel diagnostic framework combining Discrete Wavelet Transform (DWT) and Support Vector Machine (SVM) classification to improve the detection of TWFs. The proposed system employs region-based statistical deviation labeling to enhance interpretability across five well-defined frequency bands. It is validated on five real FRA datasets obtained from operating transformers in Gauteng Province, South Africa, covering a range of MVA ratings and configurations, thereby confirming model transferability. The system supports post-processing but is lightweight enough for near real-time diagnostic use, with average execution time under 12 s per case on standard hardware. A custom graphical user interface (GUI), developed in MATLAB R2022a, automates the diagnostic workflow—including region identification, wavelet-based decomposition visualization, and PDF report generation. The complete framework is released as an open-access toolbox for transformer condition monitoring and predictive maintenance.

Original languageEnglish
Article number200
JournalTechnologies
Volume13
Issue number5
DOIs
Publication statusPublished - May 2025

Keywords

  • condition monitoring
  • discrete wavelet transform (DWT)
  • Frequency Response Analysis (FRA)
  • support vector machine (SVM)
  • transformer winding faults (TWFs)

ASJC Scopus subject areas

  • Computer Science (miscellaneous)

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