Intelligent Interpretation of Dissolved Gases in Transformer Oil With Electronic Nose and Machine Learning

Govindarajan, S; Devarajan, H; Ardila-rey JA; Cerda-Luna, MP; Araya, SLT; Diaz, CCD

Keywords: minerals, oils, monitoring, genetic algorithms, accuracy, support vector machines, Pollution measurement, Oil insulation

Abstract

Dissolved gas analysis (DGA) is crucial for identifying incipient failures in transformers by analyzing gas concentrations due to degradation. However, its high cost and time-consuming nature limit practical use. To address this, a metal-oxide semiconductor based electronic nose (E-nose) is utilized in this study to detect gases in transformer oil, including hydrogen (H-2), methane (CH4), ethane (C2H6), ethylene (C2H4), and acetylene (C2H2). Machine learning techniques are integrated with the E-nose system to enhance classification performance. Experimental results using artificially contaminated mineral oil samples demonstrate promising accuracy in gas classification. Initially, without feature reduction, the F1 score was 0.2972. Feature ranking increased the F1 score to 0.7956, and after implementing dimensionality reduction, it further improved to 0.9313. Subsequently, the combination of support vector machine and genetic algorithm was employed for sensor selection, achieving an F1 score of 0.9869. Among the combinations of 2, 3, and 4 sensors, MQ 8 and TGS 2612 consistently showed the best F1 scores, with TGS 813 and TGS 2611 also contributing significantly. This innovative approach suggests a potential solution for transformer oil condition monitoring, offering a rapid, simple, and cost-effective alternative to traditional DGA analyses. By combining E-nose technology with machine learning, this method holds promise for facilitating routine measurements and ensuring the reliability and efficiency of transformer operations.

Más información

Título según WOS: Intelligent Interpretation of Dissolved Gases in Transformer Oil With Electronic Nose and Machine Learning
Volumen: 21
Número: 4
Fecha de publicación: 2025
Página de inicio: 2839
Página final: 2848
Idioma: English
DOI:

10.1109/TII.2024.3507943

Notas: ISI