Machine Learning Algorithms Fusion Based on DGA Data for Improving Fault Diagnosis of Electrical Power Transformer

Author:

Hechifa Abdelmoumene1,Lakehal Abdelaziz2,Nanfak Arnaud3,Saidi Lotfi4,Labiod Chouaib5

Affiliation:

1. LGMM Laboratory, Faculty of Technology , University of 20 August 1955-Skikda , Skikda , Algeria .

2. Laboratory of Research on Electromechanical and Dependability , University of Souk Ahras , Souk-Ahras , Algeria

3. Laboratory of Energy, Materials, Modelling and Methods, National Higher Polytechnic School of Douala , University of Douala , Douala , Cameroon .

4. University of Tunis , ENSIT – Laboratory of Signal Image and Energy Mastery , Tunis , Tunisia

5. Electrical Engineering Department, Faculty of Technology , University of El Oued , El Oued , Algeria .

Abstract

Abstract Dissolved Gas Analysis (DGA) continues to be widely recognized as a valuable method in recent times for the early identification of issues in oil-filled power transformers. It has gained extensive adoption as a primary approach for the early discovery of these issues, relying on the analysis of dissolved gases. This contributes to enhancing the dependability of electrical systems. This paper proposes an efficient fusion method based on DGA data using the two best Machine Learning algorithms, the neural network (MLP), the naïve Bayes (NB) throughdata input vector ppm, a percentage input vector, and an Logarithmic input vector. The fusion method predictively combined the two classifiers and obtained a statistical evaluation: accuracy, recall, precision, and F-measure higher than both classifiers separately. The proposed fusion method was evaluated for performance using a test database and compared with conventional and smart methods. Results showed that the proposed model outperformed both traditional and intelligent methods in terms of diagnostic accuracy when using percentage and logarithmic input vectors. The Prediction Based Fusion (PBF) vector Percentages achieved an accuracy rate of 97.22%, while PBF vector Logarithmic achieved an accuracy rate of 95.83%. These rates were higher than those achieved by traditional methods, such as the Modified RRM/CEGB method 91.67% and Modified RRM/IEC method 90.28%. Additionally, the proposed model surpassed the accuracy rates of intelligent methods, such as CSUS ANN 88.89% and Conditional Probability 93.06%.

Publisher

Walter de Gruyter GmbH

Cited by 1 articles. 订阅此论文施引文献 订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献

1. Research on transformer fault diagnosis based on optimized HDBO-SVM;2024 3rd International Conference on Energy, Power and Electrical Technology (ICEPET);2024-05-17

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