作者
Kandala NVPS Rajesh, U Mohan Rao, I Fofana, P Rozga, Ashish Paramane
发表日期
2022/12/16
期刊
IEEE Transactions on Dielectrics and Electrical Insulation
卷号
30
期号
1
页码范围
385-392
出版商
IEEE
简介
The application of artificial intelligence algorithms for transformer incipient fault classification using dissolved gas analysis (DGA) is an interesting engineering approach. However, there are various factors that affect the performance of artificial intelligence algorithms. This article presents the influence of the data balancing approach on transformer DGA fault classification with the machine learning (ML) approach. In this work, a total of 4580 DGA samples from in-service transformers are considered for training various ML models. The main challenge for the DGA problem lies in the availability of the normal degradation transformer data and its uniformity corresponding to different faults is almost impossible. This is because DGA is not an exact science, but an empirical approach subjects to variability. Thus, it is a usual practice to apply data sampling techniques that largely influence the efficiency of the algorithms. The …
引用总数
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KN Rajesh, UM Rao, I Fofana, P Rozga, A Paramane - IEEE Transactions on Dielectrics and Electrical …, 2022