2024
DOI: 10.1002/tee.24171
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Research on Transformer Fault Diagnosis by WOA‐SVM Based on Feature Selection and Data Balancing

Can Ding,
Donghai Yu,
Xiangdong Liu
et al.

Abstract: Oil‐immersed transformers as one of the most important equipment in the power system, the fault prediction of it in advance can effectively reduce the subsequent harm. Aiming at the selection of input features and data sample imbalance in the transformer fault diagnosis model, this paper adopts the recursive feature elimination (RFE) method combined with SMOTETomek comprehensive sampling method to optimize the above problems. First, RFE is used to traverse all the features and filter the optimal combination of… Show more

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