A newly-designed fault diagnostic method for transformers via improved empirical wavelet transform and kernel extreme learning machine

In order to solve the problems of unsatisfactory diagnosis performance and unstable model of conventional fault diagnosis methods for transformers, a new approach based on improved empirical wavelet transform (IEWT) and salp swarm algorithm (SSA) optimized kernel extreme learning machine (KELM) is p...

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Bibliographic Details
Published inAdvanced engineering informatics Vol. 49; p. 101320
Main Authors Lu, Sijia, Gao, Wei, Hong, Cui, Sun, Yiqun
Format Journal Article
LanguageEnglish
Published Elsevier Ltd 01.08.2021
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ISSN1474-0346
1873-5320
DOI10.1016/j.aei.2021.101320

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Summary:In order to solve the problems of unsatisfactory diagnosis performance and unstable model of conventional fault diagnosis methods for transformers, a new approach based on improved empirical wavelet transform (IEWT) and salp swarm algorithm (SSA) optimized kernel extreme learning machine (KELM) is proposed in this study. Firstly, IEWT is used to adaptively decompose the vibration signal to obtain a set of empirical wavelet functions (EWFs). Secondly, the first n-order components with high correlation coefficient are collected. Thirdly, the mean value, variance, kurtosis, refine composite multiscale entropy (RCMSE), and time-frequency entropy(TFE) of these n-order components are calculated to construct a fusion feature vector. Finally, a two-level diagnostic model based on SSA-KELM is established. The first-level of it is applied to identify normal and abnormal states, and the second-level is selected to identify fault categories in the abnormal states. The proposed method can effectively diagnose the existing fault categories in the training set and accurately identify the unknown categories of faults. Experimental results show that the proposed method can efficiently extract features of different vibration signals and identify the faults, with an average classification accuracy of 96.25%. It is better than other methods, such as wavelet packet energy spectrum analysis-KELM and EWT-fisher.
ISSN:1474-0346
1873-5320
DOI:10.1016/j.aei.2021.101320