Fault diagnosis using an improved fusion feature based on manifold learning for wind turbine transmission system

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Abstract

In this paper, a novel fault diagnosis method based on vibration signal analysis is proposed for fault diagnosis of bearings and gears. Firstly, the ensemble empirical mode decomposition (EEMD) is used to decompose the vibration signal into several subsequences, and a multi-entropy (ME) is proposed to make up the fusion features of the vibration signal. Secondly, an improved manifold learning algorithm, local and global preserving embedding (LGPE), is applied to compress the high-dimensional fusion feature set into a two-dimension feature set. Finally, according to the clustering accuracy of different feature set, the fault classification and diagnosis can be performed in the reduced two-dimension space. The performance of the proposed technique is tested on the fault of wind turbine transmission system. The application results indicate that the proposed method can achieve high accuracy of fault diagnosis.

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APA

Ma, P., Zhang, H., Fan, W., & Wang, C. (2019). Fault diagnosis using an improved fusion feature based on manifold learning for wind turbine transmission system. Journal of Vibroengineering, 21(7), 1859–1874. https://doi.org/10.21595/jve.2019.20132

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