The health condition assessment of Electric Multiple Unit (EMU) traction motor ball bearing is one of the key issues of high-speed train running safety. In order to assess health condition of EMU traction motor ball bearing, an online-sequential extreme learning machine algorithm based on TensorFlow (TOSELM) is proposed. Samples data set is divided into normal condition and fault condition using vibration data of ball bearings. This paper uses health condition accuracy rate index to evaluate TOSELM algorithm performance. The proposed approach is verified by public data set and private data set. The experiment results show the proposed method is an effective method for ball bearing health status assessment.
CITATION STYLE
Niu, Q., Liu, F., Tong, Q., Cao, J., & Zhang, Y. (2018). Health condition assessment of ball bearings using TOSELM. Journal of Vibroengineering, 20(1), 272–282. https://doi.org/10.21595/jve.2017.18978
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