Vibration performance prediction and reliability analysis for rolling bearing

Autor: Meng Fannian, Xiaoyun Gong, Feng Zhao, Wang Liangwen, Wenliao Du, Li Liwei
Rok vydání: 2021
Předmět:
Zdroj: Journal of Vibroengineering, Vol 23, Iss 2, Pp 327-346 (2021)
ISSN: 2538-8460
1392-8716
DOI: 10.21595/jve.2020.21463
Popis: The bearing vibration signal is a rich dynamic symptom of bearing wear, and the vibration signal of rolling bearing presents chaotic characteristics. Input and output variables of vibration signal can be constructed through phase space reconstruction, the Input and output variables can be imported into the prediction model for prediction. The prediction accuracy of the extreme learning machine (ELM) model, Kriging model and RBF model are compared, the results show that ELM has higher accuracy, so ELM chaos model is used to predict the future vibration time series data, and the forecasting error can be obtained by comparing the prediction value with the actual values so as to verity the feasibility of the ELM model. The prediction results of the future state of the bearing are processed as the grey-bootstrap method, and the performance reliability prediction of the bearing is realized by the Poisson counting process. The experimental data show that with the deepening of the fault degree, the reliability performance decreases gradually. The reliability performance of the bearing without fault is 100 %, and the reliability performance is 47.56 % when the inner ring faulty size is 0.72 mm.
Databáze: OpenAIRE