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Rolling Element Bearing Fault Time Series Prediction Using Optimized MCKD-LSTM Model

Authors :
Yong Shen
Huailing Zeng
Xiangfeng Zhang
Ma Tongwei
Hong Jiang
Yifeng Jiang
Lei Xia
Leilei Ma
Publication Year :
2021
Publisher :
Preprints, 2021.

Abstract

This paper realizes early bearing fault warning through bearing fault time series prediction, and proposes a bearing fault time series prediction model based on optimized maximum correlation kurtosis deconvolution (MCKD) and long short-term memory (LSTM) recurrent neural network to ensure bearings operation reliability. The model is based on lifecycle vibration signal of the bearing, to begin, the cuckoo search (CS) is utilized to optimize the parameter filter length L and deconvolution period T of MCKD, taking into account the influence and periodicity of the bearing time series, the fault impact component of the optimized MCKD deconvolution time series is improved. Then select the LSTM learning rate α depending on deconvolution time series. Finally, the dataset obtained through various preprocessing approaches are used to train and predict the LSTM model. The average prediction accuracy of the optimized MCKD-LSTM model is 26 percent higher than that of the original time series, proving the efficiency of this method, and the prediction results track the real fault data well, according to the XI'AN JIAOTONG University XJTU-SY bearing dataset.

Details

Language :
English
Database :
OpenAIRE
Accession number :
edsair.doi.dedup.....7f5e76309f33e4b201bf837e2c446eda