A weakly supervised pairwise comparison learning approach for bearing health quantitative evaluation and remaining useful life prediction
ISSN: 0264-4401
Article publication date: 16 August 2023
Issue publication date: 12 October 2023
Abstract
Purpose
The purpose of this paper is to present a weakly supervised learning method to perform health evaluation and predict the remaining useful life (RUL) of rolling bearings.
Design/methodology/approach
Based on the principle that bearing health degrades with the increase of service time, a weak label qualitative pairing comparison dataset for bearing health is extracted from the original time series monitoring data of bearing. A bearing health indicator (HI) quantitative evaluation model is obtained by training the delicately designed neural network structure with bearing qualitative comparison data between different health statuses. The remaining useful life is then predicted using the bearing health evaluation model and the degradation tolerance threshold. To validate the feasibility, efficiency and superiority of the proposed method, comparison experiments are designed and carried out on a widely used bearing dataset.
Findings
The method achieves the transformation of bearing health from qualitative comparison to quantitative evaluation via a learning algorithm, which is promising in industrial equipment health evaluation and prediction.
Originality/value
The method achieves the transformation of bearing health from qualitative comparison to quantitative evaluation via a learning algorithm, which is promising in industrial equipment health evaluation and prediction.
Keywords
Acknowledgements
The research is supported by the Beijing Natural Science Foundation (grant number: L212033) and the National Key Research and Development Program of China (grant number: 2022YFB3305603).
Citation
Zhao, F., Cui, J., Yuan, M. and Zhao, J. (2023), "A weakly supervised pairwise comparison learning approach for bearing health quantitative evaluation and remaining useful life prediction", Engineering Computations, Vol. 40 No. 7/8, pp. 1593-1616. https://doi.org/10.1108/EC-12-2022-0747
Publisher
:Emerald Publishing Limited
Copyright © 2023, Emerald Publishing Limited