Study on life prediction method for rail vehicle critical components based on deep learning models and track load spectra

2026-02-03

Haitao Hu, Quanwei Che, Weihua Wang, Xiaojun Wang, Ziming Wang,
Study on life prediction method for rail vehicle critical components based on deep learning models and track load spectra,
High-speed Railway,
2025,
,
ISSN 2949-8678,
https://doi.org/10.1016/j.hspr.2025.09.006.
(https://www.sciencedirect.com/science/article/pii/S2949867825000637)
Abstract: Deep learning and fatigue life prediction remain focal research areas in rail vehicle engineering. This study addresses the vibration fatigue of wheelset lifting lug in Chengdu Metro Line 1 bogies, aiming to develop a fatigue life prediction method for critical bogie components using deep learning models and measured track load spectra. Extensive field tests on Chengdu Metro Line 1 were conducted to acquire acceleration and stress response data of the wheelset lifting lug, generating training samples for the neural network system. Component stress responses were calculated via time-domain track acceleration and validated against in-situ stress measurements. Results show that neural network-fitted dynamic stress values exhibit excellent consistency with measured data, with errors constrained within 5 %. This study validates the proposed small-sample deep learning approach as an effective and accurate solution for fatigue life prediction of critical bogie components under operational load conditions.
Keywords: Railway vehicle; Deep learning; Neural network; Life prediction; Vibration fatigue