Predicting Rail Corrugation Based on Convolutional Neural Networks Using Vehicle’s Acceleration Measurements
Metadatos
Mostrar el registro completo del ítemAutor
Haghbin, Masoud; Chiachío Ruano, Juan; Muñoz, Sergio; Escalona Franco, Jose Luis; Guillén, Antonio J.; Crespo Marquez, Adolfo; Cantero Chinchilla, SergioEditorial
MDPI
Materia
Rail corrugation Deep learning Convolutional neural networks
Fecha
2024-07-17Referencia bibliográfica
Haghbin, M.; Chiachío, J.; Muñoz, S.; Escalona Franco, J.L.; Guillén, A.J.; Crespo Marquez, A.; Cantero-Chinchilla, S. Predicting Rail Corrugation Based on Convolutional Neural Networks Using Vehicle’s Acceleration Measurements. Sensors 2024, 24, 4627. https://doi.org/10.3390/s24144627
Patrocinador
Project Geminhi (Digital model for Intelligent Maintenance based on Hybrid prognostics models) (Grant US-1381456, founded by Junta de Andalucía, Andalucía FEDER 2014–2020); AMADIT Project (PID2022-137748OB-C32), funded by MCIN/AEI/10.13039/501100011033/FEDER, EUResumen
This paper presents a deep learning approach for predicting rail corrugation based on onboard
rolling-stock vertical acceleration and forward velocity measurements using One-Dimensional
Convolutional Neural Networks (CNN-1D). The model’s performance is examined in a 1:10 scale
railway system at two different forward velocities. During both the training and test stages, the
CNN-1D produced results with mean absolute percentage errors of less than 5% for both forward
velocities, confirming its ability to reproduce the corrugation profile based on real-time acceleration
and forward velocity measurements. Moreover, by using a Gradient-weighted Class Activation
Mapping (Grad-CAM) technique, it is shown that the CNN-1D can distinguish various regions,
including the transition from damaged to undamaged regions and one-sided or two-sided corrugated
regions, while predicting corrugation. In summary, the results of this study reveal the potential of
data-driven techniques such as CNN-1D in predicting rails’ corrugation using online data from the
dynamics of the rolling-stock, which can lead to more reliable and efficient maintenance and repair
of railways.