Supervised contrastive learning-guided prototypes on axle-box accelerations for railway crossing inspections

Handle

https://riunet.upv.es/handle/10251/195075

Cita bibliográfica

Silva-Rodríguez, J.; Salvador Zuriaga, P.; Naranjo Ornedo, V.; Insa Franco, R. (2022). Supervised contrastive learning-guided prototypes on axle-box accelerations for railway crossing inspections. Expert Systems with Applications. 207:1-9. https://doi.org/10.1016/j.eswa.2022.117946

Titulación

Resumen

[EN] Increasing demands on railway structures have led to a need for new cost-effective maintenance strategies in recent years. Current dynamic railway track monitoring systems are usually based on the analysis of axle-box accelerations to automatically detect track singularities and defects. These methods rely on hand-crafted feature extraction and classifiers for different tasks. However, the low performance shown in previous literature makes it necessary to complement these analyses with in-situ inspections. Very recent works have proposed the use of deep learning systems that allow extracting more generalizable features from time-frequency spectrograms. However, the lack of specific public domain datasets and the finite number of track singularities in a railway structure have limited the development of deep learning based systems. In this paper, we propose a method capable of outstanding in low-data scenarios. In particular, we explore the use of supervised contrastive learning to cluster class embeddings nearly in the encoder latent space, which is used during inference for prototypical distance-based class assignment. We provide comprehensive experiments demonstrating the performance of our method in comparison to previous literature for detecting worn-out crossings.

Palabras clave

Dynamic railway surveying, Axle-box accelerations, Crossing wear detection, Deep learning, Supervised contrastive learning

ISSN

0957-4174

ISBN

Fuente

Expert Systems with Applications

DOI

10.1016/j.eswa.2022.117946