Identifying climate-related failures in railway infrastructure using machine learning
Document Type
Journal Article
Publication Date
2024
Subject Area
mode - rail, place - europe, infrastructure
Keywords
Climate Change, Environmental Impact, Switches and Crossing, Railway Infrastructure, Climate-related Failure Classification
Abstract
Climate change impacts pose challenges to a dependable operation of railway infrastructure assets, thus necessitating understanding and mitigating its effects. This study proposes a machine learning framework to distinguish between climatic and non-climatic failures in railway infrastructure. The maintenance data of turnout assets from Sweden’s railway were collected and integrated with asset design, geographical and meteorological parameters. Various machine learning algorithms were employed to classify failures across multiple time horizons. The Random Forest model demonstrated a high accuracy of 0.827 and stable F1-scores across all time horizons. The study identified minimum-temperature and quantity of snow and rain prior to the event as the most influential factors. The 24-hour time horizon prior to failure emerged as the most effective time window for the classification. The practical implications and applications include enhancement of maintenance and renewal process, supporting more effective resource allocation, and implementing climate adaptation measures towards resilience railway infrastructure management.
Rights
Permission to publish the abstract has been given by Elsevier, copyright remains with them.
Recommended Citation
Soleimani-Chamkhorami, K., Karbalaie, A., Kasraei, A., Haghighi, E., Famurewa, S. M., & Garmabaki, A. H. S. (2024). Identifying climate-related failures in railway infrastructure using machine learning. Transportation Research Part D: Transport and Environment, 135, 104371.
Comments
Transportation Research Part D Home Page:
http://www.sciencedirect.com/science/journal/13619209