Evolution of Rail Contact Fatigue on Crossing Nose Rail Based on Long Short-Term Memory
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Published:2022-12-10
Issue:24
Volume:14
Page:16565
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ISSN:2071-1050
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Container-title:Sustainability
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language:en
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Short-container-title:Sustainability
Author:
Kou LeiORCID, Sysyn MykolaORCID, Liu Jianxing, Nabochenko Olga, Han Yue, Peng Dai, Fischer SzabolcsORCID
Abstract
The share of rail transport in world transport continues to rise. As the number of trains increases, so does the load on the railway. The rails are in direct contact with the loaded wheels. Therefore, it is more easily damaged. In recent years, domestic and foreign scholars have conducted in-depth research on railway damage detection. As the weakest part of the track system, switches are more prone to damage. Assessing and predicting rail surface damage can improve the safety of rail operations and allow for proper planning and maintenance to reduce capital expenditure and increase operational efficiency. Under the premise that functional safety is paramount, predicting the service life of rails, especially turnouts, can significantly reduce costs and ensure the safety of railway transportation. This paper understands the evolution of contact fatigue on crossing noses through long-term observation and sampling of crossing noses in turnouts. The authors get images from new to damaged. After image preprocessing, MPI (Magnetic Particle Imaging) is divided into blocks containing local crack information. The obtained local texture information is used for regression prediction using machine-supervised learning and LSTM network (Long Short-Term Memory) methods. Finally, a technique capable of thoroughly evaluating the wear process of crossing noses is proposed.
Subject
Management, Monitoring, Policy and Law,Renewable Energy, Sustainability and the Environment,Geography, Planning and Development,Building and Construction
Reference36 articles.
1. Kienzler, C., Lotz, C., and Stern, S. (2022, October 10). Using Analytics to Get European Rail Maintenance on Track. Available online: https://www.mckinsey.com/industries/public-and-social-sector/our-insights. 2. Milosevic, M., Pålsson, B.A., Nissen, A., Nielsen, J., and Johansson, H. (2022). Condition Monitoring of Railway crossing Geometry via Measured and Simulated Track Responses. Sensors, 22. 3. Chandran, P., Asber, J., Thiery, F., Odelius, J., and Rantatalo, M. (2021). An Investigation of Railway Fastener Detection Using Image Processing and Augmented Deep Learning. Sustainability, 13. 4. Correlations between wear mechanisms and rail grinding operations in a commercial railroad;Cuervo;Tribol. Int.,2015 5. Talebiahooie, E., Thiery, F., Meng, J., Mattsson, H., Nordlund, E., and Rantatalo, M. (2021). Modelling of Railway Sleeper Settlement under Cyclic Loading Using a Hysteretic Ballast Contact Model. Sustainability, 13.
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