Affiliation:
1. China Academy of Railway Sciences, 2 Daliushu Road, Haidian District, Beijing 100081, China
2. Institute of Electronic Computing Technology, China Academy of Railway Sciences, 2 Daliushu Road, Haidian District, Beijing 100081, China
Abstract
In recent years, the safety issues of high-speed railways have remained severe. The intrusion of personnel or obstacles into the perimeter has often occurred in the past, causing derailment or parking, especially in the case of bad weather such as fog, haze, rain, etc. According to previous research, it is difficult for a single sensor to meet the application needs of all scenario, all weather, and all time domains. Due to the complementary advantages of multi-sensor data such as images and point clouds, multi-sensor fusion detection technology for high-speed railway perimeter intrusion is becoming a research hotspot. To the best of our knowledge, there has been no review of research on multi-sensor fusion detection technology for high-speed railway perimeter intrusion. To make up for this deficiency and stimulate future research, this article first analyzes the situation of high-speed railway technical defense measures and summarizes the research status of single sensor detection. Secondly, based on the analysis of typical intrusion scenarios in high-speed railways, we introduce the research status of multi-sensor data fusion detection algorithms and data. Then, we discuss risk assessment of railway safety. Finally, the trends and challenges of multi-sensor fusion detection algorithms in the railway field are discussed. This provides effective theoretical support and technical guidance for high-speed rail perimeter intrusion monitoring.
Funder
National Natural Science Foundation of China
China Academy of Railway Sciences Project
Reference118 articles.
1. (2024, February 20). International Union of Railways (UIC), High-Speed Rail. Available online: https://uic.org/IMG/pdf/atlas_uic_2023.pdf.
2. Wang, Z., Guo, G., Liu, C., and Zhu, W. (2022, January 25–27). Research on Accident Risk Early Warning System Based on Railway Safety Management Data under Cloud Edge Collaborative Architecture. Proceedings of the 2022 2nd International Signal Processing, Communications and Engineering Management Conference (ISPCEM), Montreal, ON, Canada.
3. Advancing railway track health monitoring: Integrating GPR, InSAR and machine learning for enhanced asset management;Koohmishi;Autom. Constr.,2024
4. Alawad, H., and Kaewunruen, S. (2018). Wireless Sensor Networks: Toward Smarter Railway Stations. Infrastructures, 3.
5. A Deep Learning Approach Towards Railway Safety Risk Assessment;Alawad;IEEE Access,2020