Research progress of intelligent operation and maintenance of high-speed railway bridges

Author:

Long Yan12,Guo Wei12,Yang Na3,Dong Cheng4,Liu Ming4,Cai Yujun5,Zhang Zhuanzhuan6

Affiliation:

1. Central South University School of Civil Engineering, , Changsha 410075, China

2. National Engineering Research Center of High-speed Railway Construction Technology, Central South University , Changsha, 410075, China

3. Beijing Jiaotong University , Beijing, 100091, China

4. China Railway Design Corporaton , Tianjin, 300308, China

5. China Raiway First Survey and Design Institute Group Co., Ltd. , Xi'an, 710000, China

6. China Railway No.10 Engineering Group Co., Ltd. , Jinan, 250101, China

Abstract

Abstract The new generation of information technology, such as artificial intelligence, brings new opportunities for the efficient and intelligent development of high-speed railway (HSR) bridge operation and maintenance. Intelligent technology integrates the damage identification and maintenance of HSR bridges, and profoundly changes the development of HSR bridge operation and maintenance. The application of intelligent technology in the upgrading of detection equipment, the improvement of data and image processing efficiency, three-dimensional information reconstruction, and other aspects will form new technologies for automatic, efficient, and intelligent detection, monitoring, maintenance and disaster management, and control of HSR bridges. To assess the research and development trends in this field, this paper expounded the relevant research and application in the field of intelligent operation and maintenance of HSR bridges from the development status of HSR bridges, the application of intelligent equipment and algorithms in this field, and summarized the problems and future development for the intelligent operation and maintenance of HSR bridges.

Publisher

Oxford University Press (OUP)

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