Subway tunnel damage detection based on in-service train dynamic response, variational mode decomposition, convolutional neural networks and long short-term memory

Automation in Construction - Tập 139 - Trang 104293 - 2022
Yonglai Zhang1,2, Xiongyao Xie1,2, Hongqiao Li1,2, Biao Zhou1,2, Qiang Wang2,3, Isam Shahrour4,2
1Key Laboratory of Geotechnical and Underground Engineering of Ministry of Education, Tongji University, Shanghai 200092, China
2School of Civil Engineering, Tongji University, Shanghai, 200092, China
3Zhejiang Scientific Research Institute of Transport, Hangzhou 311305, China
4Laboratoire de Génie Civil et géo-Environnement, Lille University, 59000 Lille, France

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