VHXLA: A post-earthquake damage prediction method for high-speed railway track-bridge system using VMD and hybrid neural network

Engineering Structures - Tập 298 - Trang 117048 - 2024
Kang Peng, Wangbao Zhou, Lizhong Jiang, Lijun Xiong, Jian Yu

Tài liệu tham khảo

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