Showing 1,641 - 1,660 results of 1,834 for search '"Shenzhen"', query time: 0.05s Refine Results
  1. 1641

    Waterlogging Simulation and Drainage Effect Assessment of Deep Tunnel Engineering in a Coastal City Based on MIKE by TAN Yin, TU Xinjun, YU Honggang, LIN Kairong, LIU Meixian, MA Ke

    Published 2024-05-01
    “…Taking the western region of Shenzhen City in the Guangdong-Hong Kong-Macao Greater Bay Area as the study area, this paper couples a one-dimensional river flood model, a pipeline drainage model, and a two-dimensional overland flow model to simulate urban waterlogging processes under extreme precipitation and typical storm surge. …”
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  2. 1642

    Study on Deformation and Stability of Rock-Like Materials Retaining Structure during Collaborative Construction of Super-Adjacent Underground Project by Hongfu Qu, Lihua Wang, Chunlei Feng, Hualao Wang, Xuan Zhang

    Published 2021-01-01
    “…The collaborative construction of undercrossing tunneling of Gongchang Road and the adjacent Metro Line 6 extension station section in Shenzhen is difficult and of high risk. In view of these characteristics, this paper studied the deformation and stability of rock-like material retaining structures in the process of underground engineering collaboration by combining the measured deformation data and the circular slide theory based on the limit equilibrium method. …”
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    The physics-based deterministic scenarios for earthquake hazards and losses of the Zhujiangkou fault in southern China by Yilong Li, Houyun Yu, Ming Wang, Xiuwei Ye, Kai Liu, Zhenguo Zhang, Wei Zhang, Xiaofei Chen

    Published 2025-01-01
    “…Results revealed higher earthquake hazards and losses triggered by the northwestern ZF segment, affecting Hong Kong, Shenzhen, Dongguan, Macao, and Guangzhou. The rupture directivity effect, driven by seismic wave interferences in forward propagation, leads to stark differences in hazards and losses across urban agglomerations, even under similar fault conditions. …”
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    Multi-Head Spatiotemporal Attention Graph Convolutional Network for Traffic Prediction by Ariyo Oluwasanmi, Muhammad Umar Aftab, Zhiguang Qin, Muhammad Shahzad Sarfraz, Yang Yu, Hafiz Tayyab Rauf

    Published 2023-04-01
    “…By achieving 91.8% accuracy on the Los Angeles highway traffic (Los-loop) test data for 15-min traffic prediction and an R2 score of 85% on the Shenzhen City (SZ-taxi) test dataset for 15- and 30-min predictions, the proposed model demonstrated that it can learn the global spatial variation and the dynamic temporal sequence of traffic data over time. …”
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  13. 1653
  14. 1654

    SOM neural network-based port function analysis: a case study in 21st-century Maritime Silk Road by Fahao Xie, Le Zhang, Shanshui Zheng, Aijun Xu, Zhitao Li, Jiaxin Dai, Lang Xu

    Published 2025-01-01
    “…The study reveals several key insights: (1) Singapore Port, Hong Kong Port, Shenzhen Port, and Guangzhou Port emerge as the principal shipping hubs within the region; (2) The relationship between China and Singapore is identified as a linchpin for the sustainable development of the 21st-century Maritime Silk Road; (3) Guangdong Province is highlighted as a central economic and logistical node. …”
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  19. 1659

    Evaluation of Public Welfare Level of Urban Rail Transit considering Operation Management by Ran Meng, Baohua Mao, Qi Xu, Yang Yang

    Published 2022-01-01
    “…The cities with a relatively high level of public welfare relative closeness exceeding 0.5 include Shanghai, Beijing, Shenzhen, Guangzhou, Suzhou, Wuhan, Nanjing, Wuxi, and Dalian. (3) Both GDP and urban population are positively correlated with the relative closeness of social benefit and service level. (4) The level of public welfare can be improved by reducing the fare price and improving the service level, such as increasing the network density, reducing the departure interval, and increasing the average speed.…”
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  20. 1660