Management Science Institute, Hohai University, Nanjing, 210098, China; Business School, Hohai University, Nanjing, 210098, China.
School of Information Management and Artificial Intelligence, Zhejiang University of Finance and Economics, Hangzhou, 310018, China.
J Environ Manage. 2023 Nov 1;345:118787. doi: 10.1016/j.jenvman.2023.118787. Epub 2023 Aug 26.
The assessment of urban flood risk plays a vital role in disaster prevention and mitigation. This work aims to assess the dynamic risk of urban flood triggered by population movements through dividing urban functional zoning from the perspective of collective cognition. Firstly, the urban functional areas are identified using Points of Interest data and then the population movements mobile is detected based on functional areas using mobile signaling big data. Then, one-dimensional and two-dimensional hydrodynamic models are employed to simulate the 50-year flood scenario in Futian District, Shenzhen. Finally, a spatio-temporal dynamic assessment model for urban flood risk is constructed based on the extent of inundation, water depth, population density, and the disaster-bearing capacity of functional areas. The research findings are as follows: (1) Futian District's urban planning showcases harmonious integration of single-function and mixed-function areas. Utilizing the 50% perception standard efficiently identifies distinct functional types across diverse urban zones. The results are highly consistent with the actual situation. (2) During morning peak hours, the population exhibits a nuanced pattern of dispersal, concentration, and transition. Lunchtime witnesses multiple central clusters forming and gradually dispersing, while the evening peak witnesses population regrouping, covering broader geographical extents. Dynamic utilization of functional areas and mobile phone signaling data outperforms static population metrics, offering deeper insights into the complexities of human activity. (3) Between 12:00 and 13:00, lunchtime movements lead to a surge of 6 high-risk zones in the central area and 5 in the Meiling area. The dynamic flood risk assessment model, based on functional area delineation, effectively identifies disparities and fluctuations in flood risk across diverse functional areas during rainfall scenarios, ensuring heightened precision and accuracy in risk assessment.
城市洪涝风险评估在防灾减灾中起着至关重要的作用。本研究旨在从集体认知的角度,通过划分城市功能分区,评估由人口流动引发的城市洪涝动态风险。首先,利用兴趣点数据识别城市功能区,然后利用移动信令大数据基于功能区检测人口流动。然后,采用一维和二维水动力模型模拟深圳市福田区 50 年一遇的洪水情景。最后,构建了基于淹没范围、水深、人口密度和功能区灾载能力的城市洪涝风险时空动态评估模型。研究结果表明:(1)福田区的城市规划展示了单功能和混合功能区的和谐融合。利用 50%的感知标准,可以有效地识别不同城市区域的不同功能类型。结果与实际情况高度一致。(2)在早高峰时段,人口呈现出分散、集中和转移的细微变化模式。午餐时间见证了多个中心集群的形成和逐渐分散,而晚高峰则见证了人口的重新组合,覆盖了更广泛的地理范围。功能区的动态利用和手机信令数据优于静态人口指标,提供了对人类活动复杂性的更深入了解。(3)在 12:00 至 13:00 之间,午餐时间的流动导致中心区域出现 6 个高风险区和梅林地区的 5 个高风险区。基于功能区划分的动态洪水风险评估模型有效地识别了降雨情景下不同功能区洪水风险的差异和波动,确保了风险评估的高度精确性和准确性。