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Characterising the high spatial heterogeneity of urban flood resilience under extreme rainfall using mobile signal data

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DataCite Commons2025-12-19 更新2026-04-25 收录
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https://tandf.figshare.com/articles/dataset/Characterising_the_high_spatial_heterogeneity_of_urban_flood_resilience_under_extreme_rainfall_using_mobile_signal_data/30919357
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资源简介:
Characterisation of the spatial heterogeneity of urban flood resilience (UFR) under extreme rainfall events can support decision-making in urban planning and emergency management. Traditional flood-resilience assessment methods based on socioeconomic or infrastructure statistics, face challenges in capturing urban operational efficiency (UOE; e.g. traffic mobility), especially its loss and recovery time. To overcome such challenges, we propose a new framework of UFR heterogeneity that: (1) utilises 800-m spatial and day-time resolution mobile signal big data as a dynamic metric for UOE; (2) presents a resilience matrix to quantitatively measure both the loss and recovery of UOE, achieving a unified UFR representation during extreme events; and (3) offers a spatial attention-based machine learning method to attribute the heterogeneity of UFR. An empirical study of the July 2021 extreme rainfall event in Zhengzhou, China, reveals that robust/high resilience, medium resilience, and low resilience grid cells account for 25%, 67%, and 8% of the samples; among them, the administrative core mainly comprises robust and high-resilience categories, whereas the county boundary exhibits low-resilience. Infrastructural transportation characteristics (28%), social-economic factors (25%), and spatial attributes (21%) are tracked as critical drivers by the XGBoost-SHAP framework.
提供机构:
Taylor & Francis
创建时间:
2025-12-19
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