Enhancing urban resilience through machine learning-supported flood risk assessment: integrating flood susceptibility with building function vulnerability

被引:0
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作者
Xiaoling Qin [1 ]
Shifu Wang [1 ]
Meng Meng [2 ]
Haiyan Long [1 ]
Huilan Zhang [2 ]
Haochen Shi [1 ]
机构
[1] South China University of Technology,School of Architecture
[2] South China University of Technology,State Key Laboratory of Subtropical Building and Urban Science
[3] Guangzhou Urban Planning And Consulting CO.,College of Architecture and Urban Planning
[4] LTD,undefined
[5] Guangzhou University,undefined
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10.1038/s42949-025-00208-w
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摘要
Urban flooding threatens urban resilience and challenges SDGs 11 and 13. This study assesses urban building flood risk in Guangzhou by integrating flood susceptibility with building function vulnerability. Using a Random Forest (RF) model, it predicts flood susceptibility based on flood records, hydrological, topographical, and anthropogenic features. The Categorical Boosting (CatBoost) model identifies building functions using POI and AOI data. Results reveal significant spatial variations: central districts exhibit higher flood susceptibility, while peripheral areas remain less affected. Over half of the buildings are moderately vulnerable, with only a small fraction highly vulnerable. Based on flood susceptibility and functional vulnerability, Guangzhou is classified into three district types: central urban (Type I), intermediate urban (Type II), and suburban/rural (Type III). The study underscores the need for tailored flood risk management strategies to address these disparities and mitigate climate change-induced water hazards.
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