社会脆弱性
鉴定(生物学)
脆弱性(计算)
应急管理
社会经济地位
民族
地理
城市管理
计算机安全
城市规划
计算机科学
政治学
心理学
环境卫生
医学
工程类
社会心理学
心理弹性
生物
土木工程
法学
植物
人口
作者
SangUk Han,Jeon‐Young Kang,Fangzheng Lyu,Furqan Baig,Jin-Woo Park,Danielle Smilovsky,Shaowen Wang
摘要
Abstract Timely identification of disaster‐prone neighborhoods and examination of disparity in disaster exposure are critical for policymakers to plan efficient disaster management strategies. Many studies have investigated racial, ethnic, and geographic disparities and populations most vulnerable to disasters. However, little attention has been paid to the development of easily accessible and reusable tools to enable: (1) the prompt identification of vulnerable neighborhoods; and (2) the examination of social disparity in disaster impact. In this research, we have developed a visual analytics tool that allows users to: (1) delineate neighborhoods based on their selection of variables; and (2) explore which neighborhoods are susceptible to the impacts of disasters based on specific socioeconomic and demographic characteristics. Through an exploration of COVID‐19 data in the case study, we revealed that the tool can provide new insights into the identification of vulnerable neighborhoods that need immediate attention for disaster control, management, and relief.
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