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Flood Exposure and Poverty in 188 Countries.

Nature communications(2022)SCI 1区

World Bank | Deltares

Cited 140|Views3
Abstract
Flooding is among the most prevalent natural hazards, with particularly disastrous impacts in low-income countries. This study presents global estimates of the number of people exposed to high flood risks in interaction with poverty. It finds that 1.81 billion people (23% of world population) are directly exposed to 1-in-100-year floods. Of these, 1.24 billion are located in South and East Asia, where China (395 million) and India (390 million) account for over one-third of global exposure. Low- and middle-income countries are home to 89% of the world's flood-exposed people. Of the 170 million facing high flood risk and extreme poverty (living on under $1.90 per day), 44% are in Sub-Saharan Africa. Over 780 million of those living on under $5.50 per day face high flood risk. Using state-of-the-art poverty and flood data, our findings highlight the scale and priority regions for flood mitigation measures to support resilient development.
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Flood Risk,Urban Flooding
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要点】:研究揭示了全球1.81亿人直接暴露在高洪水风险中,其中低收入和中等收入国家的人口占比高达89%,提出了洪水缓解措施的重点规模和区域。

方法】:通过使用最先进的贫困和洪水数据,分析188个国家洪水风险与贫困的交互影响。

实验】:研究使用未知具体名称的数据集,得出了高洪水风险人群和极端贫困人群的分布情况,发现780 million 日收入低于$5.50的人群面临高洪水风险。