环境科学
气候变化
代表性浓度途径
空气质量指数
环境卫生
微粒
空气污染
全球变暖
气候学
全球人口
公共卫生
全球卫生
全球变化
人口
气候模式
医学
大气科学
气象学
地理
生态学
化学
护理部
有机化学
地质学
生物
作者
Wanying Chen,Xingcheng Lu,Dehao Yuan,Yiang Chen,Zhenning Li,Yeqi Huang,Tung Fung,Haochen Sun,Jimmy Chi Hung Fung
标识
DOI:10.1021/acs.est.3c03804
摘要
Ambient fine particulate matter (PM2.5) has severe adverse health impacts, making it crucial to reduce PM2.5 exposure for public health. Meteorological and emissions factors, which considerably affect the PM2.5 concentrations in the atmosphere, vary substantially under different climate change scenarios. In this work, global PM2.5 concentrations from 2021 to 2100 were generated by combining the deep learning technique, reanalysis data, emission data, and bias-corrected CMIP6 future climate scenario data. Based on the estimated PM2.5 concentrations, the future premature mortality burden was assessed using the Global Exposure Mortality Model. Our results reveal that SSP3-7.0 scenario is associated with the highest PM2.5 exposure, with a global concentration of 34.5 μg/m3 in 2100, while SSP1-2.6 scenario has the lowest exposure, with an estimated of 15.7 μg/m3 in 2100. PM2.5-related deaths for individuals under 75 years will decrease by 16.3 and 10.5% under SSP1-2.6 and SSP5-8.5, respectively, from 2030s to 2090s. However, premature mortality for elderly individuals (>75 years) will increase, causing the contrary trends of improved air quality and increased total PM2.5-related deaths in the four SSPs. Our results emphasize the need for stronger air pollution mitigation measures to offset the future burden posed by population age.
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