航空网
环境科学
卫星
水色仪
微粒
气溶胶
矿物粉尘
遥感
气象学
太阳光度计
地球静止轨道
地理
航空航天工程
浮游植物
化学
有机化学
营养物
工程类
生物
生态学
作者
Aaron van Donkelaar,Randall V. Martin,Michael Bräuer,N. Christina Hsu,Ralph A. Kahn,R. C. Levy,Alexei Lyapustin,A. M. Sayer,David M. Winker
标识
DOI:10.1021/acs.est.5b05833
摘要
We estimated global fine particulate matter (PM2.5) concentrations using information from satellite-, simulation- and monitor-based sources by applying a Geographically Weighted Regression (GWR) to global geophysically based satellite-derived PM2.5 estimates. Aerosol optical depth from multiple satellite products (MISR, MODIS Dark Target, MODIS and SeaWiFS Deep Blue, and MODIS MAIAC) was combined with simulation (GEOS-Chem) based upon their relative uncertainties as determined using ground-based sun photometer (AERONET) observations for 1998–2014. The GWR predictors included simulated aerosol composition and land use information. The resultant PM2.5 estimates were highly consistent (R2 = 0.81) with out-of-sample cross-validated PM2.5 concentrations from monitors. The global population-weighted annual average PM2.5 concentrations were 3-fold higher than the 10 μg/m3 WHO guideline, driven by exposures in Asian and African regions. Estimates in regions with high contributions from mineral dust were associated with higher uncertainty, resulting from both sparse ground-based monitoring, and challenging conditions for retrieval and simulation. This approach demonstrates that the addition of even sparse ground-based measurements to more globally continuous PM2.5 data sources can yield valuable improvements to PM2.5 characterization on a global scale.
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