| Literature DB >> 26953851 |
Aaron van Donkelaar1, Randall V Martin1,2, Michael Brauer3, N Christina Hsu4, Ralph A Kahn4, Robert C Levy4, Alexei Lyapustin4,5, Andrew M Sayer4,5, David M Winker6.
Abstract
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 (R(2) = 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/m(3) 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.Mesh:
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Year: 2016 PMID: 26953851 DOI: 10.1021/acs.est.5b05833
Source DB: PubMed Journal: Environ Sci Technol ISSN: 0013-936X Impact factor: 9.028