Method for fusing observational data and chemical transport model simulations to estimate spatiotemporally resolved ambient air pollution

Friberg, MD; Zhai, X; Holmes, HA; Chang, HH; Strickland, MJ; Sarnat, SE; Tolbert, PE; Russell, AG; Mulholland, JA

HERO ID

3121190

Reference Type

Journal Article

Year

2016

Language

English

PMID

26923334

HERO ID 3121190
In Press No
Year 2016
Title Method for fusing observational data and chemical transport model simulations to estimate spatiotemporally resolved ambient air pollution
Authors Friberg, MD; Zhai, X; Holmes, HA; Chang, HH; Strickland, MJ; Sarnat, SE; Tolbert, PE; Russell, AG; Mulholland, JA
Journal Environmental Science & Technology
Volume 50
Issue 7
Page Numbers 3695-3705
Abstract Investigations of ambient air pollution health effects rely on complete and accurate spatiotemporal air pollutant estimates. Three methods are developed for fusing ambient monitor measurements and 12 km resolution chemical transport model (CMAQ) simulations to estimate daily air pollutant concentrations across Georgia. Temporal variance is determined by observations in one method, with the annual mean CMAQ field providing spatial structure. A second method involves scaling daily CMAQ simulated fields using mean observations to reduce bias. Finally, a weighted average of these results based on prediction of temporal variance provides optimized daily estimates for each 12 × 12 km grid. These methods were applied to daily metrics of 12 pollutants (CO, NO2, NOx, O3, SO2, PM10, PM2.5, and five PM2.5 components) over the state of Georgia for a seven-year period (2002-2008). Cross-validation demonstrates a wide range in optimized model performance across pollutants, with SO2 predicted most poorly due to limitations in coal combustion plume monitoring and modeling. For the other pollutants studied, 54-88% of the spatiotemporal variance (Pearson R(2) from cross-validation) was captured, with ozone and PM2.5 predicted best. The optimized fusion approach developed provides daily spatial field estimates of air pollutant concentrations and uncertainties that are consistent with observations, emissions, and meteorology.
Doi 10.1021/acs.est.5b05134
Pmid 26923334
Wosid WOS:000373655800047
Url https://pubs.acs.org/doi/10.1021/acs.est.5b05134
Is Certified Translation No
Dupe Override No
Is Public Yes
Language Text English
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