| Literature DB >> 27768283 |
Luke D Knibbs1, Craig P Coorey2, Matthew J Bechle3, Christine T Cowie4,5,6, Mila Dirgawati7, Jane S Heyworth7, Guy B Marks4,5, Julian D Marshall3, Lidia Morawska8, Gavin Pereira9, Michael G Hewson10.
Abstract
Including satellite observations of nitrogen dioxide (NO2) in land-use regression (LUR) models can improve their predictive ability, but requires rigorous evaluation. We used 123 passive NO2 samplers sited to capture within-city and near-road variability in two Australian cities (Sydney and Perth) to assess the validity of annual mean NO2 estimates from existing national satellite-based LUR models (developed with 68 regulatory monitors). The samplers spanned roadside, urban near traffic (≤100 m to a major road), and urban background (>100 m to a major road) locations. We evaluated model performance using R2 (predicted NO2 regressed on independent measurements of NO2), mean-square-error R2 (MSE-R2), RMSE, and bias. Our models captured up to 69% of spatial variability in NO2 at urban near-traffic and urban background locations, and up to 58% of variability at all validation sites, including roadside locations. The absolute agreement of measurements and predictions (measured by MSE-R2) was similar to their correlation (measured by R2). Few previous studies have performed independent evaluations of national satellite-based LUR models, and there is little information on the performance of models developed with a small number of NO2 monitors. We have demonstrated that such models are a valid approach for estimating NO2 exposures in Australian cities.Entities:
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Year: 2016 PMID: 27768283 DOI: 10.1021/acs.est.6b03428
Source DB: PubMed Journal: Environ Sci Technol ISSN: 0013-936X Impact factor: 9.028