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 ...
BACKGROUND: Land use regression (LUR) models have mostly been developed to explain intra-urban varia...
BACKGROUND: Land use regression (LUR) models have mostly been developed to explain intra-urban varia...
Estimating within-city variability in air pollution concentrations is important. Land use regression...
Including satellite observations of nitrogen dioxide (NO2) in land-use regression (LUR) models can i...
Including satellite observations of nitrogen dioxide (NO2) in land-use regression (LUR) models can i...
Land-use regression (LUR) is a technique that can improve the accuracy of air pollution exposure ass...
Land use regression (LUR) modelling has increasingly been applied to model fine scale spatial variat...
BACKGROUND: Methods for estimating air pollutant exposures for epidemiological studies are becoming ...
Hewson, MG ORCiD: 0000-0002-5212-3921Assessing historical exposure to air pollution in epidemiologic...
Land use regression (LUR) models have become popular to explain the spatial variation of air polluti...
Land use regression (LUR) models have become popular to explain the spatial variation of air polluti...
Highlights - This study developed a novel land use regression model for predicting daily average NO2...
Existing national- or continental-scale models of nitrogen dioxide (NO2) exposure have a limited cap...
BACKGROUND: Land use regression (LUR) models have mostly been developed to explain intra-urban varia...
BACKGROUND: Land use regression (LUR) models have mostly been developed to explain intra-urban varia...
Estimating within-city variability in air pollution concentrations is important. Land use regression...
Including satellite observations of nitrogen dioxide (NO2) in land-use regression (LUR) models can i...
Including satellite observations of nitrogen dioxide (NO2) in land-use regression (LUR) models can i...
Land-use regression (LUR) is a technique that can improve the accuracy of air pollution exposure ass...
Land use regression (LUR) modelling has increasingly been applied to model fine scale spatial variat...
BACKGROUND: Methods for estimating air pollutant exposures for epidemiological studies are becoming ...
Hewson, MG ORCiD: 0000-0002-5212-3921Assessing historical exposure to air pollution in epidemiologic...
Land use regression (LUR) models have become popular to explain the spatial variation of air polluti...
Land use regression (LUR) models have become popular to explain the spatial variation of air polluti...
Highlights - This study developed a novel land use regression model for predicting daily average NO2...
Existing national- or continental-scale models of nitrogen dioxide (NO2) exposure have a limited cap...
BACKGROUND: Land use regression (LUR) models have mostly been developed to explain intra-urban varia...
BACKGROUND: Land use regression (LUR) models have mostly been developed to explain intra-urban varia...
Estimating within-city variability in air pollution concentrations is important. Land use regression...