Monthly average air pollution models using geographically weighted regression in Europe from 2000 to 2019
Publication date
2024-03-25
Authors
Shen, Youchen
de Hoogh, Kees
Schmitz, Oliver
Clinton, Nick
Tuxen-Bettman, Karin
Brandt, Jørgen
Christensen, Jesper H.
Frohn, Lise M.
Geels, Camilla
Karssenberg, Derek
Editors
Advisors
Supervisors
Document Type
Article
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Abstract
Detailed spatial models of monthly air pollution levels at a very fine spatial resolution (25 m) can help facilitate studies to explore critical time-windows of exposure at intermediate term. Seasonal changes in air pollution may affect both levels and spatial patterns of air pollution across Europe. We built Europe-wide land-use regression (LUR) models to estimate monthly concentrations of regulated air pollutants (NO2, O3, PM10 and PM2.5) between 2000 and 2019. Monthly average concentrations were collected from routine monitoring stations. Including both monthly-fixed and -varying spatial variables, we used supervised linear regression (SLR) to select predictors and geographically weighted regression (GWR) to estimate spatially-varying regression coefficients for each month. Model performance was assessed with 5-fold cross-validation (CV). We also compared the performance of the monthly LUR models with monthly adjusted concentrations. Results revealed significant monthly variations in both estimates and model structure, particularly for O3, PM10, and PM2.5. The 5-fold CV showed generally good performance of the monthly GWR models across months and years (5-fold CV R2: 0.31–0.66 for NO2, 0.4–0.79 for O3, 0.4–0.78 for PM10, 0.46–0.87 for PM2.5). Monthly GWR models slightly outperformed monthly-adjusted models. Correlations between monthly GWR model were generally moderate to high (Pearson correlation >0.6). In conclusion, we are the first to develop robust monthly LUR models for air pollution in Europe. These monthly LUR models, at a 25 m spatial resolution, enhance epidemiologists to better characterize Europe-wide intermediate-term health effects related to air pollution, facilitating investigations into critical exposure time windows in birth cohort studies.
Keywords
Air pollution, Europe-wide, Land-use regression, Monthly variation, Spatiotemporal variation, Environmental Engineering, Environmental Chemistry, Waste Management and Disposal, Pollution
Citation
Shen, Y, de Hoogh, K, Schmitz, O, Clinton, N, Tuxen-Bettman, K, Brandt, J, Christensen, J H, Frohn, L M, Geels, C, Karssenberg, D, Vermeulen, R & Hoek, G 2024, 'Monthly average air pollution models using geographically weighted regression in Europe from 2000 to 2019', Science of the Total Environment, vol. 918, 170550. https://doi.org/10.1016/j.scitotenv.2024.170550