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Mixed-Effects Modeling Framework for Amsterdam and Copenhagen for Outdoor NO(2) Concentrations Using Measurements Sampled with Google Street View Cars

[Image: see text] High-resolution air quality (AQ) maps based on street-by-street measurements have become possible through large-scale mobile measurement campaigns. Such campaigns have produced data-only maps and have been used to produce empirical models [i.e., land use regression (LUR) models]. A...

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Detalles Bibliográficos
Autores principales: Kerckhoffs, Jules, Khan, Jibran, Hoek, Gerard, Yuan, Zhendong, Ellermann, Thomas, Hertel, Ole, Ketzel, Matthias, Jensen, Steen Solvang, Meliefste, Kees, Vermeulen, Roel
Formato: Online Artículo Texto
Lenguaje:English
Publicado: American Chemical Society 2022
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9178915/
https://www.ncbi.nlm.nih.gov/pubmed/35262348
http://dx.doi.org/10.1021/acs.est.1c05806
Descripción
Sumario:[Image: see text] High-resolution air quality (AQ) maps based on street-by-street measurements have become possible through large-scale mobile measurement campaigns. Such campaigns have produced data-only maps and have been used to produce empirical models [i.e., land use regression (LUR) models]. Assuming that all road segments are measured, we developed a mixed model framework that predicts concentrations by an LUR model, while allowing road segments to deviate from the LUR prediction based on between-segment variation as a random effect. We used Google Street View cars, equipped with high-quality AQ instruments, and measured the concentration of NO(2) on every street in Amsterdam (n = 46.664) and Copenhagen (n = 28.499) on average seven times over the course of 9 and 16 months, respectively. We compared the data-only mapping, LUR, and mixed model estimates with measurements from passive samplers (n = 82) and predictions from dispersion models in the same time window as mobile monitoring. In Amsterdam, mixed model estimates correlated r(s) (Spearman correlation) = 0.85 with external measurements, whereas the data-only approach and LUR model estimates correlated r(s) = 0.74 and 0.75, respectively. Mixed model estimates also correlated higher r(s) = 0.65 with the deterministic model predictions compared to the data-only (r(s) = 0.50) and LUR model (r(s) = 0.61). In Copenhagen, mixed model estimates correlated r(s) = 0.51 with external model predictions compared to r(s) = 0.45 and r(s) = 0.50 for data-only and LUR model, respectively. Correlation increased for 97 locations (r(s) = 0.65) with more detailed traffic information. This means that the mixed model approach is able to combine the strength of data-only mapping (to show hyperlocal variation) and LUR models by shrinking uncertain concentrations toward the model output.