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Development of NO(2)and NO(x) land use regression models for estimating air pollution exposure in 36 study areas in Europe - The ESCAPE project
JournalArticle (Originalarbeit in einer wissenschaftlichen Zeitschrift)
 
ID 1796053
Author(s) Beelen, R.; Hoek, G.; Vienneau, D.; Eeftens, M.; Dimakopoulou, K.; Pedeli, X.; Tsai, M. Y.; Künzli, N.; Schikowski, T.; Marco, A.; Eriksen, K.; Raaschou-Nielsen, O.; Stephanou, E.; Patelarou, E.; Lanki, T.; Yli-Tuomi, T.; Declercq, C.; Falq, G.; Stempfelet, M.; Birk, M.; Cyrys, J.; von Klot, S.; Nador, G.; Varro, M. J.; Dedele, A.; Grazuleviciene, R.; Mölter, A.; Lindley, S.; Madsen, C.; Cesaroni, G.; Ranzi, A.; Badaloni, C.; Hoffmann, B.; Nonnemacher, M.; Krämer, U.; Kuhlbusch, T.; Cirach, M.; de Nazelle, A.; Nieuwenhuijsen, M.; Bellander, T.; Korek, M.; Olsson, D.; Strömgren, M.; Dons, E.; Jerrett, M.; Fischer, P.; Wang, M.; Brunekreef, B.; de Hoogh, K.
Author(s) at UniBasel Vienneau, Danielle
Eeftens, Marloes
Tsai, Ming-Yi
Künzli, Nino
Schikowski, Tamara
Year 2013
Title Development of NO(2)and NO(x) land use regression models for estimating air pollution exposure in 36 study areas in Europe - The ESCAPE project
Journal Atmospheric environment
Volume 72
Pages / Article-Number 10-23
Keywords ESCAPE, Air pollution, NO2, NOx, Land Use Regression (LUR) model
Abstract Estimating within-city variability in air pollution concentrations is important. Land use regression (LUR) models are able to explain such small-scale within-city variations. Transparency in LUR model development methods is important to facilitate comparison of methods between different studies. We therefore developed LUR models in a standardized way in 36 study areas in Europe for the ESCAPE (European Study of Cohorts for Air Pollution Effects) project.Nitrogen dioxide (NO2) and nitrogen oxides (NOx) were measured with Ogawa passive samplers at 40 or 80 sites in each of the 36 study areas. The spatial variation in each area was explained by LUR modelling. Centrally and locally available Geographic Information System (GIS) variables were used as potential predictors. A leave-one out cross-validation procedure was used to evaluate the model performance.There was substantial contrast in annual average NO2 and NOx concentrations within the study areas. The model explained variances (R-2) of the LUR models ranged from 55% to 92% (median 82%) for NO2 and from 49% to 91% (median 78%) for NOx. For most areas the cross-validation R-2 was less than 10% lower than the model R-2. Small-scale traffic and population/household density were the most common predictors. The magnitude of the explained variance depended on the contrast in measured concentrations as well as availability of GIS predictors, especially traffic intensity data were important. In an additional evaluation, models in which local traffic intensity was not offered had 10% lower R-2 compared to models in the same areas in which these variables were offered.Within the ESCAPE project it was possible to develop LUR models that explained a large fraction of the spatial variance in measured annual average NO2 and NOx concentrations. These LUR models are being used to estimate outdoor concentrations at the home addresses of participants in over 30 cohort studies. (C) 2013 Elsevier Ltd. All rights reserved.
Publisher Pergamon
ISSN/ISBN 1352-2310
edoc-URL http://edoc.unibas.ch/dok/A6124644
Full Text on edoc No
Digital Object Identifier DOI 10.1016/j.atmosenv.2013.02.037
ISI-Number WOS:000318262000002
Document type (ISI) Article
 
   

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