TY - JOUR
T1 - Development of Land Use Regression Models for PM(2.5), PM(2.5) Absorbance, PM(10) and PM(coarse) in 20 European Study Areas
T2 - Results of the ESCAPE Project
AU - Eeftens, Marloes
AU - Beelen, Rob
AU - de Hoogh, Kees
AU - Bellander, Tom
AU - Cesaroni, Giulia
AU - Cirach, Marta
AU - Declercq, Christophe
AU - Dėdelė, Audrius
AU - Dons, Evi
AU - de Nazelle, Audrey
AU - Dimakopoulou, Konstantina
AU - Eriksen, Kirsten
AU - Falq, Grégoire
AU - Fischer, Paul
AU - Galassi, Claudia
AU - Gražulevičienė, Regina
AU - Heinrich, Joachim
AU - Hoffmann, Barbara
AU - Jerrett, Michael
AU - Keidel, Dirk
AU - Korek, Michal
AU - Lanki, Timo
AU - Lindley, Sarah
AU - Madsen, Christian
AU - Mölter, Anna
AU - Nádor, Gizella
AU - Nieuwenhuijsen, Mark
AU - Nonnemacher, Michael
AU - Pedeli, Xanthi
AU - Raaschou-Nielsen, Ole
AU - Patelarou, Evridiki
AU - Quass, Ulrich
AU - Ranzi, Andrea
AU - Schindler, Christian
AU - Stempfelet, Morgane
AU - Stephanou, Euripides
AU - Sugiri, Dorothea
AU - Tsai, Ming-Yi
AU - Yli-Tuomi, Tarja
AU - Varró, Mihály J.
AU - Vienneau, Danielle
AU - Klot, Stephanie von
AU - Wolf, Kathrin
AU - Brunekreef, Bert
AU - Hoek, Gerard
PY - 2012
Y1 - 2012
N2 - Land Use Regression (LUR) models have been used increasingly for modeling small-scale spatial variation in air pollution concentrations and estimating individual exposure for participants of cohort studies. Within the ESCAPE project, concentrations of PM(2.5), PM(2.5) absorbance, PM(10), and PM(coarse) were measured in 20 European study areas at 20 sites per area. GIS-derived predictor variables (e.g., traffic intensity, population, and land-use) were evaluated to model spatial variation of annual average concentrations for each study area. The median model explained variance (R(2)) was 71% for PM(2.5) (range across study areas 35-94%). Model R(2) was higher for PM(2.5) absorbance (median 89%, range 56-97%) and lower for PM(coarse) (median 68%, range 32- 81%). Models included between two and five predictor variables, with various traffic indicators as the most common predictors. Lower R(2) was related to small concentration variability or limited availability of predictor variables, especially traffic intensity. Cross validation R(2) results were on average 8-11% lower than model R(2). Careful selection of monitoring sites, examination of influential observations and skewed variable distributions were essential for developing stable LUR models. The final LUR models are used to estimate air pollution concentrations at the home addresses of participants in the health studies involved in ESCAPE.
AB - Land Use Regression (LUR) models have been used increasingly for modeling small-scale spatial variation in air pollution concentrations and estimating individual exposure for participants of cohort studies. Within the ESCAPE project, concentrations of PM(2.5), PM(2.5) absorbance, PM(10), and PM(coarse) were measured in 20 European study areas at 20 sites per area. GIS-derived predictor variables (e.g., traffic intensity, population, and land-use) were evaluated to model spatial variation of annual average concentrations for each study area. The median model explained variance (R(2)) was 71% for PM(2.5) (range across study areas 35-94%). Model R(2) was higher for PM(2.5) absorbance (median 89%, range 56-97%) and lower for PM(coarse) (median 68%, range 32- 81%). Models included between two and five predictor variables, with various traffic indicators as the most common predictors. Lower R(2) was related to small concentration variability or limited availability of predictor variables, especially traffic intensity. Cross validation R(2) results were on average 8-11% lower than model R(2). Careful selection of monitoring sites, examination of influential observations and skewed variable distributions were essential for developing stable LUR models. The final LUR models are used to estimate air pollution concentrations at the home addresses of participants in the health studies involved in ESCAPE.
U2 - 10.1021/es301948k
DO - 10.1021/es301948k
M3 - Article
C2 - 22963366
SN - 0013-936X
VL - 46
SP - 11195
EP - 11205
JO - Environmental Science and Technology
JF - Environmental Science and Technology
IS - 20
ER -