环境科学
回归分析
解释的变化
统计
空间变异性
线性回归
空气污染
人口
逐步回归
航程(航空)
地理
大气科学
数学
环境卫生
生态学
医学
复合材料
地质学
材料科学
生物
作者
Marloes Eeftens,Rob Beelen,Kees de Hoogh,Tom Bellander,Giulia Cesaroni,Marta Cirach,Christophe Declercq,Audrius Dėdelė,Evi Dons,Audrey de Nazelle,Konstantina Dimakopoulou,Kirsten T. Eriksen,Grégoire Falq,Paul Fischer,Claudia Galassi,Regina Gražulevičienė,Joachim Heinrich,Barbara Hoffmann,Michael Jerrett,Dirk Keidel
摘要
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.
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