首页> 外文期刊>Environmental Science & Technology >Development of Land Use Regression Models for PM_(2.5), PM_(2.5) Absorbance, PM_(10) and PM_(coarse) in 20 European Study Areas; Results of the ESCAPE Project
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Development of Land Use Regression Models for PM_(2.5), PM_(2.5) Absorbance, PM_(10) and PM_(coarse) in 20 European Study Areas; Results of the ESCAPE Project

机译:在20个欧洲研究区开发用于PM_(2.5),PM_(2.5)吸光度,PM_(10)和PM_(粗)的土地利用回归模型; ESCAPE项目的成果

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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 35-9496). Model R~2 was higher for PM_(2.5) absorbance (median 8996, 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.
机译:土地使用回归(LUR)模型已越来越多地用于对空气污染浓度的小范围空间变化进行建模,并为队列研究的参与者估算个人暴露。在ESCAPE项目中,在20个欧洲研究区域(每个区域20个站点)中测量了PM_(2.5),PM_(2.5)吸光度,PM_(10)和PM_(粗)的浓度。评估了GIS衍生的预测变量(例如交通强度,人口和土地利用),以模拟每个研究区域年平均浓度的空间变化。 PM_(2.5)的中位数模型解释方差(R〜2)为71%(研究区域35-9496之间)。对于PM_(2.5)吸光度,模型R〜2较高(中值8996,范围56-97%),对于PM_(粗略),模型R〜2较低(中值68%,范围32-81%)。模型包含2到5个预测变量,其中各种流量指标是最常见的预测变量。较低的R〜2与较小的浓度变异性或预测变量(尤其是交通强度)的有限可用性有关。交叉验证R〜2结果平均比模型R〜2低8-11%。仔细选择监测地点,检查有影响的观察结果和偏斜的变量分布对于建立稳定的LUR模型至关重要。最终的LUR模型用于估计参与ESCAPE的健康研究参与者的家庭住址中的空气污染浓度。

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  • 来源
    《Environmental Science & Technology》 |2012年第20期|p.11195-11205|共11页
  • 作者单位

    Istitute for Risk Assessment Sciences, Utrecht University, P.O. Box 80178, 3508 TD Utrecht, The Netherlands;

    Istitute for Risk Assessment Sciences, Utrecht University, P.O. Box 80178, 3508 TD Utrecht, The Netherlands;

    MRC-HPA Centre for Environment and Health, Department of Epidemiology and Biostatistics, Imperial College London, London, United Kingdom;

    Institute of Environmental Medicine, Karolinska Institutet, Stockholm, Sweden;

    Epidemiology Department, Lazio Regional Health Service, Rome, Italy;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);美国《生物学医学文摘》(MEDLINE);美国《化学文摘》(CA);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
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  • 入库时间 2022-08-17 14:03:00

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