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A land use regression model of nitrogen dioxide and fine participate matter in a complex urban core in Lanzhou, China

机译:中国兰州复杂城市核心区二氧化氮和精细参与物的土地利用回归模型

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摘要

Background: Land use regression (LUR) models have been widely used to estimate air pollution exposures at high spatial resolution. However, few LUR models were developed for rapidly developing urban cores, which have substantially higher densities of population and built-up areas than the surrounding areas within a city's administrative boundary. Further, few studies incorporated vertical variations of air pollution in exposure assessment, which might be important to estimate exposures for people living in high-rise buildings.Objective: A LUR model was developed for the urban core of Lanzhou, China, along with a model of vertical concentration gradients in high-rise buildings.Methods: In each of four seasons in 2016-2017, NO2 was measured using Ogawa badges for 2 weeks at 75 ground-level sites. PM2.5 was measured using DataRAM for shorter time intervals at a subset (N = 38) of the 75 sites. Vertical profile measurements were conducted on 9 stories at 2 high-rise buildings (N = 18), with one building facing traffic and another facing away from traffic. The average seasonal concentrations of NO2 and PM2.5 at ground level were regressed against spatial predictors, including elevation, population, road network, land cover, and land use. The vertical variations were investigated and linked to ground-level predictions with exponential models.Results: We developed robust LUR models at the ground level for estimated annual averages of NO2 (R-2: 0.71, adjusted R-2: 0.67, and Leave-One-Out Cross Validation (LOOCV) R-2: 0.64) and PM2.5 (R-2: 0.77, adjusted R-2: of 0.73, and LOOCV R-2: 0.67) in the urban core of Lanzhou, China. The LUR models for the estimated seasonal averages of NO2 showed similar patterns. Vertical variation of NO2 and PM2.5 differed by windows orientation with respect to traffic, by season or by time of a day. Vertical variation functions incorporated the ground-level LUR predictions, in a form that could allow for exposure assessment in future epidemiological investigations.Conclusions: Ground-level NO2 and PM2.5 showed substantial spatial variations, explained by traffic and land use patterns. Further, vertical variation of air pollution levels is significant under certain conditions, suggesting that exposure misclassification could occur with traditional LUR that ignores vertical variation. More studies are needed to fully characterize three-dimensional concentration patterns to accurately estimate air pollution exposures for residents in high-rise buildings, but our LUR models reinforce that concentration heterogeneity is not captured by the limited government monitors in the Lanzhou urban area.
机译:背景:土地利用回归(LUR)模型已被广泛用于以高空间分辨率估算空气污染暴露。但是,为快速发展的城市核心开发的LUR模型很少,而城市核心的人口密度和建筑面积比城市行政区域内的周边地区高得多。此外,很少有研究将空气污染的垂直变化纳入暴露评估中,这对于估算高层建筑中的人们的暴露可能很重要。目的:针对中国兰州城市中心开发了一个LUR模型以及一个模型方法:在2016-2017年的四个季节中的每个季节,使用Ogawa徽章在75个地面站点上测量两周的NO2。使用DataRAM在75个站点的子集(N = 38)中以较短的时间间隔测量了PM2.5。在2座高层建筑(N = 18)的9个楼层上进行了垂直剖面测量,其中一栋面向交通,另一栋面向交通。将NO2和PM2.5在地面的平均季节性浓度与空间预测因素进行了回归,这些预测因素包括海拔,人口,道路网络,土地覆盖和土地利用。结果:我们在地面上开发了鲁棒的LUR模型,以估算NO2的年平均值(R-2:0.71,调整后的R-2:0.67,而Leave-兰州市区中心的一次性交叉验证(LOOCV)R-2:0.64)和PM2.5(R-2:0.77,调整后R-2:0.73,LOOCV R-2:0.67)。用于估算NO2季节平均值的LUR模型显示出相似的模式。 NO2和PM2.5的垂直变化随窗户相对于交通的方向,季节或一天中的时间而有所不同。垂直变化函数结合了地面LUR预测,其形式可以在未来的流行病学调查中进行暴露评估。结论:地面NO2和PM2.5显示出很大的空间变化,可以通过交通和土地利用模式来解释。此外,在某些条件下,空气污染水平的垂直变化非常显着,这表明传统的LUR忽略了垂直变化,可能发生暴露分类错误。需要进行更多研究才能全面表征三维浓度模式,以准确估算高层建筑居民的空气污染暴露,但我们的LUR模型强调,兰州市区有限的政府监控人员无法捕获浓度异质性。

著录项

  • 来源
    《Environmental research》 |2019年第10期|108597.1-108597.13|共13页
  • 作者单位

    Yale Univ Sch Forestry & Environm Studies 195 Prospect St New Haven CT 06511 USA|Yale Univ Yale Sch Med 60 Coll St New Haven CT 06511 USA;

    Johns Hopkins Univ Bloomberg Sch Publ Hlth 615 N Wolfe St Baltimore MD 21205 USA|Univ Minnesota Environm Hlth Sci Div Sch Publ Hlth 420 Delaware St SE Minneapolis MN 55455 USA;

    Yale Univ Sch Publ Hlth 60 Coll St New Haven CT 06510 USA;

    Boston Univ Sch Publ Hlth 715 Albany St Talbot Bldg Boston MA 02118 USA;

    New York Univ Dept Environm Med 57 Old Forge Rd Tuxedo Pk NY 10987 USA;

    Chinese Acad Sci Nanjing Inst Geog & Limnol Key Lab Watershed Geog Sci 73 East Beijing Rd Nanjing 210008 Jiangsu Peoples R China;

    Tsinghua Univ Sch Environm Beijing 100091 Peoples R China;

    Gansu Acad Environm Sci 225 Yanerwan Rd Lanzhou 730000 Gansu Peoples R China;

    Yale Univ Sch Forestry & Environm Studies 195 Prospect St New Haven CT 06511 USA;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Land use regression; Vertical variation; PM2.5; NO2; Urban;

    机译:土地利用回归;垂直变化;PM2.5;NO2;市区;

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