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Spatial Modeling of Diesel Exhaust Markers in South Seattle.

机译:南西雅图柴油机尾气标记的空间建模。

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摘要

Background: South Park and Georgetown, two of Seattle's most diverse and affordable neighborhoods, contain the primary commercial traffic corridors from the Port of Seattle to interstates and state highways. Residents of these communities have expressed concern about exposure to diesel exhaust emitted by the large number of commercial trucks that pass through their neighborhoods. The aim of this project was to model the spatial distribution of diesel exhaust markers at a fine scale across these neighborhoods using measurements from a high-density air sampling campaign.;Methods: Two-week average concentrations of two markers of diesel exhaust, 1-nitropyrene (1-NP) and light-absorbing carbon (LAC), were measured in summer and winter at 24 sites. Land-use regression models were built using spatial characteristics of sampling sites, including land use and road density. Mobile source emissions predictions from the CAL3QHCR dispersion model were included in spatial models. Light-scattering particle concentrations measured by a mobile monitoring platform that drove through the neighborhoods were also included as model covariates. Model predictions were generated using land-use regression equations for a grid of points 50m apart across the study area. Universal kriging was applied to these grid points to generate a raster surface of the gradient of predictions.;Results: 1-NP concentrations ranged from 0.263 pg/m 3 to 2.51 pg/m3 in summer and 1.11 pg/m3 to 5.71 pg/m3 in winter. LAC concentrations, measured as the absorption coefficient of collected fine particles, ranged from 4.31E-06 m -1 to 7.84E-06 m-1 in summer and 6.30E-06 m -1 to 9.42E-06 m-1 in winter. The summer 1-NP model had an R2 of 0.87 and a leave-one-out cross-validated R 2 of 0.73. No prediction model of winter 1-NP was identified. The LAC models had R2 values of 0.78 and 0.79 and leave-one-out-cross-validated R2 values of 0.66 and 0.70 for August and December, respectively.;Conclusions: Spatial modeling was successfully used to identify a clear gradient in concentrations of diesel exhaust markers at a fine scale within the neighborhoods of South Park and Georgetown. Spatial features that predicted diesel exhaust concentrations included dispersion model predictions, mobile monitoring results, land use, and distance to railroad tracks, roads and intersections. The existence of this gradient suggests that particularly in stagnant periods, the health and environmental impacts of diesel traffic are not evenly distributed across these neighborhoods.
机译:背景:南公园和乔治敦是西雅图最多样化,价格最实惠的两个社区,拥有从西雅图港到州际公路和州际公路的主要商业交通走廊。这些社区的居民对通过其社区的大量商用卡车所排放的柴油机废气表示关切。该项目的目的是使用高密度空气采样活动的测量结果,在这些社区中以精细尺度模拟柴油机尾气排放物的空间分布。方法:方法:两个星期的两个柴油机尾气排放物平均浓度为1在夏季和冬季的24个地点测量了硝基py(1-NP)和吸光碳(LAC)。利用采样点的空间特征,包括土地利用和道路密度,建立了土地利用回归模型。空间模型中包含来自CAL3QHCR色散模型的移动源排放预测。由移动监测平台测得的散射区域中的散射光浓度也被作为模型协变量。使用土地利用回归方程式对整个研究区域相隔50m的点网格生成模型预测。结果:1-NP浓度范围从0.263 pg / m 3到2.51 pg / m3在夏天和1.11 pg / m3到5.71 pg / m3在这些网格点上使用通用克里金法生成预测梯度的栅格表面。在冬季。以收集的细颗粒的吸收系数衡量的LAC浓度,夏季范围为4.31E-06 m -1至7.84E-06 m-1,冬季范围为6.30E-06 m -1至9.42E-06 m-1 。夏季1-NP模型的R2为0.87,留一法交叉验证的R 2为0.73。尚未确定冬季1-NP的预测模型。 LAC模型在8月和12月的R2值分别为0.78和0.79,一经交叉验证的R2值分别为0.66和0.70。结论:空间模型已成功用于识别柴油浓度的清晰梯度在南方公园和乔治敦附近的区域内,有良好的排气标记。预测柴油机废气浓度的空间特征包括扩散模型预测,移动监测结果,土地使用以及与铁轨,道路和交叉路口的距离。该梯度的存在表明,特别是在停滞期,柴油交通的健康和环境影响在这些社区中分布不均。

著录项

  • 作者

    Schulte, Jill Katherine.;

  • 作者单位

    University of Washington.;

  • 授予单位 University of Washington.;
  • 学科 Environmental Health.;Atmospheric Sciences.;Environmental Sciences.
  • 学位 Masters
  • 年度 2013
  • 页码 77 p.
  • 总页数 77
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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