Ganguly Rajiv, Batterman Stuart, Isakov Vlad, Snyder Michelle, Breen Michael, Brakefield-Caldwell Wilma
Department of Civil Engineering, Jaypee University of Information Technology, Solan, India.
Environmental Health Sciences, University of Michigan, Ann Arbor, Michigan, USA.
J Expo Sci Environ Epidemiol. 2015 Sep-Oct;25(5):490-8. doi: 10.1038/jes.2015.1. Epub 2015 Feb 11.
Exposure to traffic-related air pollutants is highest very near roads, and thus exposure estimates are sensitive to positional errors. This study evaluates positional and PM2.5 concentration errors that result from the use of automated geocoding methods and from linearized approximations of roads in link-based emission inventories. Two automated geocoders (Bing Map and ArcGIS) along with handheld GPS instruments were used to geocode 160 home locations of children enrolled in an air pollution study investigating effects of traffic-related pollutants in Detroit, Michigan. The average and maximum positional errors using the automated geocoders were 35 and 196 m, respectively. Comparing road edge and road centerline, differences in house-to-highway distances averaged 23 m and reached 82 m. These differences were attributable to road curvature, road width and the presence of ramps, factors that should be considered in proximity measures used either directly as an exposure metric or as inputs to dispersion or other models. Effects of positional errors for the 160 homes on PM2.5 concentrations resulting from traffic-related emissions were predicted using a detailed road network and the RLINE dispersion model. Concentration errors averaged only 9%, but maximum errors reached 54% for annual averages and 87% for maximum 24-h averages. Whereas most geocoding errors appear modest in magnitude, 5% to 20% of residences are expected to have positional errors exceeding 100 m. Such errors can substantially alter exposure estimates near roads because of the dramatic spatial gradients of traffic-related pollutant concentrations. To ensure the accuracy of exposure estimates for traffic-related air pollutants, especially near roads, confirmation of geocoordinates is recommended.
暴露于与交通相关的空气污染物中的情况在道路附近非常高,因此暴露估计对位置误差很敏感。本研究评估了因使用自动地理编码方法以及基于路段的排放清单中道路的线性近似而导致的位置和PM2.5浓度误差。使用两个自动地理编码器(必应地图和ArcGIS)以及手持GPS仪器对密歇根州底特律市一项空气污染研究中招募的160名儿童的家庭住址进行地理编码,该研究调查与交通相关污染物的影响。使用自动地理编码器的平均位置误差和最大位置误差分别为35米和196米。比较道路边缘和道路中心线,房屋到高速公路的距离差异平均为23米,最大达到82米。这些差异归因于道路曲率、道路宽度和匝道的存在,这些因素在直接用作暴露指标或作为扩散或其他模型输入的接近度测量中应予以考虑。使用详细的道路网络和RLINE扩散模型预测了160个家庭的位置误差对与交通相关排放产生的PM2.5浓度的影响。浓度误差平均仅为9%,但年平均值的最大误差达到54%,24小时最大值平均值的最大误差达到87%。虽然大多数地理编码误差在幅度上似乎不大,但预计5%至20%的住宅位置误差会超过100米。由于与交通相关的污染物浓度存在巨大的空间梯度,此类误差会显著改变道路附近的暴露估计。为确保与交通相关的空气污染物暴露估计的准确性,特别是在道路附近,建议确认地理坐标。