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Modeling Exposure to Traffic-Related Air Pollutants for the Residential Human Health Risk Assessment Study in Kyiv, Ukraine

机译:在乌克兰基辅住宅人体健康风险评估研究的户籍与流量相关空气污染物的建模

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Academy of Medical Sciences of Ukraine", Kyiv, Ukraine Arina Petrosian, State Institution "O.M. Marzeyev Institute for Public Health of the National Academy of Medical Sciences of Ukraine", Kyiv, Ukraine Introduction: There is a strong body of evidence linking traffic-related air pollution exposure to adverse health effects. Although accurate air quality data is rarely available for the urban residential neighborhood. This provides the ground for the development of various modeling techniques for obtaining more accurate exposure estimates compared to monitoring data. Assessment of human health risks attributable to traffic related air pollution study was designed to evaluate the risks of development of respiratory health outcomes in population living near roadways in Kyiv, Ukraine. Methods: A combination of modeling approaches was used to estimate exposures to traffic-related air pollutants for the residents living in close proximity to the roadways in two city districts. Field studies were conducted to provide measurement data for developing, evaluating and refining the models. CO, NO2, SO2, NMHC, PM2,5, PM10, PM1 concentrations, meteorological parameters, fleet intensity and structure data were obtained in two measurement campaigns (2012-2014). A land-use regression (LUR) models were developed to capture NO2, CO, PM10, PM2,5, PM1 near-road variability. I5C-AERMOD View air pollution dispersion model was used to model averaged 1-, 8-, 24-hour and annual concentrations of CO, NO2, SO2, NMHC and PM10 at 952 receptor points covering the area of the study. Agreement between ISC-AERMOD View modeled and measured concentrations was assessed based on the standard methods. Results: Vehicles number, road distance, road length, land use and meteorological variables were the most important predictors of traffic-related air pollution variability for LUR models. Developed models explained up to 75% of the spatial variability for studied pollutants in near-roadway residential neighborhoods and demonstrated a good agreement between observed concentrations and predicted levels (average difference of 3-10%). Correlation analysis revealed strong association between ISC-AERMOD view modeled values and measurements of NO2, (r=0,93, p<0,005) and weaker associations for other pollutants (p<0,005): r=0,88 for CO, r=0,90 for SO2, r=0,88 for NMHC, and r=0,74 for PM10. Conclusions: The results demonstrated an integrated measurement study design. Applied modeling techniques proved to be an effective instrument of human exposure assessment when limited monitoring data is available. Based on the models outputs traffic-related exposure maps were developed for the study area and corresponding human health risks formed by traffic- related air pollution were assessed.
机译:乌克兰医学科学院“,Kyiv,乌克兰阿里娜·塞多洛斯人,国家机构”O.M.乌克兰国家医学院公共卫生大学公共卫生研究所“,KYIV,乌克兰介绍:有一个强有力的证据表明交通相关的空气污染暴露在不利的健康影响。虽然准确的空气质量数据很少可用城市住宅区。这为开发各种建模技术的地面提供了与监测数据相比获得更准确的曝光估计的地面。旨在评估交通相关空气污染研究的人类健康风险,旨在评估呼吸系统恢复结果的发展风险在乌克兰Kyiv的道路附近的人口中。方法:采用建模方法的组合来估算与居住在两个城市地区的道路附近的居民居住的居民的露天。进行了测量用于开发,评估和改进模型的数据。在两个测量运动中获得了CO,NO2,SO2,NMHC,PM2,5,PM10,PM1浓度,气象参数,舰队强度和结构数据(2012-2014)。开发了一种土地使用回归(LUR)模型以捕获NO2,CO,PM10,PM2,5,PM1近道路变异性。 I5C-Aermod视图空气污染分散模型用于在覆盖研究区域的952个受体点,在952个受体点模拟平均为1-,8-,24小时和每年浓度的CO,NO2,SO2,NMHC和PM10。根据标准方法评估ISC-Aermod视图之间的协议和测量浓度。结果:车辆数量,道路距离,道路长度,土地利用和气象变量是LUR模型的流量相关空气污染变异性最重要的预测因子。开发的模型对近巷住宅邻域的污染物污染物的空间变异性高达75%,并在观察到的浓度和预测水平之间展示了良好的一致性(平均差异为3-10%)。相关性分析显示ISC-Aermod视图模型和NO2的测量之间的强烈关联,(r = 0,93,p <0005)和其他污染物的较弱关联(p <0,005):r = 0,88 for co,r = 0.90对于NMHC的SO2,R = 0,88,PM10的r = 0,74。结论:结果表明了综合测量研究设计。当可获得有限监测数据时,应用建模技术是人体暴露评估的有效仪器。基于型号,输出业务相关的曝光地图是为研究区域开发的,并且评估了通过交通相关的空气污染形成的相应人体健康风险。

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