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首页> 外文期刊>The Science of the Total Environment >A hybrid modeling framework to estimate pollutant concentrations and exposures in near road environments
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A hybrid modeling framework to estimate pollutant concentrations and exposures in near road environments

机译:一个混合建模框架,可估算近道路环境中的污染物浓度和暴露程度

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Traffic related air pollution is one of the major local sources of pollution challengingmost urban populations. Current air quality modeling approaches can estimate the concentrations of air pollutants on either regional or local scales but cannot effectively estimate concentrations from the combination of regional and local sources at both local and regional scales simultaneously. This study describes a hybrid modeling framework, HYCAMR, combining a regional model, CAMx, and a local-scale dispersion model, R-LINE, to estimate concentrations of both primary and secondary species at high temporal (hourly) and spatial (40 m) resolution. HYCAMR utilizes all the chemical and physical processes available in CAMx and the Particulate Matter Source Apportionment Technology (PSAT) tool to estimate concentrations from both onroad and nonroad emission sources. HYCAMR employs R-LINE, to estimate the normalized dispersion of pollutant mass from onroad emission sources, from primary and secondary roads, at high resolution. Applying R-LINE for one day per month using average daily meteorology yields seasonally-resolved spatial dispersion profiles at low computational cost. Combining the R-LINE spatial dispersion profile with CAMx concentration estimates yields an estimate of the combined concentrations for a range of pollutants at high spatial and temporal resolution. In three major cities in Connecticut, HYCAMR shows strong temporal and seasonal variability in NOx, PM2.5, and elemental carbon (EC) concentrations. This study evaluates HYCAMR year 2011 estimates of NO2 and PM2.5 against two sources: satellite-based estimates at coarse resolution and regression model estimates at census block group resolution. In this evaluation, HYCAMR demonstrates improved agreement with the land-use regression modeling and mixed agreement with satellite-based estimates when compared to the regional CAMx estimates. (C) 2019 Elsevier B.V. All rights reserved.
机译:与交通有关的空气污染是挑战大多数城市人口的主要当地污染源之一。当前的空气质量建模方法可以估算区域或地方尺度上的空气污染物浓度,但不能同时根据局部和区域尺度上的区域和局部来源的组合来有效地估算浓度。这项研究描述了一种混合建模框架HYCAMR,结合了区域模型CAMx和局部尺度分散模型R-LINE,以估计高时空(每小时)和空间(40 m)处主要和次要物种的浓度解析度。 HYCAMR利用CAMx中可用的所有化学和物理过程以及颗粒物源分配技术(PSAT)工具来估算道路和非道路排放源的浓度。 HYCAMR使用R-LINE以高分辨率估算来自道路排放源,主要和次要道路的污染物质量的归一化扩散。使用每月平均每天使用R-LINE的每日平均气象量,可以以较低的计算成本生成季节性解析的空间色散曲线。将R-LINE空间色散曲线与CAMx浓度估算值结合起来,可以得到在高时空分辨率下一系列污染物的总浓度估算值。在康涅狄格州的三个主要城市,HYCAMR在NOx,PM2.5和元素碳(EC)浓度方面表现出强烈的时空变化。这项研究从两个方面评估了HYCAMR 2011年对NO2和PM2.5的估算:粗略分辨率的基于卫星的估算和普查区组分辨率的回归模型估算。在该评估中,与区域CAMx估计相比,HYCAMR证明了与土地利用回归模型的一致性得到改善,并且与基于卫星的估计值相混合。 (C)2019 Elsevier B.V.保留所有权利。

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