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Application of mobile sampling to investigate spatial variation in fine particle composition

机译:应用流动采样研究细颗粒成分的空间变化

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Long-term exposure to particulate matter (PM) is a major contributor to air pollution related deaths. Evidence indicates that metals play an important role in harming human health due to their redox potential. We conducted a mobile sampling campaign in 2013 summer and winter in Pittsburgh, PA to characterize spatial variation in PM2.5 mass and composition. Thirty-six sites were chosen based on three stratification variables: traffic density, proximity to point sources, and elevation. We collected filters in three time sessions (morning, afternoon, and overnight) in each season. X-ray fluorescence (XRF) was used to analyze concentrations of 26 elements: Na, Mg, Al, Si, S, Cl, K, Ca, Ti, V, Cr, Mn, Fe, Co, Ni, Cu, Zn, As, Se, Br, Rb, Sr, Zr, Cd, Sb, and Pb. Trace elements had a broad range of concentrations from 0 to 300 ng/m(3). Comparison of data from mobile sampling filters with stationary monitors suggested that the mobile sampling strategy did not lead to a biased dataset. We developed Land Use Regression (LUR) models to describe spatial variation of PM2.5, Si, S, Cl, K, Ca, Ti, Cr, Fe, Cu, and Zn. Using ArcGIS-10.3 (ESRI, Redlands, CA), we extracted different independent variables related to traffic influence, land-use type, and facility emissions based on the National Emission Inventory (NEI). To validate LUR models, we used regression diagnostics such as leave-one-out cross validation (LOOCV), mean studentized prediction residual (MSPR), and root mean square of studentized residuals (RMS). The number of predictors in final LUR models ranged from 1 to 6. Models had an average R-2 of 0.57 (SD = 0.16). Traffic related variables explained the most variability with an average R-2 contribution of 0.20 (SD = 0.20). Overall, these results demonstrated significant intra-urban spatial variability of fine particle composition. Published by Elsevier Ltd.
机译:长期暴露于颗粒物(PM)是造成空气污染相关死亡的主要原因。有证据表明,金属由于具有氧化还原作用,因此在危害人类健康方面起着重要作用。我们于2013年夏季和冬季在宾夕法尼亚州匹兹堡进行了一次移动采样活动,以表征PM2.5的质量和成分的空间变化。根据三个分层变量选择了36个站点:交通密度,与点源的距离和海拔。我们在每个季节的三个时间段(早上,下午和晚上)收集了过滤器。 X射线荧光(XRF)用于分析26种元素的浓度:Na,Mg,Al,Si,S,Cl,K,Ca,Ti,V,Cr,Mn,Fe,Co,Ni,Cu,Zn, As,Se,Br,Rb,Sr,Zr,Cd,Sb和Pb。微量元素的浓度范围从0到300 ng / m(3)。将移动采样过滤器的数据与固定监测器进行的比较表明,移动采样策略不会导致数据集有偏差。我们开发了土地利用回归(LUR)模型来描述PM2.5,Si,S,Cl,K,Ca,Ti,Cr,Fe,Cu和Zn的空间变化。使用ArcGIS-10.3(ESRI,Redlands,CA),我们根据国家排放清单(NEI)提取了与交通影响,土地使用类型和设施排放有关的不同自变量。为了验证LUR模型,我们使用了回归诊断方法,例如留一法交叉验证(LOOCV),学生平均预测残差(MSPR)和学生残差的均方根(RMS)。最终LUR模型中预测变量的数量为1到6。模型的平均R-2为0.57(SD = 0.16)。与交通相关的变量说明了最大的可变性,R-2的平均贡献为0.20(SD = 0.20)。总体而言,这些结果表明城市内部细颗粒组成的空间变异性很大。由Elsevier Ltd.发布

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