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Analysis of functional groups in atmospheric aerosols by infrared spectroscopy: method development for probabilistic modeling of organic carbon and organic matter concentrations

机译:红外光谱法分析大气气溶胶中的官能团:有机碳和有机物质浓度概率建模的方法开发

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The Fourier transform infrared (FTIR) spectra of fine particulate matter (PM2.5) contain many important absorption bands relevant for characterizing organic matter (OM) and obtaining organic matter to organic carbon (OM∕OC) ratios. However, extracting this information quantitatively – accounting for overlapping absorption bands and relating absorption to molar abundance – and furthermore relating abundances of functional groups to that of carbon atoms poses several challenges. In this work, we define a set of parameters that model these relationships and apply a probabilistic framework to identify values consistent with collocated field measurements of thermal–optical reflectance organic carbon (TOR OC). Parameter values are characterized for various sample types identified by cluster analysis of sample FTIR spectra, which are available for 17?sites in the Interagency Monitoring of Protected Visual Environments (IMPROVE) monitoring network (7?sites in 2011 and 10?additional sites in 2013). The cluster analysis appears to separate samples according to predominant influence by dust, residential wood burning, wildfire, urban sources, and biogenic aerosols. Functional groups calibrations of aliphatic CH, alcohol COH, carboxylic acid COOH, carboxylate COO, and amine NH2 combined together reproduce TOR OC concentrations with reasonable agreement (r=0.96 for 2474 samples) and provide OM∕OC values generally consistent with our current best estimate of ambient OC. The mean OM∕OC ratios corresponding to sample types determined from cluster analysis range between 1.4 and 2.0, though ratios for individual samples exhibit a larger range. Trends in OM∕OC for sites aggregated by region or year are compared with another regression approach for estimating OM∕OC ratios from a mass closure equation of the major chemical species contributing to PM fine mass. Differences in OM∕OC estimates are observed according to estimation method and are explained through the sample types determined from spectral profiles of the PM.
机译:细颗粒物质(PM2.5)的傅里叶变换红外(FTIR)光谱含有许多重要的吸收带,其用于表征有机物质(OM)并将有机物质获得有机物(OM / OC)比率。然而,从定量地提取该信息 - 占重叠的吸收带和对摩尔丰度的吸收 - 并且还将官能团的丰富与碳原子的丰度相关起作用的若干挑战。在这项工作中,我们定义了一组参数,该参数模拟这些关系并应用概率框架,以识别与热光反射有机碳(TOR OC)的并置场测量一致的值。参数值的特征在于通过样本FTIR光谱的集群分析所识别的各种样本类型,其可用于17个受保护的视觉环境(改进)监测网络的际际监控的站点(7?2011年的网站和10个?2013年的其他网站)。群集分析似乎根据灰尘,住宅木材燃烧,野火,城市来源和生物原料气溶胶的主要影响分离样品。偶氮CH,醇COH,羧酸COOH,羧酸糖和胺NH2的官能团校准在一起,合理协议(r = 0.96持续2474个样品)和常规递增肌肉OC浓度,并提供通常与我们目前最佳估计一致的OM / OC值环境oc。对应于从聚类分析范围确定的样本类型的平均OM / OC比率在1.4和2.0之间,但对于各个样本的比率表现出更大的范围。通过地区或年度聚合的网站的OM / OC的趋势与其他回归方法进行比较,用于估计来自主要化学物质的大规模闭合方程的OM / OC比率有助于PM细物质。根据估计方法观察OM / OC估计的差异,并通过从PM的光谱分布确定的样本类型来解释。

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