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Application of parallel factor analysis model to decompose excitation-emission matrix fluorescence spectra for characterizing sources of water-soluble brown carbon in PM_(2.5)

机译:应用并行因子分析模型分解激发发射矩阵荧光光谱表征PM_(2.5)中水溶性棕碳的来源

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摘要

The applicability of parallel factor analysis (PARAFAC) model for identifying potential sources of water-soluble brown carbon (BrC) in fine particulate matter (PM2.5) using seasonal and annual excitation-emission matrix (EEM) fluorescence spectra data was investigated. The uncertainties related to the application of PARAFAC model to water-soluble BrC analysis were evaluated and the physicochemical meanings of PARAFAC-derived components were clearly interpreted. EEM spectra were obtained from water-soluble extractions of PM2.5 samples, which were collected at an urban and a suburban site in Chongqing, southwest of China during four one-month periods, each representing a different season in 2015. The measured EEM spectra were decomposed into three individual fluorescence components using PARAFAC algorithm, and the potential sources of BrC were identified based on the fingerprinting characteristics of PARAFAC-derived components. Each of the individual component exhibited similar spectral profiles in different seasons except in summer at the urban site; however, the relative intensities between the components varied with season, suggesting seasonal dependent source intensity of BrC. The relative contributions of the individual fluorescence components to the total fluorescence intensity varied largely from 0 to 89.2% at different excitation and emission wavelengths. Therefore, the relative abundance of each individual component based on the maximum fluorescence intensity (F-max) should be used carefully for source apportionment analysis of BrC.
机译:研究了使用季节和年度激发发射矩阵(EEM)荧光光谱数据的并行因子分析(PARAFAC)模型在识别细颗粒物(PM2.5)中水溶性棕碳(BrC)的潜在来源时的适用性。评估了将PARAFAC模型应用于水溶性BrC分析的不确定性,并清楚地解释了PARAFAC衍生成分的理化意义。 EEM光谱是从PM2.5样品的水溶性提取物中获得的,这些样品在四个月的一个月期间(分别代表2015年的不同季节)在中国西南重庆的城市和郊区采集。使用PARAFAC算法将其分解为三个单独的荧光成分,并根据PARAFAC衍生成分的指纹特征识别出BrC的潜在来源。除了夏季的夏季,每个季节的各个部分在不同的季节都有相似的光谱分布。然而,各组分之间的相对强度随季节而变化,表明BrC的季节依赖性源强度。在不同的激发和发射波长下,单个荧光成分对总荧光强度的相对贡献在0到89.2%之间变化很大。因此,应谨慎使用基于最大荧光强度(F-max)的各个单独组分的相对丰度,以进行BrC的源分配分析。

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