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A review of the main strategies used in the interpretation of similar chemical profiles yielded by receptor models in the source apportionment of particulate matter

机译:对颗粒物源分数的受体模型产生的相似化学谱的解释中使用的主要策略的综述

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摘要

Receptor models have been widely used for the source apportionment of airborne particulate matter. However, in the last 10 years, the use of factor analysis-based models, such as PMF and UNMIX, has increased significantly. The results yielded by these models must be interpreted by users who must know all variables influencing the modeling, and without this knowledge, the probability of incorrect interpretation of the source profiles may increase, especially when two or more sources have similar chemical profiles. Concerning the quality of data, this work shows that a broad characterization of PM composition, including inorganic, organic, and mineralogical species can improve this process, avoiding misinterpretation and the attribution of mixed or unidentified sources. This work aims to provide readers with some answers for a question often risen during source apportionment studies: Which source markers should be used for better separation and interpretation of source profiles? This review shows there is no right answer for this because different strategies can be used for this purpose. Therefore, this review aims to compile and highlight qualitatively the key strategies already used by several experienced receptor models users, combining the use of inorganic, organic, and mineralogical markers of PM for better separation and interpretation of the profiles yielded by receptor models. Also, this work presents a compilation in tables of the main chemical species reported in the literature as markers for interpreting the source profiles. (C) 2020 Elsevier Ltd. All rights reserved.
机译:受体模型已被广泛用于空气传播颗粒物的源分配。但是,在过去的10年中,使用因子分析的模型(如PMF和所述所述)的模型显着增加。这些模型产生的结果必须由必须了解影响建模的所有变量的用户解释,而且没有这种知识,源配置文件的错误解释的概率可能增加,特别是当两个或更多个源具有类似的化学配置。关于数据质量,这项工作表明,PM组成的广泛表征,包括无机,有机和矿物质,可以改善该过程,避免误解和混合或身份不明来源的归因。这项工作旨在为读者提供一些答案在源分摊研究期间经常上升的问题:哪些源标记应该用于更好的分离和解释来源概况?此审查显示,此目的无法使用不同的策略。因此,本综述旨在编制和突出几种经验丰富的受体模型用户已经使用的关键策略,与PM的无机,有机和矿物学标记相结合,以便更好地分离和解释受体模型所产生的谱。此外,这项工作提出了在文献中报告的主要化学物质表中的汇编,作为解释源配置文件的标记。 (c)2020 elestvier有限公司保留所有权利。

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