多环芳烃分布特征的多元统计分析

D. Marino, E. Castro, L. Massolo, A. Mueller, O. Herbarth, A. Ronco
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引用次数: 6

摘要

在本研究中,采用基于多变量分析的统计方法,如描述性判别分析(DDA)和主成分分析(PCA)来确定颗粒大小与相关半挥发性化合物组成之间的关系,并评估这些观测结果与排放源、研究区域、采样活动和季节的关系。DDA结果表明,多环芳烃分布在数据集中具有最好的识别能力,而中间颗粒组分的多环芳烃分布在统计分析中包含噪声。主成分分析有助于确定各研究区的主要排放源。它表明,在拉普拉塔市,最重要的污染源是交通排放和与石油和石化工厂有关的工业活动。在莱比锡,主要的污染源是与交通和发电厂有关的。将PCA和DDA相结合的方法应用于多环芳烃分布是表征排放负担类型和根据研究区域和采样时间获得样本身份分化的有价值的工具。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Characterization of Polycyclic Aromatic Hydrocarbon Profiles by Multivariate Statistical Analysis
In the present study, statistical methods based on multivariate analyses such as the Descriptive Discriminant Analysis (DDA) and Principal Component Analysis (PCA) were applied to determine relationships between particle sizes and the composition of the associated semi-volatile compounds, in addition to evaluating these observations in relation to the emission sources, study areas, sampling campaigns and season. Results from the DDA showed that the PAHs distributions give the best discrimination capacity within the data set, whereas the PAH distribution in intermediate particle fractions incorporates noise in the statistical analysis. The PCA was useful in identifying the main emission sources in each study area. It showed that in the city of La Plata the most important pollution sources are traffic emissions and the industrial activity associated with oil and petrochemical plants. In Leipzig, the main sources are those associated with traffic and also a power plant. The combined PCA and DDA methods applied to PAH distributions is a valuable tool in characterizing types of emissions burdens and also in obtaining a differentiation of sample identity according to study areas and sampling times.
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