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Combined Use of Principal Component Analysis (PCA) and Chemical Mass Balance (CMB) for Source Identification and Source Apportionment in Air Pollution Modeling Studies

机译:主成分分析(PCA)和化学物质平衡(CMB)的结合使用,用于空气污染建模研究中的源识别和源分配

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Chemical mass balance (CMB) and principal component analysis (PCA) are used together for source identification and source apportionment in this air pollution modeling study. Source profile sets, each of which contains five source profiles based on ten pollutant species, were generated using a computer program. Another algorithm was implemented to produce ten random data sets, which was composed of 100 simulated measurement results for all of ten pollutant species. Ten source profile sets were selected. Five of them contained sources of dissimilar characteristics, whereas the other five were chosen from those of similar emission profiles. Ten simulated data sets for each source profile set were used in the analyses. PCA was applied to all simulated data sets; a number of principal factors were extracted and interpreted. The identified sources for each data set were used in fitting with CMB analyses, and source contributions were estimated. The performance of PCA–CMB combination was evaluated in the aspect of percent variance explained, percent apportionment, R 2, and χ 2. PCA was able to explain 89.6% to 100% of the variance within the data sets used. Two to five sources were extracted depending on the characteristics of source profile sets used. CMB was found to be successful in the aspect of percent apportionment since 95.4% to 100% of mass concentrations were apportioned. The values of R 2 and χ 2 were found out to range from 0.981 to 1.000 and from 0.000 to 29.947, respectively. Evaluating overall results from the analyses, PCA–CMB combination produced satisfactory results in the aspect of source identification and source apportionment.
机译:在此空气污染建模研究中,化学质量平衡(CMB)和主成分分析(PCA)一起用于源识别和源分配。使用计算机程序生成了源配置文件集,每个源配置文件集都包含基于十种污染物种类的五个源配置文件。实施了另一种算法以产生十个随机数据集,该数据集由针对十个污染物种类的所有100个模拟测量结果组成。选择了十个源配置文件集。其中五个含有不同特性的来源,而其他五个则选自具有相似排放特征的来源。在分析中,每个源配置文件集使用了十个模拟数据集。 PCA已应用于所有模拟数据集;提取并解释了许多主要因素。将每个数据集的确定来源用于CMB分析,并估算来源贡献。从解释的百分比差异,百分比分配,R 2 和χ 2 方面评估PCA–CMB组合的性能。 PCA能够在所使用的数据集中解释89.6%至100%的方差。根据所使用的源概要文件集的特征,提取了两到五个源。发现CMB在百分比分配方面是成功的,因为分配了95.4%至100%的质量浓度。 R 2 和χ 2 的值分别为0.981至1.000和0.000至29.947。在评估分析的总体结果时,PCA-CMB组合在来源识别和来源分配方面产生了令人满意的结果。

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