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Principal Component Analysis as an Outlier Detection Tool for Polycyclic Aromatic Hydrocarbon Concentrations in Ambient Air

机译:主成分分析作为环境空气中多环芳烃浓度的异常值检测工具

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摘要

Principal component analysis has been used as a tool for the detection of potentially outlying observations in multivariate data sets of polycyclic aromatic hydrocarbon concentrations (PAHs) in ambient air. The outlier statistic developed is the vector distance of each observation at a given site from the origin of principal component space. It is shown that the success of this technique relies on the usually very strong correlation of concentrations of different PAHs in ambient air, such that any deviation from this correlation is noteworthy. Indeed, it is so strong that the first principal component has been omitted from the technique since it is related mostly to absolute concentration. The method has been successful in detecting observations with unusually high concentrations of one or more PAHs. Moreover, it has been possible to identify periods where the UK pollution climate was abnormal during periods of extreme weather. Advice and guidance for the practical use of the technique is also given.
机译:主成分分析已被用作检测环境空气中多环芳烃浓度(PAHs)多元数据集中潜在异常观测值的工具。建立的离群值统计量是给定位置处每个观测值与主成分空间起点之间的向量距离。结果表明,该技术的成功依赖于环境空气中不同PAHs浓度的通常非常强的相关性,因此与该相关性的任何偏离都值得注意。实际上,它是如此强大,以致于该技术中省略了第一主要成分,因为它主要与绝对浓度有关。该方法已成功地检测出浓度异常高的一种或多种PAHs。而且,有可能确定极端天气期间英国污染气候异常的时期。还提供了有关该技术的实际使用的建议和指导。

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