Fernández-Varela R, Andrade J M, Muniategui S, Prada D, Ramírez-Villalobos F
Department of Analytical Chemistry, University of A Coruña, A Coruña, Spain.
Mar Pollut Bull. 2008 Feb;56(2):335-47. doi: 10.1016/j.marpolbul.2007.10.025. Epub 2007 Dec 4.
A set of 34 worldwide crude oils, 12 distilled products (kerosene, gas oils, and fuel oils) and 45 oil samples taken from several Galician beaches (NW Spain) after the wreckage of the Prestige tanker off the Galician coast was studied. Gas chromatography with flame ionization detection was combined with chemometric multivariate pattern recognition methods (principal components analysis, cluster analysis and Kohonen neural networks) to differentiate and characterize the Prestige fuel oil. All multivariate studies differentiated between several groups of crude oils, fuel oils, distilled products, and samples belonging to the Prestige's wreck and samples from other illegal discharges. In addition, a reduced set of 13 n-alkanes out of 36, were statistically selected by Procrustes Rotation to cope with the main patterns in the datasets. These variables retained the most important characteristics of the data set and lead to a fast and cheap analytical screening methodology.
对一组34种全球原油、12种蒸馏产品(煤油、瓦斯油和燃料油)以及45个从加利西亚海滩(西班牙西北部)采集的油样进行了研究,这些油样是在威望号油轮在加利西亚海岸附近失事之后采集的。采用带有火焰离子化检测的气相色谱法,并结合化学计量多变量模式识别方法(主成分分析、聚类分析和科霍宁神经网络)来区分和表征威望号燃油。所有多变量研究都区分了几组原油、燃料油、蒸馏产品,以及属于威望号残骸的样本和来自其他非法排放的样本。此外,通过普罗克汝斯旋转从36种正构烷烃中统计选出了一组精简至13种的正构烷烃,以应对数据集中的主要模式。这些变量保留了数据集的最重要特征,并带来了一种快速且经济的分析筛选方法。