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Identification of sources of diesel oil spills using parallel factor analysis: A bridge between American society for testing and materials and Nordtest methods

机译:使用并行因子分析识别柴油泄漏源:美国测试和材料学会与Nordtest方法之间的桥梁

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摘要

American Standards for Testing and Materials method (ASTM5739-00) and Nordtest methodology, as the two major approaches for identifying the source of spilled oils using gas chromatography-mass spectrometry (GC-MS) data, are critically compared and a new method based on multi-way parallel factor analysis (PARAFAC2) is proposed. The new approach exploits both ASTM and Nordtest methodologies by using the entire extracted ion chromatogram (EIC) and taking into account the concentration diversities of different compound classes, respectively. A multi-way data preprocessing is proposed to preserve the diagnostic properties of the original GC-MS data, which are destroyed in the ASTM method by normalizing the EICs individually. Petroleum oils, in particular diesel oils, that are difficult to classify using current methods are shown to be excellent candidates for PARAFAC2 in which EIC matrices of different sizes can be analyzed simultaneously. A diesel oil sample from an oil spill and seven very similar suspect diesel source oils, which had undergone controlled weathering for 2-15 days, were compared by this method. 79% of pairwise group comparisons were separated, in contrast to the method in which EICs were each normalized to 100, which gave 32% separation of the comparisons. (c) 2008 Elsevier B.V. All rights reserved.
机译:严格比较了美国测试和材料标准方法(ASTM5739-00)和诺德测试方法,这两种方法是使用气相色谱-质谱(GC-MS)数据识别溢油来源的两种主要方法,并且基于提出了多向并行因素分析(PARAFAC2)。通过使用整个提取的离子色谱图(EIC)并分别考虑不同化合物类别的浓度多样性,新方法利用了ASTM和Nordtest方法。提出了一种多路数据预处理方法,以保留原始GC-MS数据的诊断属性,该属性在ASTM方法中通过分别对EIC进行标准化来销毁。使用现有方法难以分类的石油,尤其是柴油,被证明是PARAFAC2的优秀候选者,在PARAFAC2中,可以同时分析不同大小的EIC矩阵。用这种方法比较了溢油中的柴油样品和7种非常相似的可疑柴油源油,这些油经过了2-15天的受控风化。与将EIC分别归一化为100的方法(每对比较的32%的方法)相比,成对的组比较被分离了79%。 (c)2008 Elsevier B.V.保留所有权利。

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