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Characterization and Matching of Oil Samples Using Fluorescence Spectroscopy and Parallel Factor Analysis

机译:使用荧光光谱和平行因子分析对油样进行表征和匹配

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A novel approach for matching oil samples by fluorescence spectroscopy combined with three-way decomposition of spectra is presented. It offers an objective finger-printing based on the relative composition of polycyclic aromatic compounds (PACs) in oils. The method is complementary to GC-FID for initial screening of oil samples but can also be used for prescreening in the field, onboard ships, using a portable fluorescence spectrometer. Parallel factor analysis (PARAFAC) was applied to fluorescence excitation-emission matrixes (EEMs) of heavy fuel oils (HFOs), light fuel oils, lubricating oils, crude oils, unknown oils, and a sample collected in the spill area two weeks after the Baltic Carrier oil spill (Denmark, 2001). A total of 112 EEMs were decomposed into a five-factor PARAFAC model using excitation wavelengths from 245 to 400 nm and emission wavelengths from 280 to 550 nm. The PARAFAC factors were compared to EEMs of PAC standards with two to five rings, and the comparisons indicate that each of the factors can be related to a mixture of PACs with similar fluorescence characteristics: a mixture of naphthalenes and dibenzothiophenes, fluorenes, phenanthrenes, chrysenes, and five-ring PACs, respectively. Oils were grouped in score plots according to oil type. Except for HFOs and crude oils, the method easily discriminated between the four oil types. Minor overlaps of HFOs and crude oils were observed along all five PARAFAC factors, and the variability of crude oils was large along factor 2 due to a varying content of five-ring PACs. The spill sample was correctly assigned as a HFO with similar PAC pattern as oil from the cargo tank of the Baltic Carrier by comparing the correlation coefficient of scores for the oil spill sample and possible source oils (i.e., oils in the database).
机译:提出了一种通过荧光光谱与光谱的三向分解相结合来匹配油样的新方法。它基于油中多环芳族化合物(PAC)的相对组成,可以提供客观的指纹识别。该方法是对GC-FID的补充,可用于初次筛选油样,但也可用于使用便携式荧光光谱仪在现场,船上进行预筛选。平行因子分析(PARAFAC)用于重质燃油(HFO),轻质燃油,润滑油,原油,原油,未知油以及样品在泄漏后两周收集的样品的荧光激发-发射矩阵(EEM)。波罗的海运输船的石油泄漏(丹麦,2001年)。使用245至400 nm的激发波长和280至550 nm的发射波长,将总共112个EEM分解为五因子PARAFAC模型。将PARAFAC因子与带有2至5个环的PAC标准的EEMs进行了比较,比较表明,每个因子都可能与具有相似荧光特性的PAC混合物有关:萘和二苯并噻吩,芴,菲,chrysenes的混合物,和五环PAC。根据机油类型将机油分为分数图。除了HFO和原油外,该方法很容易区分这四种油。在所有五个PARAFAC因子上均观察到HFO和原油的微小重叠,并且由于五环PAC含量的变化,原油在2因子上的变异性很大。通过比较漏油样和可能的来源油(即数据库中的油)的分数相关系数,将漏油样正确地分配为HFO,具有与来自波罗的海运输船货舱的油相似的PAC模式。

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