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Using GC × GC-FID profiles to estimate the age of weathered gasoline samples

机译:使用GC×GC-FID配置文件估算风化汽油样品的寿命

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Predicting the amount of time that a petroleum mixture has been exposed to weathering effects has applications in areas of environmental and other forensic investigations, such as aiding in determining the cause and intent of a fire. Historically, research on the evaporation rates of hydrocarbon mixtures has focused on forensic oil spill identification and predicting if a fresh sample could be weathered to give an observed composition in an aged sample. Relatively little attention has focused on approaching the problem from the other direction: estimating exposure time based on the observed composition of a weathered sample at a given time and assuming a prior composition. Here, we build upon our previous research into the weathering of model mixtures by extending our work to gasoline. Samples of gasoline with varying octane ratings and from several vendors were weathered under controlled conditions and their composition monitored over time by two-dimensional gas chromatography (GC × GC). A variety of chemometric models were explored, including partial least squares (PLS), nonlinear PLS (PolyPLS) and locally weighted regression (LWR). A hierarchical application of multivariate techniques was able to predict the time for which a sample had been exposed to evaporative weathering. Partial least squares discriminant analysis could predict whether a sample was relatively fresh (20 h exposure time). Subsequent regression models for these classes were evaluated for accuracy using the root mean square error of prediction. LWR was the most successful, whereby fresh and highly weathered samples were predicted to within 30 min and 5 h of exposure, respectively.
机译:预测石油混合物暴露在风化作用下的时间量可用于环境和其他法证研究领域,例如帮助确定起火的原因和意图。从历史上看,对碳氢化合物混合物蒸发速率的研究一直集中在法医溢油的识别和预测新鲜样品是否可以风化以提供老化样品中观察到的成分上。相对较少的注意力集中在从另一个方向解决问题:基于在给定时间观察到的风化样品的组成并假设使用先前的组成来估计暴露时间。在此,我们将模型工作扩展到汽油,以此建立在先前对模型混合物耐候性的研究基础上。在受控条件下对来自几个供应商的辛烷值额定值不同的汽油样品进行了风化处理,并通过二维气相色谱仪(GC×GC)随时间监测其成分。探索了多种化学计量学模型,包括偏最小二乘(PLS),非线性PLS(PolyPLS)和局部加权回归(LWR)。多元技术的分层应用能够预测样品暴露于蒸发风化的时间。偏最小二乘判别分析可以预测样品是否相对较新(暴露时间20小时)。使用预测的均方根误差评估了这些类别的后续回归模型的准确性。 LWR最成功,据预测新鲜和高风化样品分别在暴露30分钟和5小时内。

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