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Classification of highly similar crude oils using data sets from comprehensive two-dimensional gas chromatography and multivariate techniques

机译:使用来自全面二维气相色谱和多元技术的数据集对高度相似的原油进行分类

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Comprehensive two-dimensional gas chromatography (GC x GC) has proven to be an extremely powerful separation technique for the analysis of complex volatile mixtures. This separation power can be used to discriminate between highly similar samples. In this article we will describe the use of GC x GC for the discrimination of crude oils from different reservoirs within one oil field. These highly complex chromatograms contain about 6000 individual, quantified components. Unfortunately, small differences in most of these 6000 components characterize the difference between these reservoirs. For this reason, multivariate-analysis (MVA) techniques are required for finding chemical profiles describing the differences between the reservoirs. Unfortunately, such methods cannot discern between 'informative variables', or peaks describing differences between samples, and 'uninformative variables', or peaks not describing relevant differences. For this reason, variable selection techniques are required. A selection based on information between duplicate measurements was used. With this information, 292 peaks were used for building a discrimination model. Validation was performed using the ratio of the sum of distances between groups and the sum of distances within groups. This step resulted in the detection of an outlier, which could be traced to a production problem, which could be explained retrospectively. (c) 2005 Elsevier B.V. All rights reserved.
机译:全面的二维气相色谱(GC x GC)已被证明是一种用于分析复杂挥发性混合物的极其强大的分离技术。此分离能力可用于区分高度相似的样本。在本文中,我们将描述使用GC x GC区分一个油田内不同储层的原油的方法。这些高度复杂的色谱图包含约6000个单独的定量组分。不幸的是,在这6000个组分中的大多数中,小的差异是这些储层之间差异的特征。因此,需要多变量分析(MVA)技术来查找描述油藏之间差异的化学剖面。不幸的是,这些方法无法区分“信息变量”或描述样本之间差异的峰与“非信息变量”或未描述相关差异的峰。因此,需要变量选择技术。使用基于重复测量之间的信息的选择。根据这些信息,使用292个峰来建立判别模型。使用组之间距离之和与组内距离之和之比进行验证。此步骤导致检测到异常值,该异常值可以追溯到生产问题,可以追溯解释。 (c)2005 Elsevier B.V.保留所有权利。

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