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首页> 外文期刊>Analytical chemistry >Classification and Source Determination of Medium Petroleum Distillates by Chemometric and Artificial Neural Networks: A Self Organizing Feature Approach
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Classification and Source Determination of Medium Petroleum Distillates by Chemometric and Artificial Neural Networks: A Self Organizing Feature Approach

机译:化学计量学和人工神经网络对中石油馏分的分类和来源确定:一种自组织特征方法

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Three different medium petroleum distillate (MPD) products (white spirit, paint brush cleaner, and lamp oil) were purchased from commercial stores in Glasgow, Scotland. Samples of 10, 25, 50, 75, 90, and 95percent evaporated product were prepared, resulting in 56 samples in total which were analyzed using gas chromatography-mass spectrometry. Data sets from the chromatographic patterns were examined and preprocessed for unsupervised multivariate analyses using principal component analysis (PCA), hierarchical duster analysis (HCA), and a self organizing feature map (SOFM) artificial neural network. It was revealed that data sets comprised of higher boiling point hydrocarbon compounds provided a good means for the classification of the samples and successfully linked highly weathered samples back to their unevaporated counterpart in every case. The classification abilities of SOFM were further tested and validated for their predictive abilities where one set of weather data in each case was withdrawn from the sample set and used as a test set of the retrained network. This revealed SOFM to be an outstanding mechanism for sample discrimination and linkage over the more conventional PCA and HCA methods often suggested for such data analysis. SOFM also has the advantage of providing additional information through the evaluation of component planes facilitating the investigation of underlying variables that account for the classification.
机译:从苏格兰格拉斯哥的商业商店购买了三种不同的中石油馏分(MPD)产品(石油精,油漆刷清洁剂和灯油)。制备了10%,25%,50%,75%,90%和95%蒸发产物的样品,总共有56个样品,使用气相色谱-质谱法进行了分析。使用主成分分析(PCA),分级除尘器分析(HCA)和自组织特征图(SOFM)人工神经网络对色谱图谱中的数据集进行检查和预处理,以进行无监督的多元分析。结果表明,由较高沸点烃类化合物组成的数据集为样品分类提供了一种很好的方法,并且在每种情况下都成功地将高风化的样品与其未蒸发的对应物联系起来。对SOFM的分类能力进行了进一步测试,并针对其预测能力进行了验证,在每种情况下,都从样本集中提取了一组天气数据,并将其用作重新训练网络的测试集。这表明SOFM是一种优于通常用于此类数据分析的更传统的PCA和HCA方法,用于样品识别和链接的出色机制。 SOFM还具有通过评估组件平面提供其他信息的优势,从而有助于调查解释该分类的基础变量。

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