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Application of unsupervised chemometric analysis and self-organising feature map (SOFM) for the classification of lighter fuels

机译:无监督化学计量分析和自组织特征图(SOFM)在较轻燃料分类中的应用

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摘要

A variety of lighter fuel samples from different manufacturers (both unevaporated and evaporated) were analysed using conventional gas chromatography-mass spectrometry (GC-MS) analysis. In total 51 characteristic peaks were selected as variables and subjected to data pre-processing prior to subsequent analysis using unsupervised chemometric analysis (PCA and HCA) and a SOFM artificial neural network. The results obtained revealed that SOFM acted as a powerful means of evaluating and linking degraded ignitable liquid sample data to their parent unevaporated liquids.
机译:使用常规气相色谱-质谱(GC-MS)分析来分析来自不同制造商的各种较轻的燃料样品(未蒸发的和蒸发的)。总共选择了51个特征峰作为变量,并进行了数据预处理,然后使用无监督化学计量分析(PCA和HCA)和SOFM人工神经网络进行后续分析。获得的结果表明,SOFM是评估降解的可燃液体样品数据并将其链接到其母体未蒸发液体的有力手段。

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