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Quality based classification of gasoline samples by ATR-FTIR spectrometry using spectral feature selection with quadratic discriminant analysis

机译:使用光谱特征选择和二次判别分析的ATR-FTIR光谱法对汽油样品进行基于质量的分类

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摘要

A chemometric approach has been developed for characterization of gasoline samples regarding their quality. Attenuated total reflectance - infrared spectrometric data were processed by genetic algorithm (GA) and successive projection algorithm (SPA) feature selection techniques, being employed as an initial step prior to apply a discriminative tool. It was aimed to classify the fuel samples according to their quality passed/failed data. Chemometric predictive procedures were developed using quadratic discriminant analysis (QDA) combined with GA and SPA as a feature subset and feature selection strategy. Results showed 93.3% and 95.6% accuracy for SPA-QDA and GA-QDA models respectively.
机译:已经开发出一种化学计量学方法来表征汽油样品的质量。衰减的全反射率-红外光谱数据通过遗传算法(GA)和连续投影算法(SPA)特征选择技术进行处理,在应用判别工具之前被用作第一步。目的是根据燃料样品的合格/不合格数据对其进行分类。化学计量学预测程序是使用二次判别分析(QDA)结合GA和SPA作为特征子集和特征选择策略开发的。结果表明,SPA-QDA和GA-QDA模型的准确度分别为93.3%和95.6%。

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