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Crude Oil Source Identification of Asphalt via ATR-FTIR Approach Combined with Multivariate Statistical Analysis

机译:ATR-FTIR方法的沥青原油源鉴定结合多元统计分析

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The types of crude oil for producing asphalt have a decisive influence on various performance measures (including aging resistance and durability) of asphalt. To discriminate and predict the crude oil source of different asphalt samples, a discrimination model was established using 12 greatly different infrared (IR) characteristic absorption peaks (CAPs) as predictive variables. The model was established based on diverse fingerprint recognition technologies (such as principal component analysis (PCA) and multivariate logistic regression analysis) by using attenuated total reflectance-Fourier transform infrared spectroscopy (ATR-FTIR). In this way, the crude oil source of different asphalt samples can be effectively discriminated. At first, by using PCA, the 12 CAPs in the IR spectra of asphalt samples were subjected to dimension reduction processing to control the variables of key factors. Moreover, the scores of various principal components in asphalt samples were calculated. Afterwards, the scores of principal components were analysed through modelling based on multivariate logistic regression analysis to discriminate and predict the crude oil source of different asphalt samples. The result showed that the logistic regression model shows a favourable goodness of fit, with the prediction accuracy reaching 93.9% for the crude oil source of asphalt samples. The method exhibits some outstanding advantages (including ease of operation and high accuracy), which is important when controlling the source and quality and improving the performance of asphalt.
机译:生产沥青的原油类型对沥青的各种性能措施(包括老化耐药性和耐久性)具有决定性的影响。为了区分和预测不同沥青样品的原油来源,使用12种大不同的红外(IR)特征吸收峰(盖子)作为预测变量来建立辨别模型。该模型是基于不同的指纹识别技术(如主要成分分析(PCA)和多变量逻辑回归分析)建立,通过使用衰减的总反射率 - 傅立叶变换红外光谱(ATR-FTIR)。以这种方式,可以有效地区分不同沥青样品的原油源。首先,通过使用PCA,对沥青样品的IR光谱中的12个盖子进行尺寸还原处理,以控制关键因素的变量。此外,计算了沥青样品中各种主要成分的分数。然后,通过基于多变量逻辑回归分析来分析主要成分的分数,以区分和预测不同沥青样品的原油来源。结果表明,逻辑回归模型表现出良好的合适的良好,预测精度达到沥青样品原油源的93.9%。该方法表现出一些出色的优势(包括易于操作和高精度),这在控制源和质量和提高沥青的性能时非常重要。

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