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Determination of octane number of gasoline using near infrared spectroscopy and genetic multivariate calibration methods

机译:近红外光谱和遗传多元校正法测定汽油的辛烷值

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摘要

The feasibility of rating the octane number of gasoline using near infrared (NIR) spectroscopy and three different genetic algorithm-based multivariate calibration methods was demonstrated. The three genetic multivariate calibration methods are genetic regression (GR), genetic classical least squares (GCLS), and genetic inverse least squares (GILS). The sample data set was obtained from the ftp address (ftp://ftp.clarkson.edu/pub/hopkepk/Chemdata/) with the permission of Professor. J. H. Kalivas. This data set contains the NIR spectra of 60 gasoline samples collected using diffuse reflectance as log (I / R) with known octane numbers and covers the range from 900 to 1700 nm in 2 nm intervals. Of these 60 spectra, 20 were used as the calibration set, 20 were used as the prediction set, and 20 were reserved for the validation purposes. Several calibration models were built with the three genetic algorithm-based methods, and the results were compared with the partial least squares (PLS) prediction errors reported in the literature. Overall, the standard error of calibration (SEC), standard error of prediction (SEP), and standard error of validation (SEV) values were in the range of 0.15-0.32 (in the units of motor octane number) for the GR and GILS, which are comparable with the literature. However, GCLS produced relatively large results (0.36 for SEC, 0.39 for SEP and 0.52 for SEV) when compared with the other two methods.
机译:证明了使用近红外(NIR)光谱和三种基于遗传算法的多元校准方法对汽油辛烷值进行评级的可行性。三种遗传多变量校准方法是遗传回归(GR),遗传经典最小二乘法(GCLS)和遗传逆最小二乘(GILS)。在教授的许可下,示例数据集是从ftp地址(ftp://ftp.clarkson.edu/pub/hopkepk/Chemdata/)获得的。 J.H.卡利瓦斯该数据集包含使用已知辛烷值的漫反射比作为对数(I / R)收集的60个汽油样品的NIR光谱,覆盖范围为900 nm至1700 nm,间隔为2 nm。在这60个光谱中,将20个用作校准集,将20个用作预测集,并保留20个用于验证目的。使用三种基于遗传算法的方法建立了多个校准模型,并将结果与​​文献中报道的偏最小二乘(PLS)预测误差进行了比较。总体而言,对于GR和GILS,校准的标准误差(SEC),预测的标准误差(SEP)和验证的标准误差(SEV)值在0.15-0.32(以电机辛烷值为单位)的范围内,与文献可比。但是,与其他两种方法相比,GCLS产生了相对较大的结果(SEC为0.36,SEP为0.39,SEV为0.52)。

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    Özdemir Durmuş;

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  • 年度 2005
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  • 原文格式 PDF
  • 正文语种 eng
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