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Advances in chemometric control of commercial diesel adulteration by kerosene using IR spectroscopy

机译:煤油使用IR光谱法控制商业柴油掺杂的化学计量控制研究进展

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摘要

Adulteration is a recurrent issue found in fuel screening. Commercial diesel contamination by kerosene is highly difficult to be detected via physicochemical methods applied in market. Although the contamination may affect diesel quality and storage stability, there is a lack of efficient methodologies for this evaluation. This paper assessed the use of IR spectroscopies (MIR and NIR) coupled with partial least squares (PLS) regression, support vector machine regression (SVR), and multivariate curve resolution with alternating least squares (MCR-ALS) calibration models for quantifying and identifying the presence of kerosene adulterant in commercial diesel. Moreover, principal component analysis (PCA), successive projections algorithm (SPA), and genetic algorithm (GA) tools coupled to linear discriminant analysis were used to observe the degradation behavior of 60 samples of pure and kerosene-added diesel fuel in different concentrations over 60 days of storage. Physicochemical properties of commercial diesel with 15% kerosene remained within conformity with Brazilian screening specifications; in addition, specified tests were not able to identify changes in the blends' performance over time. By using multivariate classification, the samples of pure and contaminated fuel were accurately classified by aging level into two well-defined groups, and some spectral features related to fuel degradation products were detected. PLS and SVR were accurate to quantify kerosene in the 2.5-40% (nu/nu) range, reaching RMSEC < 2.59% and RMSEP < 5.56%, with high correlation between real and predicted concentrations. MCR-ALS with correlation constraint was able to identify and recover the spectral profile of commercial diesel and kerosene adulterant from the IR spectra of contaminated blends.
机译:掺假是在燃料筛选中发现的反复出现问题。通过在市场上应用的物理化学方法难以检测通过Kerosene的商业柴油污染。虽然污染可能会影响柴油质量和储存稳定性,但缺乏这种评价的有效方法。本文评估了使用IR光谱(MIR和NIR)与局部最小二乘(PLS)回归,支持向量机回归(SVR),以及具有交替的最小二乘(MCR-ALS)校准模型的多变量曲线分辨率,用于量化和识别商业柴油中煤油掺杂剂的存在。此外,耦合到线性判别分析的主成分分析(PCA),连续投影算法(SPA)和遗传算法(GA)工具用于观察不同浓度的60个样品的纯净和煤水柴油燃料60样品的降解行为60天的储存。商业柴油的物理化学特性与15%煤油的符合性仍然符合巴西筛查规范;此外,指定的测试无法识别混合性能随时间的变化。通过使用多变量分类,通过老化水平将纯净和污染的燃料的样品分为两个明确的群体,并且检测到与燃料降解产物有关的一些光谱特征。 PLS和SVR准确地在2.5-40%(NU / NU)范围内量化煤油,达到RMSEC <2.59%和RMSEP <5.56%,具有高质量和预测浓度之间的相关性。具有相关约束的MCR-ALs能够从污染的共混物的IR光谱中识别和恢复商业柴油和煤油掺杂剂的光谱分布。

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