利用偏最小二乘法-判别分析回归建立煤油加工质量检测的高效简化模型

H. Issa, Rezan H. Hama Salih
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引用次数: 0

摘要

在伊拉克等许多国家,来自不同炼油厂和原油的煤油被用于取暖和其他用途;因此,确定煤油来源以识别和征税任何掺假行为非常重要。在这项研究中,针对伊拉克市场上销售的煤油开发了一种快速分类技术,目的是识别煤油的质量。采用有监督的偏最小二乘判别分析 (PLS-DA) 方法对样品进行分类。使用聚类分层聚类和主成分分析法进行多变量分析,以识别异常值和样本差异。数据集被分为校准集和预测集。预测集用于评估模型的分离性能。采用 Q2 交叉验证。PLS-DA 模型获得了显著的准确性、灵敏度和特异性,显示出很强的分离能力,尤其是校准集(准确性为 100%,灵敏度为 1.00)。研究发现,煤油加工过程可以快速、无损地进行分类,无需进行复杂的分析,即使与其他燃料的分类结果相比,煤油加工过程的分类结果也是最好的。这种 PLS-DA 方法以前从未用于工艺质量检测,其结果可与使用类类比软独立建模和支持向量机的直接煤油分类相媲美。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Efficient and Simplified Modeling for Kerosene Processing Quality Detection Using Partial Least Squares-Discriminant Analysis Regression
Kerosene from various refineries and crudes is used for heating and other purposes in many countries like Iraq; therefore, it is important to identify its source to recognize and tax any adulteration. In this study, a fast classification technique for kerosene marketed in Iraq was developed with the goal of identifying its quality. The samples were categorized using a supervised partial least squares discriminant analysis (PLS-DA) approach. Multivariate analyses using agglomerative hierarchal clustering and principal component analysis were utilized to identify outliers and sample dissimilarities. The dataset was divided into calibration and prediction sets. The prediction set was used to evaluate the model’s separation performance. The Q2 cross-validation was applied. The PLS-DA models achieved significant accuracy, sensitivity, and specificity, showing strong segregation ability, notably for the calibration set (100% accuracy and 1.00 sensitivity). It was found that kerosene processing can be classified rapidly and non-destructively without the need for complicated analyses, demonstrating the best results for classification even when compared with the classification outcomes of other fuels. This PLS-DA approach has never been looked at before for process quality detection, and the results are comparable to direct kerosene classification with soft independent modeling of class analogy and support vector machines.
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