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Variable selection and modeling from NIR spectra data: A case study of diesel quality prediction using LASSO and Regression Tree

机译:从NIR光谱数据中进行变量选择和建模:使用LASSO和回归树预测柴油质量的案例研究

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The objective of this research is to design a model for predicting diesel fuel parameters from the data obtained from near infrared spectroscopic analysis of the fuel. Due to the complexity and the sheer number of peaks obtained in the spectral data, only those wavelengths that have a significant impact on the parameters are filtered out. Four types of variable selection techniques (LASSO, correlation coefficient, Mallow's Cp criterion, Relative sensitivity ratio) were applied on the NIR spectra data. Following variable selection, two models based on ridge regression and regression tree were developed. The models were used to successfully predict six diesel fuel parameters: cetane number, boiling point, freezing point, total aromatic content, viscosity and density from NIR spectra data. Variable selection by LASSO followed by regression tree modelling produced the best prediction accuracy
机译:这项研究的目的是设计一种模型,该模型可根据从燃料的近红外光谱分析获得的数据来预测柴油参数。由于光谱数据的复杂性和峰的绝对数量,只有那些对参数有重大影响的波长才被滤除。在NIR光谱数据上应用了四种类型的变量选择技术(LASSO,相关系数,Mallow's Cp准则,相对灵敏度比)。在变量选择之后,开发了基于岭回归和回归树的两个模型。该模型用于从NIR光谱数据成功预测六个柴油参数:十六烷值,沸点,凝固点,总芳烃含量,粘度和密度。 LASSO进行变量选择,然后进行回归树建模,可产生最佳的预测精度

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