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Characteristic Selection and Prediction of Octane Number Loss in Gasoline Refinement Process

机译:汽油改进过程中辛烷值损失的特征选择与预测

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摘要

In the refining process of gasoline, accurate prediction of the octane number loss is conducive to production management to ensure the octane content in gasoline. Therefore, the relevant research has important theoretical significance and application value. Aiming at the characteristics of octane number loss with few samples, high dimensions and non-linear of the octane number loss, this paper uses maximum information coefficient, recursive characteristic elimination and random forest regression algorithm to select the main characteristics, and establishes the octane number loss prediction model based on least squares support vector machine respectively. Compared with the three algorithms of support vector machine, BP neural network and ridge regression, the experimental results show that the two models of ridge regression and least square support vector machine have higher prediction accuracy, but the least square support vector machine has the best effect.
机译:在汽油的精炼过程中,精确预测辛烷值损失有利于生产管理,以确保汽油中的辛烷含量。 因此,相关研究具有重要的理论意义和应用价值。 瞄准辛烷值损失的特点,具有少量样品,高尺寸和辛烷值的非线性损失,本文采用最大信息系数,递归特征消除和随机森林回归算法来选择主要特征,并建立辛烷值 基于最小二乘支持向量机的损耗预测模型。 与支持向量机的三种算法,BP神经网络和脊回归相比,实验结果表明,两种型号的脊回归和最小二乘支持向量机具有更高的预测精度,但最小二乘支持向量机具有最佳效果 。

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