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RON predicted of gasoline by NIR based on ICA and SVM

机译:基于ICA和SVM的NIR RON预测汽油

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摘要

Petroleum and its products are complex mixture, and how to precise analysis its components is an important part of the oil industry. In this paper, we proposed a components forecasting methods for gasoline octane value prediction based on independent component analysis (ICA) and support vector machine (SVM). By evaluating the accuracy of the models with two feature optimization methods(principal component analysis, PCA and successive projections algorithm, SPA) and two prediction models (neural network, ANN and minimum mean square squares, PLS). The results show that: the prediction relative error of the ICA-SVM model is only 0.34% and the squared correlation coefficient(R2) reached 0.99583, 0.97891, and the mean squared error(MSE) was 0.0010276, 0.013122 on the training set and test set respectively which are better than other compound models. This method in this paper has positive significance for the oil component analysis.
机译:石油及其产品是复杂的混合物,如何精确分析其成分是石油工业的重要组成部分。本文提出了一种基于独立成分分析(ICA)和支持向量机(SVM)的汽油辛烷值预测的成分预测方法。通过使用两种特征优化方法(主成分分析,PCA和连续投影算法,SPA)和两种预测模型(神经网络,ANN和最小均方平方,PLS)评估模型的准确性。结果表明:在训练集和测试上,ICA-SVM模型的预测相对误差仅为0.34%,平方相关系数(R2)分别为0.99583、0.97891,均方误差(MSE)为0.0010276、0.013122。分别设置,比其他复合模型更好。本文方法对油成分分析具有积极意义。

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