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Application of PCA-RBF Method to QSRR Studies on Hydrocarbon in FCC Gasoline with PCA-RBF

机译:PCA-RBF法在PCA-RBF中对FCC汽油烃QSRR研究的应用

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A novel Artificial Neutral Network (ANN) algorithm based on Principle component analysis(PCA) is proposed and applied to predicted the retention index of a series of hydrocarbons in FCC gasoline. The PCA technology is utilized to preprocess the mass spectrogram of FCC gasoline for parameter selection and to reduce the input of prediction model, which thus improve the input factors and eliminates the correlation among the inputs. Then new sample data are input into radial basis function-artificial neutral network(RBF-ANN) to construct the prediction model. 156 compounds were divided into two subsets. RSM of training set and testing set is 0.9958 and 0.9991, respectively. The satisfactory results were obtained.
机译:提出了一种基于原理成分分析(PCA)的新型人工中性网络(ANN)算法,并应用于预测FCC汽油中一系列碳氢化合物的保留指数。 PCA技术用于预处理FCC汽油的质谱图进行参数选择,并减少预测模型的输入,从而改善输入因素并消除输入之间的相关性。然后将新的样本数据输入到径向基函数 - 人工中性网络(RBF-ANN)中以构建预测模型。将156种化合物分成两舟集。 RSM的训练集和测试集分别为0.9958和0.9991。获得了令人满意的结果。

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