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弹性反传神经网络法预测烷基苯的疏水性常数
引用本文:刘二东,杨更亮,田宝娟,李志伟,陈义.弹性反传神经网络法预测烷基苯的疏水性常数[J].色谱,2002,20(3):216-218.
作者姓名:刘二东  杨更亮  田宝娟  李志伟  陈义
作者单位:1. 河北大学化学与环境科学学院,河北,保定,071002
2. 河北大学化学与环境科学学院,河北,保定,071002中国科学院化学研究所分子科学中心,北京,100080
3. 中国科学院化学研究所分子科学中心,北京,100080
摘    要: 介绍了应用人工神经网络预测烷基苯分子疏水性常数的方法。该法同传统方法相比 ,具有操作简便 ,适用范围广的特点。基于误差反传神经网络 ,建立了分子连接性指数 (χ)、范德华表面积 (Aw)和疏水性常数 (logP)之间的数学模型。应用该模型对烷基苯分子的疏水性常数进行预测 ,其平均相对偏差为 0 6 7%。并且通过与标准误差反传算法和自适应学习算法相比较 ,发现弹性反传算法具有训练速度快 ,参数选择简单的特点。

关 键 词:人工神经网络  弹性反传算法  疏水性常数  烷基苯
文章编号:1000-8713(2002)03-0216-03
修稿时间:2001年10月17

Application of Resilient Backpropagation Neural Network in PredictingHydrophobic Parameters of Alkylbenzenes
LIU Er dong ,YANG Geng liang ,TIAN Bao juan ,LI Zhi wei ,CHEN Yi.Application of Resilient Backpropagation Neural Network in PredictingHydrophobic Parameters of Alkylbenzenes[J].Chinese Journal of Chromatography,2002,20(3):216-218.
Authors:LIU Er dong  YANG Geng liang    TIAN Bao juan  LI Zhi wei  CHEN Yi
Institution:College of Chemistry and Environmental Science, Hebei University, Baoding 071002, China.
Abstract:Artificial neural networks have been applied for predicting the hydrophobic parameters of alkylbenzene. Compared with traditional methods it has the advantages of simple operation and wide applications. Based on error back propagation neural networks the relationship among the molecular connectivity index (chi), van der Waals surface area (Aw) and hydrophobic parameter was studied, meanwhile the mathematical model was established and used to predict the hydrophobic parameters. By comparing the hydrophobic parameters of experimental values with those calculated by neural networks, we found they had good agreement. The average relative deviation was less than 1%. Because traditional back propagation network is generally time consuming, resilient backpropagation (RPROP) algorithm was used to solve this problem. By using RPROP algorithm, the hydrophobic parameters were obtained precisely by fast training and simple parameter's selection. It needed less than 1,000 iterations to reach the goal on the computer operated at 1.4 GHz. The present work shows that the artificial neural network is a new powerful tool to predict the physicochemical parameters.
Keywords:artificial neural network  resilient backpropagation algorithm  hydrophobic parameter  alkylbenzene
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