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首页> 外文期刊>Transactions of The Institution of Chemical Engineers. Process Safety and Environmental Protection, Part B >MNLR and ANN structural group contribution methods for predicting the flash point temperature of pure compounds in the transportation fuels range
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MNLR and ANN structural group contribution methods for predicting the flash point temperature of pure compounds in the transportation fuels range

机译:MNLR和ANN结构基团贡献方法用于预测运输燃料范围内纯化合物的闪点温度

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A QSPR method is presented for predicting the flash point temperature (FPT) of pure compounds in the transportation fuels range. A structural group contribution method is used to determine the flash point temperature using two techniques: multivariable nonlinear regression and artificial neural networks. The method was used to probe the structural groups that have significant contribution to the overall FPT of pure compounds and arrive at the set of 37 atom-type structural groups that can best represent the flash point for about 375 substances. The input parameters to the model are the number of occurrence of each of the 37 structural groups in each molecule. The neural network method was the better of the two techniques and can predict the flash point of pure compounds merely from the knowledge of the molecular structure with an overall correlation coefficient of 0.996 and overall average and maximum errors of 1.12% and 6.62%, respectively. The results are compared to the more traditional approach of the SGC method along with other methods in the literature. (C) 2014 The Institution of Chemical Engineers. Published by Elsevier B.V. All rights reserved.
机译:提出了一种QSPR方法来预测运输燃料范围内纯化合物的闪点温度(FPT)。结构群贡献法用于通过两种技术确定闪点温度:多变量非线性回归和人工神经网络。该方法用于探测对纯化合物的整体FPT有重要贡献的结构基团,并得出37个原子型结构基团的集合,它们最能代表约375种物质的闪点。该模型的输入参数是每个分子中37个结构基团中每个结构基团的出现数。神经网络方法是这两种技术中较好的一种,仅通过了解分子结构即可预测纯化合物的闪点,总相关系数为0.996,总平均和最大误差分别为1.12%和6.62%。将结果与SGC方法的更传统方法以及文献中的其他方法进行比较。 (C)2014化学工程师学会。由Elsevier B.V.发布。保留所有权利。

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