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首页> 外文期刊>Comptes Rendus Chimie >Estimation of the thermal conductivity lambda(T,P) of ionic liquids using a neural network optimized with genetic algorithms
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Estimation of the thermal conductivity lambda(T,P) of ionic liquids using a neural network optimized with genetic algorithms

机译:使用遗传算法优化的神经网络估算离子液体的导热系数λ(T,P)

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摘要

In this study, an artificial neural network was optimized using a genetic algorithm in order to estimate the thermal conductivity of ionic liquids at different temperatures and pressures. Experimental thermal conductivity data of 41 ionic liquids (400 experimental data points) in the range from 0.10 to 0.22 W m(-1) K-1 were used to obtain the proposed method for the temperature range of 273-390 K and the pressure range of 100-20,000 kPa. In addition, the molecular mass M and structure of molecules, represented by the number of well-defined groups forming the molecule, were provided as input parameters in order to characterize the different molecules of ionic liquids. A heterogeneous set of ionic liquids includes cations such as imidazolium, ammonium, phosphonium, pyrrolidinium, and pyridinium. It also includes anions such as halides, sulfonates, tosylates, imides, borates, phosphates, acetates, and amino acids. The whole dataset was divided into a training set with 300 experimental data points and a prediction set with 100 experimental data points. Several architectures were studied, and the optimum weights for the network were determined. The results showed that the proposed method to estimate the thermal conductivity of ionic liquids at different temperatures and pressures presented a good accuracy with lower deviations such as AARD less than 0.91% and R-2 of 0.9969 for the training set, and AARD less than 0.84% with R-2 of 0.9963 for the prediction set. (C) 2015 Academie des sciences. Published by Elsevier Masson SAS. All rights reserved.
机译:在这项研究中,使用遗传算法对人工神经网络进行了优化,以估计不同温度和压力下离子液体的热导率。利用41种离子液体的实验热导率数据(400个实验数据点)在0.10至0.22 W m(-1)K-1的范围内,得出了温度范围为273-390 K和压力范围的建议方法100-20,000 kPa。此外,提供了分子质量M和分子结构(由形成该分子的明确定义的基团的数量表示)作为输入参数,以表征离子液体的不同分子。一组不均匀的离子液体包括阳离子,例如咪唑鎓,铵,phospho,吡咯烷鎓和吡啶鎓。它还包括阴离子,例如卤化物,磺酸根,甲苯磺酸根,酰亚胺,硼酸根,磷酸根,乙酸根和氨基酸。将整个数据集分为具有300个实验数据点的训练集和具有100个实验数据点的预测集。研究了几种架构,并确定了网络的最佳权重。结果表明,所提出的估计离子液体在不同温度和压力下的热导率的方法具有很好的精度,并且偏差较小,例如训练集的AARD小于0.91%,R-2为0.9969,AARD小于0.84。 %,预测集的R-2为0.9963。 (C)2015年科学研究院。由Elsevier Masson SAS发布。版权所有。

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