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首页> 外文期刊>Journal of chemical information and modeling >Predicting the Surface Tension of Liquids: Comparison of Four Modeling Approaches and Application to Cosmetic Oils
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Predicting the Surface Tension of Liquids: Comparison of Four Modeling Approaches and Application to Cosmetic Oils

机译:预测液体的表面张力:将四种建模方法与化妆油的应用比较

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摘要

The efficiency of four modeling approaches, namely, group contributions, corresponding-states principle, sigma-moment-based neural networks, and graph machines, are compared for the estimation ofthe surface tension (ST) of 269 pure liquid compounds at 25 degrees C from their molecular structure. This study focuses on liquids containing only carbon, oxygen, hydrogen, or silicon atoms since our purpose is to predict the surface tension of cosmetic oils. Neural network estimations are performed from sigma-moment descriptors as defined in the COSMO-RS model, while methods based on group contributions, corresponding-states principle, and graph machines use 2D molecular information (SMILES codes). The graph machine approach provides the best results, estimating the surface tensions of 23 cosmetic oils, such as hemisqualane, isopropyl myristate, or decamethylcy-clopentasiloxane (D5), with accuracy better than 1 mN-m(-1). A demonstration of the graph machine model using the recent Docker technology is available for download in the Supporting Information.
机译:将四种建模方法,集团贡献,相应状态原理,Sigma矩的神经网络和图形机器的效率进行比较,以估计269级纯液体化合物的表面张力(ST)。他们的分子结构。本研究专注于含有碳,氧,氢或硅原子的液体,因为我们的目的是预测化妆油的表面张力。从COSMO-RS模型中定义的Sigma矩描述符执行神经网络估计,而基于组贡献的方法,相应的状态和图形机使用2D分子信息(微笑代码)。图形机方法提供了最佳效果,估计23种化妆油的表面紧张,例如甲氨酸,异丙基豆蔻酸酯或甲甲基环戊烷酮(D5),精度优于1mN-m(-1)。使用最近的Docker技术的图形机器模型的演示可用于在支持信息中下载。

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