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Shear viscosity prediction of alcohols, hydrocarbons, halogenated, carbonyl, nitrogen-containing, and sulfur compounds using the variable force fields

机译:使用可变力田的乙醇,烃,卤化,羰基,含氮和硫化合物的剪切粘度预测

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摘要

Viscosity of organic liquids is an important physical property in applications of printing, pharmaceuticals, oil extracting, engineering, and chemical processes. Experimental measurement is a direct but time-consuming process. Accurately predicting the viscosity with a broad range of chemical diversity is still a great challenge. In this work, a protocol named Variable Force Field (VaFF) was implemented to efficiently vary the force field parameters, especially lambda(vdw), for the van der Waals term for the shear viscosity prediction of 75 organic liquid molecules with viscosity ranging from -9 to 0 in their nature logarithm and containing diverse chemical functional groups, such as alcoholic hydroxyl, carbonyl, and halogenated groups. Feature learning was applied for the viscosity prediction, and the selected features indicated that the hydrogen bonding interactions and the number of atoms and rings play important roles in the property of viscosity. The shear viscosity prediction of alcohols is very difficult owing to the existence of relative strong intermolecular hydrogen bonding interaction as reflected by density functional theory binding energies. From radial and spatial distribution functions of methanol, we found that the van der Waals related parameters lambda(vdw) are more crucial to the viscosity prediction than the rotation related parameters, lambda(tor). With the variable lambda(vdw)-based all-atom optimized potentials for liquid simulations force field, a great improvement was observed in the viscosity prediction for alcohols. The simplicity and uniformity of VaFF make it an efficient tool for the prediction of viscosity and other related properties in the rational design of materials with the specific properties. Published under license by AIP Publishing.
机译:有机液体的粘度是印刷、制药、石油开采、工程和化工过程中的一个重要物理性质。实验测量是一个直接但耗时的过程。准确预测具有广泛化学多样性的粘度仍然是一个巨大的挑战。在这项工作中,实施了一个名为可变力场(VaFF)的协议,以有效地改变力场参数,尤其是用于预测75个有机液体分子剪切粘度的范德华项的lambda(vdw),这些分子的粘度在性质对数上从-9到0不等,并且包含各种化学官能团,例如醇羟基、羰基、,和卤化基团。将特征学习应用于粘度预测,所选特征表明氢键相互作用以及原子和环的数量对粘度的性质起着重要作用。由于密度泛函理论结合能所反映的分子间氢键相互作用较强,因此预测醇的剪切粘度非常困难。根据甲醇的径向和空间分布函数,我们发现范德华相关参数lambda(vdw)比旋转相关参数lambda(tor)对粘度预测更重要。基于可变lambda(vdw)的液体模拟力场全原子优化势极大地改善了醇的粘度预测。VaFF的简单性和均匀性使其成为预测粘度和其他相关性能的有效工具,用于合理设计具有特定性能的材料。由AIP Publishing授权发布。

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  • 来源
    《The Journal of Chemical Physics》 |2021年第7期|共16页
  • 作者单位

    Nanjing Univ Sch Chem &

    Chem Engn Inst Theoret &

    Computat Chem Key Lab Mesoscop Chem Minist Educ Nanjing 210023 Peoples R China;

    Nanjing Univ Sch Chem &

    Chem Engn Inst Theoret &

    Computat Chem Key Lab Mesoscop Chem Minist Educ Nanjing 210023 Peoples R China;

    Nanjing Univ Sch Chem &

    Chem Engn Inst Theoret &

    Computat Chem Key Lab Mesoscop Chem Minist Educ Nanjing 210023 Peoples R China;

    Nanjing Univ Sch Chem &

    Chem Engn Inst Theoret &

    Computat Chem Key Lab Mesoscop Chem Minist Educ Nanjing 210023 Peoples R China;

    Nanjing Univ Sch Chem &

    Chem Engn Inst Theoret &

    Computat Chem Key Lab Mesoscop Chem Minist Educ Nanjing 210023 Peoples R China;

    Nanjing Univ Sch Chem &

    Chem Engn Inst Theoret &

    Computat Chem Key Lab Mesoscop Chem Minist Educ Nanjing 210023 Peoples R China;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 物理化学(理论化学)、化学物理学;
  • 关键词

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