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首页> 外文期刊>RSC Advances >Modelling and prediction of the thermophysical properties of aqueous mixtures of choline geranate and geranic acid (CAGE) using SAFT-gamma Mie
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Modelling and prediction of the thermophysical properties of aqueous mixtures of choline geranate and geranic acid (CAGE) using SAFT-gamma Mie

机译:使用Saft-Gamma Mie建模与预测胆碱和甘蔗水混合物的热理性质(笼状)

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摘要

Deep-eutectic solvents and room temperature ionic liquids are increasingly recognised as appropriate materials for use as active pharmaceutical ingredients and formulation additives. Aqueous mixtures of choline and geranate (CAGE), in particular, have been shown to offer promising biomedical properties but understanding the thermophysical behaviour of these mixtures remains limited. Here, we develop interaction potentials for use in the SAFT-gamma Mie group-contribution approach, to study the thermodynamic properties and phase behaviour of aqueous mixtures of choline geranate and geranic acid. The determination of the interaction parameters between chemical functional groups is carried out in a sequential fashion, characterising each group based on those previously developed. The parameters of the groups relevant to geranic acid are estimated using experimental fluid phase-equilibrium data such as vapour pressure and saturated-liquid density of simple pure components (n-alkenes, branched alkenes and carboxylic acids) and the phase equilibrium data of mixtures (aqueous solutions of branched alkenes and of carboxylic acids). Geranate is represented by further incorporating the anionic carboxylate group, COO-, which is characterised using aqueous solution data of sodium carboxylate salts, assuming full dissociation of the salt in water. Choline is described by incorporating the cationic quaternary ammonium group, N+, using data for choline chloride solutions. The osmotic pressure of aqueous mixtures of CAGE at several concentrations is predicted and compared to experimental data obtained as part of our work to assess the accuracy of the modelling platform. The SAFT-gamma Mie approach is shown to be predictive, providing a good description of the measured data for a wide range of mixtures and properties. Furthermore, the new group-interaction parameters needed to represent CAGE extend the set of functional groups of the group-contribution approach, and can be used in a transferable way to predict the properties of systems beyond those studied in the current work.
机译:深度凝胶溶剂和室温离子液体越来越普及为适当的材料,用作活性药物成分和配制添加剂。特别是胆碱和香叶酸盐(笼)的水性混合物,特别是提供有希望的生物医学性质,但理解这些混合物的热神经性能仍然有限。在这里,我们开发用于Saft-Gamma Mie群贡献方法的相互作用电位,研究胆碱和香叶酸水性混合物的热力学性质和相行为。化学官能团之间的相互作用参数以顺序方式进行,表征基于先前显影的那些。使用实验流体相位平衡数据估计与天竺葵酸相关的基团的参数,例如蒸气压和饱和液密度的简单纯组分(N-烯烃,支链烯烃和羧酸)和混合物的相平衡数据(支链烯烃和羧酸的水溶液)。通过进一步掺入阴离子羧酸盐基团,COO-的结合,其特征在于使用羧酸钠盐的水溶液数据,假设盐在水中充分解离。利用氯化胆碱溶液的数据掺入阳离子季铵基团N +来描述胆碱。预测笼状笼中的渗透压,并与作为我们工作的一部分获得的实验数据进行比较,以评估建模平台的准确性。显示SAFT-GAMMA MIE方法是预测性的,提供了用于各种混合物和性质的测量数据的良好描述。此外,表示笼所需的新组交互参数扩展了组贡献方法的一组功能组,并且可以以可转移的方式使用来预测超出当前工作中研究的系统的性质。

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    《RSC Advances》 |2019年第65期|共15页
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  • 正文语种 eng
  • 中图分类 化学;
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