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系统地提高熔点预测:需要一个详细的物理模拟模型。

Systematically improved melting point prediction: a detailed physical simulation model is required.

机构信息

Department of Cell and Molecular Biology, Uppsala University, Husargatan 3, Box 596, SE-75124 Uppsala, Sweden.

出版信息

Chem Commun (Camb). 2019 Oct 3;55(80):12044-12047. doi: 10.1039/c9cc06177k.

Abstract

Accurate prediction of fundamental properties such as melting points using direct physical simulation is challenging. Here, we investigate the melting point (Tm) of alkali halides that are often considered to be the simplest category of salts. Popular force fields that have been examined for this task leave considerable room for improvement. Recently we introduced a new force field for alkali halides (WBK) as part of the Alexandria project, featuring explicit polarisation and distributed charges. This new force field significantly improves the prediction of a large set of physicochemical properties and in this contribution we show that the same is valid for the prediction of Tm. For reference, we calculated Tm using a non-polarisable force field by Joung and Cheatham (JC), and compare our results to existing literature data on the widely used Tosi-Fumi (TF) parameters. In contrast to the predictions of the WBK model, the JC force field consistently overestimates the experimental Tm, while the accuracy of the TF model strongly depends on the investigated salt. Our results show that the inclusion of more realistic physics into a force field opens up the possibility to accurately describe many physicochemical properties over a large range of temperatures, even including phase transitions.

摘要

准确地预测熔点等基本性质,使用直接物理模拟是具有挑战性的。在这里,我们研究了碱金属卤化物的熔点(Tm),它们通常被认为是最简单的盐类。为此任务而检查的流行力场还有很大的改进空间。最近,我们作为亚历山大项目的一部分引入了一种新的碱金属卤化物力场(WBK),其具有显式极化和分布式电荷。这种新的力场大大提高了一组大量物理化学性质的预测能力,在本贡献中,我们表明,对于 Tm 的预测也是如此。为此,我们使用 Joung 和 Cheatham(JC)的非极化力场计算了 Tm,并将我们的结果与广泛使用的 Tosi-Fumi(TF)参数的现有文献数据进行了比较。与 WBK 模型的预测相比,JC 力场一致地高估了实验 Tm,而 TF 模型的准确性强烈依赖于所研究的盐。我们的结果表明,将更现实的物理纳入力场中,可以在很大的温度范围内准确地描述许多物理化学性质,甚至包括相变。

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