来自第一原理模拟的玻璃动力学

Florian Pabst, Stefano Baroni
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引用次数: 0

摘要

从微观上理解液体在冷却至玻璃化转变时粘度急剧增加的现象,是凝结物质物理学的一个重大未决问题。在这里,我们利用机器学习方法,以第一原理的精度加速了对玻璃化物甲苯的分子动力学模拟。我们的研究表明,粘度的增加与动态相关分子数量 $N^*$ 的增加密切相关。虽然玻璃态动力学的某些标志性特征(如物理老化)也与 $N^*$ 相关,但其他特征(如弛豫伸展)则与 $N^*$ 无关。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Glassy Dynamics from First-Principles Simulations
The microscopic understanding of the dramatic increase in viscosity of liquids when cooled towards the glass transition is a major unresolved issue in condensed matter physics. Here, we use machine learning methods to accelerate molecular dynamics simulations with first-principles accuracy for the glass-former toluene. We show that the increase in viscosity is intimately linked to the increasing number of dynamically correlated molecules $N^*$. While certain hallmark features of glassy dynamics, like physical aging, are linked to $N^*$ as well, others, like relaxation stretching, are not.
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