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利用机器学习揭示界面诱导的液体有序化对晶体生长的影响。

Uncovering the effects of interface-induced ordering of liquid on crystal growth using machine learning.

作者信息

Freitas Rodrigo, Reed Evan J

机构信息

Department of Materials Science and Engineering, Stanford University, Stanford, CA, 94305, USA.

出版信息

Nat Commun. 2020 Jun 26;11(1):3260. doi: 10.1038/s41467-020-16892-4.

Abstract

The process of crystallization is often understood in terms of the fundamental microstructural elements of the crystallite being formed, such as surface orientation or the presence of defects. Considerably less is known about the role of the liquid structure on the kinetics of crystal growth. Here atomistic simulations and machine learning methods are employed together to demonstrate that the liquid adjacent to solid-liquid interfaces presents significant structural ordering, which effectively reduces the mobility of atoms and slows down the crystallization kinetics. Through detailed studies of silicon and copper we discover that the extent to which liquid mobility is affected by interface-induced ordering (IIO) varies greatly with the degree of ordering and nature of the adjacent interface. Physical mechanisms behind the IIO anisotropy are explained and it is demonstrated that incorporation of this effect on a physically-motivated crystal growth model enables the quantitative prediction of the growth rate temperature dependence.

摘要

结晶过程通常是根据所形成微晶的基本微观结构元素来理解的,比如表面取向或缺陷的存在。关于液体结构对晶体生长动力学的作用,人们了解得要少得多。在这里,原子模拟和机器学习方法被共同用于证明固液界面附近的液体呈现出显著的结构有序性,这有效地降低了原子的迁移率并减缓了结晶动力学。通过对硅和铜的详细研究,我们发现液体迁移率受界面诱导有序(IIO)影响的程度会随相邻界面的有序程度和性质而有很大变化。解释了IIO各向异性背后的物理机制,并证明在基于物理的晶体生长模型中纳入这种效应能够对生长速率的温度依赖性进行定量预测。

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