亚稳态
无定形固体
结晶
成核
化学物理
材料科学
非晶态金属
从头算
Crystal(编程语言)
氮化物
原子间势
纳米技术
分子动力学
计算化学
化学
结晶学
计算机科学
有机化学
图层(电子)
程序设计语言
作者
Muratahan Aykol,Amil Merchant,Simon Batzner,Jennifer N. Wei,Ekin D. Cubuk
标识
DOI:10.1038/s43588-024-00752-y
摘要
Abstract Crystallization of amorphous precursors into metastable crystals plays a fundamental role in the formation of new matter, from geological to biological processes in nature to the synthesis and development of new materials in the laboratory. Reliably predicting the outcome of such a process would enable new research directions in these areas, but has remained beyond the reach of molecular modeling or ab initio methods. Here we show that candidates for the crystallization products of amorphous precursors can be predicted in many inorganic systems by sampling the local structural motifs at the atomistic level using universal deep learning interatomic potentials. We show that this approach identifies, with high accuracy, the most likely crystal structures of the polymorphs that initially nucleate from amorphous precursors, across a diverse set of material systems, including polymorphic oxides, nitrides, carbides, fluorides, chlorides, chalcogenides and metal alloys.
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