碳膜
碳纤维
材料科学
沉积(地质)
无定形碳
无定形固体
化学工程
类金刚石碳
纳米技术
薄膜
工程物理
复合材料
地质学
工程类
化学
复合数
结晶学
沉积物
古生物学
作者
A. Miguel,Gábor Cśanyi,Tomi Laurila,Volker L. Deringer
出处
期刊:Physical review
[American Physical Society]
日期:2020-11-02
卷期号:102 (17)
被引量:71
标识
DOI:10.1103/physrevb.102.174201
摘要
Amorphous carbon (a-C) materials have diverse interesting and useful properties, but the understanding of their atomic-scale structures is still incomplete. Here, we report on extensive atomistic simulations of the deposition and growth of a-C films, describing interatomic interactions using a machine learning (ML) based Gaussian Approximation Potential (GAP) model. We expand widely on our initial work [Phys. Rev. Lett. 120, 166101 (2018)] by now considering a broad range of incident ion energies, thus modeling samples that span the entire range from low-density ($sp^{2}$-rich) to high-density ($sp^{3}$-rich, "diamond-like") amorphous forms of carbon. Two different mechanisms are observed in these simulations, depending on the impact energy: low-energy impacts induce $sp$- and $sp^{2}$-dominated growth directly around the impact site, whereas high-energy impacts induce peening. Furthermore, we propose and apply a scheme for computing the anisotropic elastic properties of the a-C films. Our work provides fundamental insight into this intriguing class of disordered solids, as well as a conceptual and methodological blueprint for simulating the atomic-scale deposition of other materials with ML-driven molecular dynamics.
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