Research Center for Computational Design of Advanced Functional Materials, National Institute of Advanced Industrial Science and Technology, Tsukuba, Ibaraki 305-8568, Japan.
J Chem Phys. 2019 Sep 21;151(11):114101. doi: 10.1063/1.5114652.
Amorphous materials have variable structural order, which has a significant influence on their electronic, transport, and thermal properties. However, this difference in structure has rarely been investigated by atomistic modeling. In this study, a high-quality machine-learning-based interatomic potential was used to generate a series of atomic structures of amorphous silicon with different degrees of disorder by simulated cooling from the melt with different cooling rates (10-10 K/s). We found that the short- and intermediate-range orders are enhanced with decreasing cooling rate, and the influence of the structural order change is in excellent agreement with the experimental annealing process in terms of the structural, energetic, and vibrational properties. In addition, by comparing the excess energies, structure factors, radial distribution functions, phonon densities of states, and Raman spectra, it is possible to determine the corresponding theoretical model for experimental samples prepared with a certain method and thermal history.
非晶态材料具有可变的结构有序性,这对其电子、输运和热性能有重大影响。然而,这种结构差异很少通过原子尺度建模来研究。在这项研究中,使用高质量的基于机器学习的原子间势,通过从熔体以不同冷却速率(10-10 K/s)模拟冷却,生成了一系列具有不同无序程度的非晶硅的原子结构。我们发现,随着冷却速率的降低,短程和中程有序性增强,结构有序性变化的影响在结构、能量和振动性质方面与实验退火过程非常吻合。此外,通过比较过剩能、结构因子、径向分布函数、声子态密度和拉曼光谱,可以确定与用特定方法和热历史制备的实验样品相对应的理论模型。