论文标题
从深度势能从头开始,对锡的高压固体和液相进行建模
Modeling the High-Pressure Solid and Liquid Phases of Tin from Deep Potentials with ab initio Accuracy
论文作者
论文摘要
为TIN(SN)的高压阶段构建准确的原子模型是具有挑战性的,因为SN的特性对压力很敏感。我们开发了基于机器学习的深度潜力,其压力从0到50 GPA,温度从0到2000 K不等。特别是,我们发现通过训练来自密度功能理论的启动数据,具有最先进的扫描交换校正功能,可以从密度功能理论计算中获得深度的潜力,适合表征SN sn的高压阶段。我们系统地验证了SN的α(钻石结构),β,BCT和BCC结构的几种结构和弹性特性,以及液体SN的结构和动态特性。热力学整合方法进一步用于计算α,β,BCT和液相的自由能,从中,深层潜在成功地预测了SN的相位图,包括存在与实验的三重点的存在。
Constructing an accurate atomistic model for the high-pressure phases of tin (Sn) is challenging because properties of Sn are sensitive to pressures. We develop machine-learning-based deep potentials for Sn with pressures ranging from 0 to 50 GPa and temperatures ranging from 0 to 2000 K. In particular, we find the deep potential, which is obtained by training the ab initio data from density functional theory calculations with the state-of-the-art SCAN exchange-correlation functional, is suitable to characterize high-pressure phases of Sn. We systematically validate several structural and elastic properties of the α (diamond structure), β, bct, and bcc structures of Sn, as well as the structural and dynamic properties of liquid Sn. The thermodynamics integration method is further utilized to compute the free energies of the α, β, bct, and liquid phases, from which the deep potential successfully predicts the phase diagram of Sn including the existence of the triple-point that qualitatively agrees with the experiment.