相图
人工智能
计算机科学
相(物质)
晶体结构预测
铋
机器学习
人工神经网络
能量(信号处理)
算法
统计物理学
直线(几何图形)
势能
晶体结构
相变
理论(学习稳定性)
分子动力学
等变映射
材料科学
作者
Ziyang Yang,Yijie Zhu,Jiuyang Shi,Shuning Pan,Shaobo Yu,Yujian Pan,Zhixin Liang,Junjie Wang,Jian Sun
摘要
Bismuth's (Bi) unique high-pressure phase behavior has long attracted significant interest. Despite their significance in both technological applications and fundamental research, comprehensive and accurate modeling of these transitions remains challenging. To address this, we developed a neural equivariant potential machine learning potential for Bi with near first-principles accuracy. By integrating this potential with state-of-the-art computational techniques-including the MAGUS crystal structure search algorithm and GPUMD molecular dynamics simulations with enhanced sampling-we systematically explored the phase behavior of Bi under high-pressure and high-temperature conditions. The calculated solid-solid phase boundaries and solid-liquid coexistence line up to 4 GPa show good agreement with previous experimental results. Furthermore, we predict a new competitive phase of Bi with P42/mnm symmetry, which is dynamically stable around 2 GPa and competitive at free energy with the known phase C2/m near the melting line.
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