论文标题
通过物理知识的神经网络方法开发通用机器学习的铝的原子间潜力
Development of a general-purpose machine-learning interatomic potential for aluminum by the physically-informed neural network method
论文作者
论文摘要
抽象的原子间电位构成了材料大规模原子模拟的关键组成部分。最近提出的物理知识的神经网络(PINN)方法结合了由人工神经网络实施的高维回归,具有基于物理的键级 - 原子间潜在,适用于金属和非金属。在本文中,我们提出了PINN方法的修改版本,该版本加速了潜在的训练过程,并进一步提高了Pinn电位向未知原子环境的可传递性。作为一种应用,通过在电子结构计算的大数据库上进行训练,已开发了修改的PINN电位。电势将每个原子2.6 MeV以内的参考第一原理能量再现,并准确地预测了Al的各种物理特性。这些特性包括但不限于晶格动力学,热膨胀,点和扩展缺陷的能量,熔融温度,液体AL的结构和动态特性,液体表面和固液界面的表面张力以及晶界裂纹的成核和生长。还讨论了PINN电位的计算效率。
Abstract Interatomic potentials constitute the key component of large-scale atomistic simulations of materials. The recently proposed physically-informed neural network (PINN) method combines a high-dimensional regression implemented by an artificial neural network with a physics-based bond-order interatomic potential applicable to both metals and nonmetals. In this paper, we present a modified version of the PINN method that accelerates the potential training process and further improves the transferability of PINN potentials to unknown atomic environments. As an application, a modified PINN potential for Al has been developed by training on a large database of electronic structure calculations. The potential reproduces the reference first-principles energies within 2.6 meV per atom and accurately predicts a wide spectrum of physical properties of Al. Such properties include, but are not limited to, lattice dynamics, thermal expansion, energies of point and extended defects, the melting temperature, the structure and dynamic properties of liquid Al, the surface tensions of the liquid surface and the solid-liquid interface, and the nucleation and growth of a grain boundary crack. Computational efficiency of PINN potentials is also discussed.