Large scale and quantum accurate molecular dynamics simulation: liquid iron under extreme condition

Qi-Yu Zeng, Bo Chen, Dong-Dong Kang, Jia-Yu Dai
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Abstract

Liquid iron is the major component of planetary cores. Its structure and dynamics under high pressure and temperature is of great significance in studying geophysics and planetary science. However, for experimental techniques, it is still difficult to generate and probe such a state of matter under extreme conditions, while for theoretical method like molecular dynamics simulation, the reliable estimation of dynamic properties requires both large simulation size and ab initio accuracy, resulting in unaffordable computational costs for traditional method. Owing to the technical limitation, the understanding of such matters remains limited. In this work, combining molecular dynamics simulation, we establish a neural network potential energy surface model to study the static and dynamic properties of liquid iron at its extreme thermodynamic state close to core-mantle boundary. The implementation of deep neural network extends the simulation scales from one hundred atoms to millions of atoms within quantum accuracy. The estimated static and dynamic structure factor show good consistency with all available X-ray diffraction and inelastic X-ray scattering experimental observations, while the empirical potential based on embedding-atom-method fails to give a unified description of liquid iron across a wide range of thermodynamic conditions. We also demonstrate that the transport property like diffusion coefficient exhibits a strong size effect, which requires more than at least ten thousands of atoms to give a converged value. Our results show that the combination of deep learning technology and molecular modelling provides a way to describe matter realistically under extreme conditions.
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大尺度和量子精确分子动力学模拟:极端条件下的液态铁
液态铁是行星核心的主要成分。它的结构和高压高温下的动力学在地球物理和行星科学研究中具有重要意义。然而,对于实验技术来说,在极端条件下生成和探测物质的这种状态仍然是困难的,而对于分子动力学模拟等理论方法来说,对动态性质的可靠估计既需要较大的模拟规模,又需要<i>ab initio</i>精度高,导致传统方法的计算成本难以承受。由于技术上的限制,对这些事项的了解仍然有限。本文结合分子动力学模拟,建立了神经网络势能面模型,研究了铁液在接近核幔边界的极端热力学状态下的静态和动态性质。深度神经网络的实现在量子精度范围内将模拟尺度从100个原子扩展到数百万个原子。估计的静态和动态结构因子与所有可用的x射线衍射和非弹性x射线散射实验观测结果具有良好的一致性,而基于嵌入原子法的经验势不能在广泛的热力学条件下给出铁液的统一描述。我们还证明了像扩散系数一样的输运性质表现出强烈的尺寸效应,这需要至少一万多个原子才能给出收敛值。我们的研究结果表明,深度学习技术和分子建模的结合提供了一种在极端条件下真实描述物质的方法。
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