Tao Chen, Qianrui Liu, Yu Liu, Liang Sun, Mohan Chen
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引用次数: 0
摘要
在传统的有限温度 Kohn-Sham 密度泛函理论(KSDFT)中,大量高能 KS 特征态的部分占据限制了第一原理分子动力学方法在极高温下的使用。然而,随机密度泛函理论(SDFT)可以克服这一限制。最近,基于平面波基集的 SDFT 和相关的随机-确定混合密度泛函理论已在第一原理电子结构软件 ABACUS 中实现 [Q. Liu and M. Chen, Phys. Rev. B 106, 125132 (2022)]。在本研究中,我们将 SDFT 与 Born-Oppenheimer 分子动力学方法结合起来,研究温度范围从几十 eV 到 1000 eV 的系统。重要的是,我们利用 SDFT 数据训练基于机器学习的原子间模型,并利用这些深度势能模型模拟具有长轨迹的大规模系统。随后,我们计算并分析了温致密物质的结构特性、动态特性和传输系数。
Combining stochastic density functional theory with deep potential molecular dynamics to study warm dense matter
In traditional finite-temperature Kohn–Sham density functional theory (KSDFT), the partial occupation of a large number of high-energy KS eigenstates restricts the use of first-principles molecular dynamics methods at extremely high temperatures. However, stochastic density functional theory (SDFT) can overcome this limitation. Recently, SDFT and the related mixed stochastic–deterministic density functional theory, based on a plane-wave basis set, have been implemented in the first-principles electronic structure software ABACUS [Q. Liu and M. Chen, Phys. Rev. B 106, 125132 (2022)]. In this study, we combine SDFT with the Born–Oppenheimer molecular dynamics method to investigate systems with temperatures ranging from a few tens of eV to 1000 eV. Importantly, we train machine-learning-based interatomic models using the SDFT data and employ these deep potential models to simulate large-scale systems with long trajectories. Subsequently, we compute and analyze the structural properties, dynamic properties, and transport coefficients of warm dense matter.
期刊介绍:
Matter and Radiation at Extremes (MRE), is committed to the publication of original and impactful research and review papers that address extreme states of matter and radiation, and the associated science and technology that are employed to produce and diagnose these conditions in the laboratory. Drivers, targets and diagnostics are included along with related numerical simulation and computational methods. It aims to provide a peer-reviewed platform for the international physics community and promote worldwide dissemination of the latest and impactful research in related fields.