Chahal Rajni, Gibson Luke D, Roy Santanu, Bryantsev Vyacheslav S
Chemical Sciences Division, Oak Ridge National Laboratory, Oak Ridge, Tennessee 37830, United States.
Computational Sciences and Engineering Division, Oak Ridge National Laboratory, Oak Ridge, Tennessee 37831, United States.
J Phys Chem B. 2025 Jan 23;129(3):952-964. doi: 10.1021/acs.jpcb.4c06450. Epub 2025 Jan 12.
Molten salts are promising candidates in numerous clean energy applications, where knowledge of thermophysical properties and vapor pressure across their operating temperature ranges is critical for safe operations. Due to challenges in evaluating these properties using experimental methods, fast and scalable molecular simulations are essential to complement the experimental data. In this study, we developed machine learning interatomic potentials (MLIP) to study the AlCl molten salt across varied thermodynamic conditions ( = 473-613 K and = 2.7-23.4 bar), which allowed us to predict temperature-surface tension correlations and liquid-vapor phase diagram from direct simulations of two-phase coexistence in this molten salt. Two MLIP architectures, a Kernel-based potential and neural network interatomic potential (NNIP), were considered to benchmark their performance for AlCl molten salt using experimental structure and density values. The NNIP potential employed in two-phase equilibrium simulations yields the critical temperature and critical density of AlCl that are within 10 K (∼3%) and 0.03 g/cm (∼7%) of the reported experimental values. An accurate correlation between temperature and viscosities is obtained as well. In doing so, we report that the inclusion of low-density configurations in their training is critical to more accurately represent the AlCl system across a wide phase-space. The MLIP trained using PBE-D3 functional in the ab initio molecular dynamics (AIMD) simulations (120 atoms) also showed close agreement with experimentally determined molten salt structure comprising AlCl dimers, as validated using Raman spectra and neutron structure factor. The PBE-D3 as well as its trained MLIP showed better liquid density and temperature correlation for AlCl system when compared to several other density functionals explored in this work. Overall, the demonstrated approach to predict temperature correlations for liquid and vapor densities in this study can be employed to screen nuclear reactors-relevant compositions, helping to mitigate safety concerns.
熔盐是众多清洁能源应用中很有前景的候选材料,在这些应用中,了解其整个工作温度范围内的热物理性质和蒸气压对于安全运行至关重要。由于使用实验方法评估这些性质存在挑战,快速且可扩展的分子模拟对于补充实验数据至关重要。在本研究中,我们开发了机器学习原子间势(MLIP)来研究不同热力学条件(T = 473 - 613 K和P = 2.7 - 23.4 bar)下的AlCl熔盐,这使我们能够通过对该熔盐两相共存的直接模拟来预测温度 - 表面张力相关性和液 - 气 相图。考虑了两种MLIP架构,基于核的势和神经网络原子间势(NNIP),使用实验结构和密度值来评估它们对AlCl熔盐的性能。在两相平衡模拟中使用的NNIP势得出的AlCl的临界温度和临界密度,与报道的实验值相差在10 K(约3%)和0.03 g/cm³(约7%)以内。还获得了温度与粘度之间的准确相关性。在此过程中,我们报告称,在训练中包含低密度构型对于更准确地描述AlCl系统在广泛相空间中的情况至关重要。在从头算分子动力学(AIMD)模拟(120个原子)中使用PBE - D3泛泛函函数训练的MLIP,与通过拉曼光谱和中子结构因子验证的、由AlCl二聚体组成的实验测定的熔盐结构也显示出密切一致。与本工作中探索的其他几种密度泛函相比,PBE - D3及其训练的MLIP在AlCl系统中显示出更好的液体密度与温度相关性。总体而言,本研究中展示的预测液体和蒸气密度温度相关性的方法可用于筛选与核反应堆相关的成分,有助于减轻安全担忧。