三元运算
材料科学
共晶体系
熔盐
热能储存
微观结构
热力学
分子动力学
热导率
工作(物理)
氯化物
热流体
粘度
热的
复合材料
化学
冶金
热阻
计算机科学
计算化学
程序设计语言
物理
作者
Wenhao Dong,Heqing Tian,Wenguang Zhang,Junjie Zhou,Xinchang Pang
标识
DOI:10.1021/acsami.3c13412
摘要
NaCl–MgCl2–CaCl2 eutectic ternary chloride salts are potential heat transfer and storage materials for high-temperature thermal energy storage. In this study, first-principles molecular dynamics simulation results were used as a data set to develop an interatomic potential for ternary chloride salts using a neural network machine learning method. Deep potential molecular dynamics (DPMD) simulations were performed to predict the microstructure and thermophysical properties of the NaCl–MgCl2–CaCl2 ternary salt. This work reveals that DPMD simulations can accurately calculate the microstructure and thermophysical properties of ternary chloride salts. The association strength of chloride ions and cations follows the order of Mg2+ > Ca2+ > Na+, and the coordination number decreases gradually with increasing temperature, indicating a progressively looser and more disordered molten structure. Furthermore, thermophysical properties, such as density, specific heat capacity, thermal conductivity, and viscosity, are in good agreement with the experimental measurements. Machine learning molecular dynamics will provide a feasible multivariate molten salt exploration method for the design of next-generation solar power plants and thermal energy storage systems.
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