Machine-learning-driven simulations on microstructure, thermodynamic properties, and transport properties of LiCl-KCl-LiF molten salt

Si-Min Qi , Tao Bo , Lei Zhang , Zhi-Fang Chai , Wei-Qun Shi
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Abstract

The thermodynamic and transport properties of high-temperature chloride molten salt systems are of great significance for spent fuel reprocessing in the field of nuclear energy engineering. Here, by using machine learning based deep potential (DP) method, we train a high-precision force field model for the LiCl-KCl-LiF system. During force field training, adding new dataset through multiple iterations improves the accuracy of the force field model and its applicability to more configurations. The comparison of density functional theory (DFT) and DP results for the test dataset indicates that our trained DP model has the same accuracy as DFT. Then, we comprehensively investigate the local structure, thermophysical properties, and transport properties of the LiCl-KCl and LiCl-KCl-LiF molten salt systems using the trained DP model. The effects of temperature and LiF concentration on the above properties are analyzed. This work provides guidance for the training of machine learning force fields in molten salt systems and the study of basic physical properties of high-temperature chloride molten salt systems.

lcl - kcl - lif熔盐微观结构、热力学性质和输运性质的机器学习模拟
高温氯化物熔盐体系的热力学和输运性质在核能工程领域对乏燃料后处理具有重要意义。本文采用基于机器学习的深度势(deep potential, DP)方法,训练了LiCl-KCl-LiF系统的高精度力场模型。在力场训练过程中,通过多次迭代增加新的数据集,提高了力场模型的准确性和对更多配置的适用性。对测试数据集的密度泛函理论(DFT)和DP结果的比较表明,我们训练的DP模型具有与DFT相同的精度。然后,我们利用训练好的DP模型全面研究了LiCl-KCl和LiCl-KCl- lif熔盐体系的局部结构、热物理性质和输运性质。分析了温度和LiF浓度对上述性能的影响。该工作对熔盐体系中机器学习力场的训练和高温氯化物熔盐体系基本物理性质的研究具有指导意义。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Artificial intelligence chemistry
Artificial intelligence chemistry Chemistry (General)
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