Ravichandran Ashwin, Honrao Shreyas, Xie Stephen, Fonseca Eric, Lawson John W
KBR Inc., Intelligent Systems Division, NASA Ames Research Center, Moffett Field, California 94035, United States.
Intelligent Systems Division, NASA Ames Research Center, Moffett Field, California 94035, United States.
J Phys Chem Lett. 2024 Jan 11;15(1):121-126. doi: 10.1021/acs.jpclett.3c02888. Epub 2023 Dec 26.
We develop a computational framework combining thermodynamic and machine learning models to predict the melting temperatures of molten salt eutectic mixtures (). The model shows an accuracy of ∼6% (mean absolute percentage error) over the entire data set. Using this approach, we screen millions of combinatorial eutectics ranging from binary to hexanary, predict new mixtures, and propose design rules that lead to low . We show that heterogeneity in molecular sizes, quantified by the molecular volume of the components, and mixture configurational entropy, quantified by the number of mixture components, are important factors that can be exploited to design low mixtures. While predicting eutectic composition with existing techniques had proved challenging, we provide some preliminary models for estimating the compositions. The high-throughput screening technique presented here is essential to design novel mixtures for target applications and efficiently navigate the vast design space of the eutectic mixtures.
我们开发了一个结合热力学和机器学习模型的计算框架,用于预测熔盐共晶混合物的熔化温度()。该模型在整个数据集上显示出约6%的准确率(平均绝对百分比误差)。使用这种方法,我们筛选了数百万种从二元到六元的组合共晶,预测新的混合物,并提出导致低的设计规则。我们表明,由组分的分子体积量化的分子大小异质性和由混合物组分数量化的混合物构型熵是可用于设计低混合物的重要因素。虽然用现有技术预测共晶组成已被证明具有挑战性,但我们提供了一些用于估计组成的初步模型。这里提出的高通量筛选技术对于设计用于目标应用的新型混合物以及有效地在共晶混合物的巨大设计空间中导航至关重要。