Kim Jiyeon, Lee Donggeon, Lee Dongwoo, Li Xin, Lee Yea-Lee, Kim Sooran
Department of Physics Education, Kyungpook National University, Daegu 41566, South Korea.
The Center for High Energy Physics, Kyungpook National University, Daegu 41566, South Korea.
J Phys Chem Lett. 2024 Jun 6;15(22):5914-5922. doi: 10.1021/acs.jpclett.4c00995. Epub 2024 May 29.
Recently, machine-learning approaches have accelerated computational materials design and the search for advanced solid electrolytes. However, the predictors are currently limited to static structural parameters, which may not fully account for the dynamic nature of ionic transport. In this study, we meticulously curated features considering dynamic properties and developed machine-learning models to predict the ionic conductivity, σ, of solid electrolytes. We compiled 14 phonon-related descriptors from first-principles phonon calculations along with 16 descriptors related to the structure and electronic properties. Our logistic regression classifiers exhibit an accuracy of 93%, while the random forest regression model yields a root-mean-square error for log(σ) of 1.179 S/cm and of 0.710. Notably, phonon-related features are essential for estimating the ionic conductivities in both models. Furthermore, we applied our prediction model to screen 264 Li-containing materials and identified 11 promising candidates as potential superionic conductors.
最近,机器学习方法加速了计算材料设计以及对先进固体电解质的探索。然而,目前的预测器仅限于静态结构参数,这可能无法充分解释离子传输的动态特性。在本研究中,我们精心挑选了考虑动态特性的特征,并开发了机器学习模型来预测固体电解质的离子电导率σ。我们从第一性原理声子计算中汇编了14个与声子相关的描述符,以及16个与结构和电子性质相关的描述符。我们的逻辑回归分类器准确率达93%,而随机森林回归模型对log(σ)的均方根误差为1.179 S/cm,相关系数为0.710。值得注意的是,与声子相关的特征对于估计两个模型中的离子电导率至关重要。此外,我们应用我们的预测模型筛选了264种含锂材料,并确定了11种有前景的候选材料作为潜在的超离子导体。