抗血小板
电解质
离子电导率
电导率
固态
材料科学
离子键合
国家(计算机科学)
计算机科学
离子
化学
纳米技术
工程物理
物理
物理化学
算法
电极
有机化学
氮化物
图层(电子)
作者
Shang Xiang,Shaowen Lu,Jiawei Li,Kai Xie,Rui Zhu,Huanan Wang,Kai Huang,Chaoen Li,Jiang Wu,Shibo Chen,Ying Shen,Yih‐Fan Chen,Zhaoyin Wen
标识
DOI:10.1021/acsaem.4c02759
摘要
The development of high-performance all-solid-state ion batteries necessitates the design of solid-state electrolytes (SSEs) with high ionic conductivity and excellent electrochemical stability. Antiperovskite (AP) X3BA, as the electronically inverted derivative of perovskite ABX3, has garnered significant attention in the field of energy storage batteries due to its superior ionic conductivity. However, the relationship between their structure and ion diffusion behavior warrants further investigation. In this work, we constructed a machine learning (ML) framework for predicting and analyzing the ionic conductivity of the AP SSE, which encompasses data collection, feature selection, and training of various ML models. The optimal ML model demonstrated an exceptional classification performance, achieving an accuracy rate as high as 94%. Furthermore, we employed the ion substitution method to expand the sample size from 168 to 150,000 orders of magnitude. Based on this expanded data set, we examined and analyzed the mechanisms underlying high ionic conductivity from a big data perspective. The findings reveal a strong correlation between the ionic conductivity and atomic-scale characteristics at the A-site. The electronegativity, density, and ionic radius at the A-site are identified as the three most critical features influencing ionic conductivity. The interpretable ML model constructed in this study enables high-precision prediction of the ionic conductivity of AP materials, provides insightful design principles, and significantly accelerates the development and application of AP SSEs.
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