固态
价(化学)
吞吐量
高通量筛选
快离子导体
材料科学
价键理论
电解质
化学
计算机科学
纳米技术
物理化学
有机化学
电极
分子
电信
无线
分子轨道
生物化学
作者
Stephen Xie,Shreyas Honrao,John W. Lawson
标识
DOI:10.1021/acs.chemmater.3c02841
摘要
Li-based solid-state electrolyte materials enable safer, all-solid-state batteries, but the computational search for candidates with favorable stability and high Li-ion conductivity is challenging due to the size of the search space and the cost of evaluating transport properties with ab initio methods. We present a high-throughput screening approach for identifying promising materials using a combination of bond-valence methods and graph neural networks. An ablation study involving geometric and bond-valence quantities reveals their relative importance in the training of graph neural networks, providing insight for future modeling of ionic conductivity in Li SSE. We identify 329 candidates with good stability and ionic conductivity, including 28 stable against Li metal. Furthermore, we combine the ML-accelerated screening procedure with an isovalent substitution scheme to generate and screen additional candidates beyond existing databases, identifying an additional 239 candidate materials for battery applications.
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