材料科学
离子电导率
三元运算
锂(药物)
快离子导体
电导率
电解质
离子键合
硫化物
离子
化学工程
物理化学
化学
冶金
医学
电极
工程类
内分泌学
有机化学
计算机科学
程序设计语言
作者
R. Zhou,Kun Luo,Steve W. Martin,Qi An
标识
DOI:10.1021/acsami.4c00618
摘要
Sulfide-based solid electrolytes (SEs) are important for advancing all-solid-state batteries (ASSBs), primarily due to their high ionic conductivities and robust mechanical stability. Glassy SEs (GSEs) comprising mixed Si and P glass formers are particularly promising for their synthesis process and their ability to prevent lithium dendrite growth. However, to date, the complexity of their glassy structures hinders a complete understanding of the relationships between their structures and properties. This study introduces a new machine learning force field (ML-FF) tailored for lithium sulfide-based GSEs, enabling the exploration of their structural characteristics, mechanical properties, and lithium ionic conductivities. Using molecular dynamic (MD) simulations with this ML-FF, we explore the glass structures in varying compositions, including binary Li
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