聚合物电解质
导电体
分子动力学
电解质
锂(药物)
导电聚合物
聚合物
材料科学
快离子导体
纳米技术
粒度
分子
离子
化学物理
计算机科学
化学
复合材料
离子电导率
电极
物理化学
有机化学
计算化学
内分泌学
操作系统
医学
作者
Yanming Wang,Tian Xie,Arthur France‐Lanord,Arthur Berkley,Jeremiah A. Johnson,Yang Shao‐Horn,Jeffrey C. Grossman
标识
DOI:10.1021/acs.chemmater.9b04830
摘要
Solid polymer electrolytes (SPEs) are considered promising building blocks of next-generation lithium-ion batteries due to their advantages in safety, cost, and flexibility. However, current SPEs suffer from a low ionic conductivity, motivating the development of novel highly conductive SPE materials. Here we propose a new SPE design approach that integrates coarse-grained molecular dynamics (CGMD) with machine learning. A continuous high-dimensional design space, composed of physically interpretable universal descriptors, was constructed by the coarse graining of chemical species. A Bayesian optimization (BO) algorithm was then employed to efficiently explore this space via autonomous CGMD simulations. Adopting this CGMD-BO approach, we obtained comprehensive descriptions of the relationships between the lithium conductivity and intrinsic material properties at the molecular level, such as the molecule size and nonbonding interaction strength, to provide guidance on directions to improve upon the components of the best-known electrolytes, including anion, secondary site, and backbone chain.
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