High-Throughput Screening of Li Solid-State Electrolytes With Bond Valence Methods and Graph Neural NetworksLi-based solid-state electrolyte (Li-SSE) materials enable safer, all-solid-state batteries but the computational search for candidates with favorable stability and 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 Li-SSE materials using a combination of bond-valence methods and graph neural networks. We demonstrate the screening approach with a dataset containing tens of thousands of Li-containing compounds. Furthermore, we combine the machine-learning screening procedure with an isovalent substitution scheme to generate and screen additional Li SSE candidates beyond existing databases. Finally, we discuss relative importances of geometric and bond-valence quantities in the training of graph neural networks, providing insight for future modeling of ionic conductivity in Li-SSE materials.
Document ID
20230010043
Acquisition Source
Ames Research Center
Document Type
Presentation
Authors
Stephen R Xie (Wyle (United States) El Segundo, California, United States)
Shreyas J Honrao (Wyle (United States) El Segundo, California, United States)
John W Lawson (Ames Research Center Mountain View, California, United States)