2023
DOI: 10.1021/acs.jpcc.3c02908
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Discovery of Superionic Solid-State Electrolyte for Li-Ion Batteries via Machine Learning

Seungpyo Kang,
Minseon Kim,
Kyoungmin Min

Abstract: Li-ion solid-state electrolytes (Li-SSEs) hold promise to solve critical issues related to conventional Li-ion batteries (LIBs), such as the flammability of liquid electrolytes and dendrite growth. In this study, we develop a platform involving a high-throughput screening process and machine learning surrogate model for identifying superionic Li-SSEs among 19,480 Li-containing materials. Li-SSE candidates are selected based on the screening criteria, and their ionic conductivities are predicted. For the traini… Show more

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Cited by 6 publications
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