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Stable All-Solid-State Lithium Metal Batteries Enabled by Machine Learning Simulation Designed Halide Electrolytes.

Feng LiXiaobin ChengLei-Lei LuYi-Chen YinJin-Da LuoGongxun LuYu-Feng MengHongsheng MoTe TianJing-Tian YangWen WenZhi-Pan LiuGuo-Zhen ZhangCheng ShangHong-Bin Yao
Published in: Nano letters (2022)
Solid electrolytes (SEs) with superionic conductivity and interfacial stability are highly desirable for stable all-solid-state Li-metal batteries (ASSLMBs). Here, we employ neural network potential to simulate materials composed of Li, Zr/Hf, and Cl using stochastic surface walking method and identify two potential unique layered halide SEs, named Li 2 ZrCl 6 and Li 2 HfCl 6 , for stable ASSLMBs. The predicted halide SEs possess high Li + conductivity and outstanding compatibility with Li metal anodes. We synthesize these SEs and demonstrate their superior stability against Li metal anodes with a record performance of 4000 h of steady lithium plating/stripping. We further fabricate the prototype stable ASSLMBs using these halide SEs without any interfacial modifications, showing small internal cathode/SE resistance (19.48 Ω cm 2 ), high average Coulombic efficiency (∼99.48%), good rate capability (63 mAh g -1 at 1.5 C), and unprecedented cycling stability (87% capacity retention for 70 cycles at 0.5 C).
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