电化学
电解质
反应性(心理学)
X射线光电子能谱
钝化
金属
材料科学
动能
锂(药物)
化学工程
动力学
化学稳定性
化学
电极
纳米技术
物理化学
冶金
替代医学
病理
图层(电子)
量子力学
内分泌学
工程类
医学
物理
作者
Justin G. Connell,Till Fuchs,Hannah Hartmann,Thorben Krauskopf,Yisi Zhu,Joachim Sann,Regina García-Méndez,Jeff Sakamoto,Sanja Tepavcevic,Jürgen Janek
标识
DOI:10.1021/acs.chemmater.0c03869
摘要
Li7La3Zr2O12 (LLZO) garnet-based oxides are a promising class of solid electrolytes used as the separator in all-solid-state batteries (ASSBs). While LLZO is considered to have a wide electrochemical stability window, its intrinsic stability in contact with lithium metal is not sufficiently well understood, and there is still a debate on the key question of whether LLZO does or does not form passivation layers before and during cycling. Utilizing both in situ and operando X-ray photoelectron spectroscopy techniques, we reveal the presence of a kinetic barrier to the reduction of LLZO by Li metal, with the extent of oxygen-deficient interphase (ODI) formation depending sensitively on the energetics of Li metal arriving at the Li|LLZO interface. Despite the clear presence of a kinetic barrier to reduction, the electrochemical response of the Li|LLZO interface is unchanged by the presence of the ODI, indicating that ODI formation during electrochemical cycling does not hinder charge transfer across the Li|LLZO interface. Overall, these results reveal that the reactivity of LLZO with Li metal depends not only on the material properties of the adjoining phases (i.e., surface purity and active contact) and their resulting thermodynamic stability but also on the energy input at the interface and the resulting reaction kinetics. Furthermore, the presence of a kinetic barrier to reduction highlights the additional complexities governing the reactivity of solid-state interfaces in ASSBs and underscores the importance of operando characterization of interfacial stability to design more robust, high-performance protection strategies for solid electrolytes in contact with reactive electrodes.
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