阴极
电解质
电化学
氧化还原
材料科学
化学工程
电池(电)
化学物理
密度泛函理论
锂(药物)
电极
纳米技术
化学
无机化学
物理化学
计算化学
热力学
医学
功率(物理)
物理
工程类
内分泌学
作者
Zhili Liang,Abdulaziz Baubaid,Mariusz Radtke,Maximilian Mellin,Clément Maheu,Sandipan Maiti,Hadar Sclar,Igor Píš,Silvia Nappini,Elena Magnano,Federica Bondino,Robert Winkler,René Hausbrand,Christian Heß,Lambert Alff,Boris Markovsky,Doron Aurbach,W. Jaegermann,Gennady Cherkashinin
标识
DOI:10.1002/advs.202413054
摘要
Abstract The design of cathode/electrolyte interfaces in high‐energy density Li‐ion batteries is critical to protect the surface against undesirable oxygen release from the cathodes when batteries are charged to high voltage. However, the involvement of the engineered interface in the cationic and anionic redox reactions associated with (de‐)lithiation is often ignored, mostly due to the difficulty to separate these processes from chemical/catalytic reactions at the cathode/electrolyte interface. Here, a new electron energy band diagrams concept is developed that includes the examination of the electrochemical‐ and ionization‐ potentials evolution upon batteries cycling. The approach enables to forecast the intrinsic stability of the cathodes and discriminate the reaction pathways associated with interfacial electronic charge‐transfer mechanisms. Specifically, light is shed on the evolution of cationic and anionic redox in high‐energy density lithium‐rich 0.33Li 2 MnO 3 ·0.67LiNi 0.4 Co 0.2 Mn 0.4 O 2 (HE‐NCM) cathodes, particularly those that undergo surface modification through SO 2 and NH 3 double‐gas treatment to suppress the structural degradation. The chemical composition and energy distribution of the occupied and unoccupied electronic states at the different charging/discharging states are quantitatively estimated by using advanced spectroscopy techniques, including operando Raman spectroscopy. The concept is successfully demonstrated in designing artificial interfaces for high‐voltage olivine structure cathodes enabling stable battery operation up to 5.1 V versus Li + /Li.
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