电极
材料科学
石墨
电化学
锂(药物)
集电器
极化(电化学)
微观结构
化学工程
多尺度建模
复合材料
分析化学(期刊)
粒径
锂离子电池
粒子(生态学)
电化学动力学
扩散
参比电极
工作电极
磷酸铁锂
电镀(地质)
动力学
作者
H. X. Huang,Yang Li,Xinyu Liu,Zhifu Zhou,Wei‐Tao Wu,Lei Wei,Chengzhi Hu,Linsong Gao,Yubai Li,Yongchen Song,Yubai Li,Yongchen Song
标识
DOI:10.1002/advs.202524109
摘要
The lithium plating reaction in graphite electrodes acts as a root cause for the accelerated degradation and the internal short circuits in lithium-ion batteries. Here, an electrochemical model based on multi-scale microstructural images was established to identify lithium plating-stripping processes, thereby supporting the predictive outcomes of electrochemical monitoring techniques. Experiments revealed that the open-circuit voltage differential curve (dOCV/dt) led to ambiguous delineation of the safe state-of-charge (SOC) operating range. The established lithium plating-stripping model was used to compare with experimental results, revealing the dynamic evolution of electrode-scale kinetics and quantified the impact of lithium metal residue on electrode performance. Ex situ X-ray computed tomography (XCT) captured micrometer-resolution microstructural details of graphite electrodes and plated lithium, enabling further correlation of spatially heterogeneous lithium plating-stripping reactions with electrode microstructure. The sensitivity of lithium plating to electrode microstructure was examined at the particle scale, attributed to competition between electrode kinetic rates and active reaction areas. Theoretical mechanism analysis and experimental results from high-energy-density electrodes demonstrated that positioning small particles on the current collector side effectively mitigates solid-state diffusion polarization while confining side reactions to a limited area. The integration of experiments and multiscale modeling elucidates the relationship between lithium plating-stripping reactions and electrode structure, providing mechanistic insights for similar structural optimization designs.
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