微观结构
材料科学
表征(材料科学)
锂(药物)
电化学
锂离子电池
离子
电极
纳米技术
电池(电)
生物系统
复合材料
热力学
生物
物理
内分泌学
物理化学
功率(物理)
化学
医学
量子力学
作者
Hongyi Xu,Juner Zhu,Donal P. Finegan,Hongbo Zhao,Xuekun Lu,Wei Li,Nathaniel Hoffman,Antonio Bertei,Paul R. Shearing,Martin Z. Bazant
标识
DOI:10.1002/aenm.202003908
摘要
Abstract Electrochemical and mechanical properties of lithium‐ion battery materials are heavily dependent on their 3D microstructure characteristics. A quantitative understanding of the role played by stochastic microstructures is critical for the prediction of material properties and for guiding synthesis processes. Furthermore, tailoring microstructure morphology is also a viable way of achieving optimal electrochemical and mechanical performances of lithium‐ion cells. To facilitate the establishment of microstructure‐resolved modeling and design methods, a review covering spatially and temporally resolved imaging of microstructure and electrochemical phenomena, microstructure statistical characterization and stochastic reconstruction, microstructure‐resolved modeling for property prediction, and machine learning for microstructure design is presented here. The perspectives on the unresolved challenges and opportunities in applying experimental data, modeling, and machine learning to improve the understanding of materials and identify paths toward enhanced performance of lithium‐ion cells are presented.
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