2024
DOI: 10.1002/aenm.202400376
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Time‐Dependent Deep Learning Manufacturing Process Model for Battery Electrode Microstructure Prediction

Diego E. Galvez‐Aranda,
Tan Le Dinh,
Utkarsh Vijay
et al.

Abstract: The manufacturing process of Lithium‐ion battery electrodes directly affects the practical properties of the cells, such as their performance, durability, and safety. While computational physics‐based modeling has been proven as a very useful method to produce insights on the manufacturing properties interdependencies as well as the formation of electrode microstructures, their high computational costs prevent their direct utilization in electrode optimization loops. In this work, a novel time‐dependent deep l… Show more

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