Journal article

Bridging the Gap: Electrode Microstructure and Interphase Characterization by Combining ToF-SIMS and Machine Learning


Authors listLombardo, Teo; Kern, Christine; Sann, Joachim; Rohnke, Marcus; Janek, Jürgen

Publication year2023

JournalAdvanced Materials Interfaces

Volume number10

Issue number36

ISSN2196-7350

Open access statusGold

DOI Linkhttps://doi.org/10.1002/admi.202300640

PublisherWiley


Abstract

This article presents a new analytical methodology to analyze large (hundreds of & mu;m) battery electrode microstructures by mapping the spatial distribution of the main phases (e.g., active material and carbon-binder domain) and degradation products (solid- or cathode-electrolyte interphase) formed during cycling. The methodology can be used for a better understanding of the relationships between electrode architecture and degradation, paving the way toward the analysis of interphases spatial distribution and their correlations to the electrode formulation, microstructure, and cycling conditions. This work is based on time-of-flight secondary ion mass spectrometry (ToF-SIMS), and focuses on analyzing large 2D electrode cross-sections at both the microstructure and single particle/agglomerate level. It also shows that this analysis can be expanded to 3D electrode microstructures when combining ToF-SIMS and devoted machine learning procedures, which can be of particular interest to the 3D electrochemical modeling community.




Citation Styles

Harvard Citation styleLombardo, T., Kern, C., Sann, J., Rohnke, M. and Janek, J. (2023) Bridging the Gap: Electrode Microstructure and Interphase Characterization by Combining ToF-SIMS and Machine Learning, Advanced Materials Interfaces, 10(36), Article 2300640. https://doi.org/10.1002/admi.202300640

APA Citation styleLombardo, T., Kern, C., Sann, J., Rohnke, M., & Janek, J. (2023). Bridging the Gap: Electrode Microstructure and Interphase Characterization by Combining ToF-SIMS and Machine Learning. Advanced Materials Interfaces. 10(36), Article 2300640. https://doi.org/10.1002/admi.202300640


Last updated on 2025-17-07 at 11:34