Communications Materials (Jan 2025)

Generating multi-scale Li-ion battery cathode particles with radial grain architectures using stereological generative adversarial networks

  • Lukas Fuchs,
  • Orkun Furat,
  • Donal P. Finegan,
  • Jeffery Allen,
  • Francois L. E. Usseglio-Viretta,
  • Bertan Ozdogru,
  • Peter J. Weddle,
  • Kandler Smith,
  • Volker Schmidt

DOI
https://doi.org/10.1038/s43246-024-00728-5
Journal volume & issue
Vol. 6, no. 1
pp. 1 – 13

Abstract

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Abstract Understanding structure-property relationships of Li-ion battery cathodes is crucial for optimizing rate-performance and cycle-life resilience. However, correlating the morphology of cathode particles, such as in LiNi0.8Mn0.1Co0.1O2 (NMC811), and their inner grain architecture with electrode performance is challenging, particularly, due to the significant length-scale difference between grain and particle sizes. Experimentally, it is not feasible to image such a high number of particles with full granular detail. A second challenge is that sufficiently high-resolution 3D imaging techniques remain expensive and are sparsely available at research institutions. Here, we present a stereological generative adversarial network-based model fitting approach to tackle this, that generates representative 3D information from 2D data, enabling characterization of materials in 3D using cost-effective 2D data. Once calibrated, this multi-scale model can rapidly generate virtual cathode particles that are statistically similar to experimental data, and thus is suitable for virtual characterization and materials testing through numerical simulations. A large dataset of simulated particles with inner grain architecture has been made publicly available.