npj Computational Materials (Dec 2024)

The ab initio non-crystalline structure database: empowering machine learning to decode diffusivity

  • Hui Zheng,
  • Eric Sivonxay,
  • Rasmus Christensen,
  • Max Gallant,
  • Ziyao Luo,
  • Matthew McDermott,
  • Patrick Huck,
  • Morten M. Smedskjær,
  • Kristin A. Persson

DOI
https://doi.org/10.1038/s41524-024-01469-2
Journal volume & issue
Vol. 10, no. 1
pp. 1 – 11

Abstract

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Abstract Non-crystalline materials exhibit unique properties that make them suitable for various applications in science and technology, ranging from optical and electronic devices and solid-state batteries to protective coatings. However, data-driven exploration and design of non-crystalline materials is hampered by the absence of a comprehensive database covering a broad chemical space. In this work, we present the largest computed non-crystalline structure database to date, generated from systematic and accurate ab initio molecular dynamics (AIMD) calculations. We also show how the database can be used in simple machine-learning models to connect properties to composition and structure, here specifically targeting ionic conductivity. These models predict the Li-ion diffusivity with speed and accuracy, offering a cost-effective alternative to expensive density functional theory (DFT) calculations. Furthermore, the process of computational quenching non-crystalline structures provides a unique sampling of out-of-equilibrium structures, energies, and force landscape, and we anticipate that the corresponding trajectories will inform future work in universal machine learning potentials, impacting design beyond that of non-crystalline materials. In addition, combining diffusion trajectories from our dataset with models that predict liquidus viscosity and melting temperature could be utilized to develop models for predicting glass-forming ability.