Understanding ionic transport in halide solid electrolytes (SEs) is essential for advancing next‐generation solid‐state batteries. This work demonstrates the effectiveness of fine‐tuning the Crystal Hamiltonian Graph Network universal machine learning interatomic potential to accurately predict total energies, relaxed geometries, and lithium‐ion dynamics in the ternary halide family LiYClBr. Starting from experimentally refined disordered structures of LiYCl and LiYBr, we present a strategy for generating ordered structural models through systematic enumeration and energy ranking, providing realistic structural models. These serve as initial configurations for an iterative fine‐tuning workflow that integrates molecular dynamics simulations and static density functional theory calculations to achieve near‐ab initio accuracy at four orders of magnitude lower computational cost. We further reveal the influence of composition (varied x) on the predicted phase stability and ionic conductivity in LiYClBr, demonstrating the robustness of our approach for modeling transport properties in complex SEs.
Building similarity graph...
Analyzing shared references across papers
Böhm et al. (Sun,) studied this question.
Loading...
Advanced Intelligent Systems
Centre National de la Recherche Scientifique
Université de Bordeaux
Institut Polytechnique de Bordeaux
Add This Paper to Your Research Feed
Any time a new paper drops it will be there.