Dataset

Data for: Atomistic modeling of bulk and grain boundary diffusion in solid electrolyte Li6PS5Cl using machine-learning interatomic potentials

The data in this repository support the findings presented in the article "Atomistic modeling of bulk and grain boundary diffusion in solid electrolyte Li6PS5Cl using machine-learning interatomic potentials" by Ou et al. The repository contains the training sets, the fitted machine-learning interatomic potentials (MTPs), and the relaxed bulk and grain boundary structures. An automated script to perform the proposed quality-level-based active learning scheme is also provided.

Chemical Info

Data and Resources

Metadata Information

Field Value
DOI https://doi.org/10.18419/DARUS-4510
License URL
Source https://doi.org/10.18419/DARUS-4510
Version
Author Ou, Yongliang, Ikeda, Yuji, Scholz, Lena, Divinski, Sergiy, Fritzen, Felix, Grabowski, Blazej
Maintainer DaRUS
Language English
MetadataPublished
Related Molecule
Field Value
No additional information available for this Dataset.
Data-Source Molecule ID Data-Source
The data in this table is sourced from UniChem at EBI.