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Deep potential generation scheme and simulation protocol for the Li10GeP2S12-type superionic conductors

Jianxing Huang, Linfeng Zhang, Han Wang, Jinbao Zhao, Jun Cheng, Weinan E

2021The Journal of Chemical Physics113 citationsDOIOpen Access PDF

Abstract

Solid-state electrolyte materials with superior lithium ionic conductivities are vital to the next-generation Li-ion batteries. Molecular dynamics could provide atomic scale information to understand the diffusion process of Li-ion in these superionic conductor materials. Here, we implement the deep potential generator to set up an efficient protocol to automatically generate interatomic potentials for Li10GeP2S12-type solid-state electrolyte materials (Li10GeP2S12, Li10SiP2S12, and Li10SnP2S12). The reliability and accuracy of the fast interatomic potentials are validated. With the potentials, we extend the simulation of the diffusion process to a wide temperature range (300 K–1000 K) and systems with large size (∼1000 atoms). Important technical aspects such as the statistical error and size effect are carefully investigated, and benchmark tests including the effect of density functional, thermal expansion, and configurational disorder are performed. The computed data that consider these factors agree well with the experimental results, and we find that the three structures show different behaviors with respect to configurational disorder. Our work paves the way for further research on computation screening of solid-state electrolyte materials.

Topics & Concepts

ConductorStatistical physicsComputationDiffusionElectrolyteComputer scienceBenchmark (surveying)Ionic bondingReliability (semiconductor)Work (physics)Monte Carlo methodRange (aeronautics)Molecular dynamicsIonic conductivityFast ion conductorLithium (medication)Electrical conductorMaterials scienceProcess (computing)Protocol (science)ThermalSet (abstract data type)Scale (ratio)AlgorithmExperimental dataComputer simulationPosition (finance)Generator (circuit theory)Charge (physics)GRASPRepresentation (politics)ChemistryInteratomic potentialScheme (mathematics)Field (mathematics)Atomic unitsAdvanced Battery Materials and TechnologiesMachine Learning in Materials ScienceAdvancements in Battery Materials
Deep potential generation scheme and simulation protocol for the Li10GeP2S12-type superionic conductors | Litcius