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Reinforcement learning-guided long-timescale simulation of hydrogen transport in metals

Authors :
Tang, Hao
Li, Boning
Song, Yixuan
Liu, Mengren
Xu, Haowei
Wang, Guoqing
Chung, Heejung
Li, Ju
Publication Year :
2023

Abstract

Atomic diffusion in solids is an important process in various phenomena. However, atomistic simulations of diffusion processes are confronted with the timescale problem: the accessible simulation time is usually far shorter than that of experimental interests. In this work, we developed a long-timescale method using reinforcement learning that simulates diffusion processes. As a testbed, we simulate hydrogen diffusion in pure metals and a medium entropy alloy, CrCoNi, getting hydrogen diffusivity reasonably consistent with previous experiments. We also demonstrate that our method can accelerate the sampling of low-energy configurations compared to the Metropolis-Hastings algorithm using hydrogen migration to copper (111) surface sites as an example.

Details

Language :
English
Database :
OpenAIRE
Accession number :
edsair.doi.dedup.....2ccdb7323b3a5a270741a79568c81b02