Reinforcement Learning-guided Long-timescale Simulation of Hydrogen Transport in Metals

Diffusion in alloys is an important class of atomic processes. However, atomistic simulations of diffusion in chemically complex solids are confronted with the timescale problem: the accessible simulation time is usually far shorter than that of experimental interest.
In this work, long-timescale simulation methods were developed using reinforcement learning (RL) that extends simulation capability to match the duration of experimental interest. Two special limits, RL transition kinetics simulator (TKS) and RL low-energy states sampler (LSS), were implemented and explained in detail, while the meaning of general RL was also discussed.
As a testbed, hydrogen diffusivity is computed using RL TKS in pure metals and a medium entropy alloy, CrCoNi, and compared with experiments. The algorithm can produce counter-intuitive hydrogen-vacancy cooperative motion. It was also demonstrated that RL LSS can accelerate the sampling of low-energy configurations compared to the Metropolis–Hastingsalgorithm, using hydrogen migration to copper (111) surface as an example.