Abstract
Chemisorption, characterized by the strong and highly selective chemical bonding formation between a gas molecule and a solid sorbent, plays a critical role in various applications such as surface functionalization, carbon capture, and hydrogen storage. Sorption processes are typically modeled by means of Grand Canonical Monte Carlo (GCMC) simulation. However, GCMC methods are limited to physisorption processes described by molecular-mechanics, or, classical, interatomic potentials. Therefore, a computationally efficient GCMC method that accounts for chemisorption is needed. Here, we report hybrid interatomic potentials that are specifically designed for GCMC simulations of chemisorption. Namely, the sorbate-sorbate interaction is described by classical potentials and the sorbate-sorbent interaction is rendered by a machine-learning interatomic potential (MLIP) trained on simulation data extracted from quantum calculations. To prove the principal, we have applied the method to the simulation of \ce{CO2} chemisorption in the porous metal-organic framework Mg-MOF-74. By comparing the GCMC simulated \ce{CO2} adsorption isotherms and isobars, respectively, with the experimental data, we obtain better agreement compared to other classical and quantum-chemical simulation methods while keeping computational cost at a minimum. With the rise of transferable MLIP, we expect that the method could enable computationally efficient and highly accurate sorption studies in reticular materials.