2024 AIChE Annual Meeting
(169df) Efficiently Screening Metal-Organic Frameworks Via Molecular Simulation with Multi-Armed Bandit Algorithms
Authors
This work applies multi-armed bandit optimization (MABO) to leverage short, cheap, and noisy molecular simulations to screen a large set of MOFs while incurring the least computational cost. Each MOF is analogous to a slot machine; conducting a Monte Carlo molecular simulation is analogous to pulling an arm of a slot machine; and the noisy, estimated property of a MOF from a simulation is analogous to receiving a stochastic reward from a slot machine. MABO adaptively selects a sequence of MOFs for cheap, noisy simulations while learning from feedback and balancing exploration and exploitation in its decision-making. After each simulation, MABO uses the noisy estimate of this MOF's property to update a posterior distribution of that MOF's property. Then, MABO selects the next MOF for a simulation based on the posterior distributions of the property of all candidate MOFs. Its decision balances the yearning to select a MOF with (i) a high mean property (exploitation) and (ii) a high variance (i.e., uncertainty) in the property (exploration).