Have You Tried Restarting It? Stochastic Resetting for Enhanced Sampling of Molecular Dynamics
One of the biggest challenges in molecular simulations is observing processes that occur on timescales longer than one microsecond. Molecular dynamics (MD) simulations offer deep insights into chemical and physical phenomena but are limited by their atomic temporal resolution. Enhanced sampling algorithms like Metadynamics bias the system in the direction of a chosen collective variable that ideally describes the slowest modes of the process. However, identifying collective variables in condensed phases is difficult, and the bias distorts the system's natural dynamics, making it hard to infer kinetic observables. I will present an alternative approach using stochastic resetting. It requires no prior knowledge, minimally perturbs the natural dynamics of the system, and provides a framework for inferring the system's unbiased kinetics. Metadynamics and resetting can be combined synergistically for conformational sampling of biomolecules, leading to higher acceleration than either approach separately and a more accurate prediction of unbiased mean first-passage times. I will also show how to design adaptive resetting strategies that further accelerate the sampling and are ideal for inferring another important kinetic observable called the direct transit time. In that case, Metadynamics with informed resetting leads to two to three orders of magnitude speedups over unbiased simulations with almost no loss of accuracy.
Last Updated Date : 08/12/2024