TL;DR
This paper introduces a unified, flexible enhanced sampling method that leverages a new class of bias potentials and adapts existing schemes to efficiently sample complex systems across various thermodynamic ensembles.
Contribution
It presents a unifying framework for enhanced sampling methods, combining different approaches into a single versatile technique based on target probability distributions.
Findings
The method is applicable to multicanonical and multithermal-multibaric simulations.
It simplifies the sampling process with few external parameters.
It demonstrates effectiveness across multiple sampling strategies.
Abstract
The sampling problem lies at the heart of atomistic simulations and over the years many different enhanced sampling methods have been suggested towards its solution. These methods are often grouped into two broad families. On the one hand methods such as umbrella sampling and metadynamics that build a bias potential based on few order parameters or collective variables. On the other hand, tempering methods such as replica exchange that combine different thermodynamic ensembles in one single expanded ensemble. We instead adopt a unifying perspective, focusing on the target probability distribution sampled by the different methods. This allows us to introduce a new class of collective-variables-based bias potentials that can be used to sample any of the expanded ensembles normally sampled via replica exchange. We also provide a practical implementation, by properly adapting the iterative…
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