论文标题
统一的方法来增强抽样
A Unified Approach to Enhanced Sampling
论文作者
论文摘要
抽样问题是原子模拟的核心,多年来,已经提出了许多不同增强的采样方法。这些方法通常分为两个广泛的家庭。一方面,基于少数订单参数或集体变量,诸如伞采样和元动力学等方法。另一方面,在一个单个扩展的合奏中结合了不同热力学合奏之类的回火方法,例如复制交换。相反,我们采用了统一的观点,重点是通过不同方法采样的目标概率分布。这使我们能够引入一类新的基于基于变量的偏差电位,该电位可用于采样通常通过副本交换采样的任何扩展的合奏。我们还通过正确调整最近开发的即时概率增强采样方法的迭代方案[Invernizzi和Parrinello,J。Phys。化学Lett。 11.7(2020)],最初是用于元动力学样本的引入的。所得的方法非常笼统,可用于实现不同类型的增强采样。它也是可靠且易于使用的,因为它仅显示少量且强大的外部参数,并且具有直接的重新释放方案。此外,它可以与任何数量的并行复制品一起使用。我们展示了我们的方法与多义和多种体性模拟,热力学整合,伞采样及其组合的应用程序的多功能性。
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 scheme of the recently developed on-the-fly probability enhanced sampling method [Invernizzi and Parrinello, J. Phys. Chem. Lett. 11.7 (2020)], which was originally introduced for metadynamics-like sampling. The resulting method is very general and can be used to achieve different types of enhanced sampling. It is also reliable and simple to use, since it presents only few and robust external parameters and has a straightforward reweighting scheme. Furthermore, it can be used with any number of parallel replicas. We show the versatility of our approach with applications to multicanonical and multithermal-multibaric simulations, thermodynamic integration, umbrella sampling, and combinations thereof.