Dynamical Properties of Coarse-Grained Linear SDEs

Thomas Hudson, Xingjie Helen Li
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Abstract

Multiscale Modeling &Simulation, Volume 22, Issue 1, Page 406-435, March 2024.
Abstract. Coarse-graining or model reduction is a term describing a range of approaches used to extend the timescale of molecular simulations by reducing the number of degrees of freedom. In the context of molecular simulation, standard coarse-graining approaches approximate the potential of mean force and use this to drive an effective Markovian model. To gain insight into this process, the simple case of a quadratic energy is studied in an overdamped setting. A hierarchy of reduced models is derived and analyzed, and the merits of these different coarse-graining approaches are discussed. In particular, while standard recipes for model reduction accurately capture static equilibrium statistics, it is shown that dynamical statistics, such as the mean-squared displacement, display systematic error, even when a system exhibits large timescale separation. In the linear setting studied, it is demonstrated both analytically and numerically that such models can be augmented in a simple way to better capture dynamical statistics.
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粗粒度线性 SDE 的动力学特性
多尺度建模与仿真》,第 22 卷第 1 期,第 406-435 页,2024 年 3 月。 摘要。粗粒化或模型缩减是一个术语,描述了一系列通过减少自由度数量来延长分子模拟时间尺度的方法。在分子模拟中,标准的粗粒化方法是近似平均力势,并以此驱动有效的马尔可夫模型。为了深入了解这一过程,我们在过阻尼设置中研究了二次能量的简单情况。得出并分析了简化模型的层次结构,并讨论了这些不同粗粒化方法的优点。特别是,虽然标准的模型还原方法能准确捕捉静态平衡统计量,但研究表明,动态统计量(如均方位移)显示出系统误差,即使系统表现出较大的时间尺度分离也是如此。在所研究的线性环境中,分析和数值都证明,可以通过简单的方法增强这些模型,从而更好地捕捉动态统计数据。
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