Data-driven Coarse-grained Modeling of Non-equilibrium Systems
Shu Wang, Zhan Ma, Wenxiao Pan

TL;DR
This paper introduces a data-driven coarse-grained modeling approach for non-equilibrium systems using a non-stationary generalized Langevin equation, enabling accurate and efficient prediction of non-equilibrium dynamics across various observables.
Contribution
It develops a novel non-stationary GLE framework for non-equilibrium systems, incorporating a data-driven parameterization of the memory kernel and explicit non-stationary noise modeling.
Findings
Accurately predicts non-equilibrium dynamics using the nsGLE.
Reduces computational cost by embedding non-stationary processes.
Demonstrates applicability to various non-equilibrium observables.
Abstract
Modeling a high-dimensional Hamiltonian system in reduced dimensions with respect to coarse-grained (CG) variables can greatly reduce computational cost and enable efficient bottom-up prediction of main features of the system for many applications. However, it usually experiences significantly altered dynamics due to loss of degrees of freedom upon coarse-graining. To establish CG models that can faithfully preserve dynamics, previous efforts mainly focused on equilibrium systems. In contrast, various soft matter systems are known out of equilibrium. Therefore, the present work concerns non-equilibrium systems and enables accurate and efficient CG modeling that preserves non-equilibrium dynamics and is generally applicable to any non-equilibrium process and any observable of interest. To this end, the dynamic equation of a CG variable is built in the form of the non-stationary…
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Taxonomy
TopicsGaussian Processes and Bayesian Inference · Model Reduction and Neural Networks · Scientific Research and Discoveries
