Rigorous Progress in Coarse-Graining

Author:

Noid W.G.1,Szukalo Ryan J.12,Kidder Katherine M.1,Lesniewski Maria C.1

Affiliation:

1. 1Department of Chemistry, Pennsylvania State University, University Park, Pennsylvania, USA; email: wnoid@chem.psu.edu

2. 2Current affiliation: Department of Chemistry, Princeton University, Princeton, New Jersey, USA

Abstract

Low-resolution coarse-grained (CG) models provide remarkable computational and conceptual advantages for simulating soft materials. In principle, bottom-up CG models can reproduce all structural and thermodynamic properties of atomically detailed models that can be observed at the resolution of the CG model. This review discusses recent progress in developing theory and computational methods for achieving this promise. We first briefly review variational approaches for parameterizing interaction potentials and their relationship to machine learning methods. We then discuss recent approaches for simultaneously improving both the transferability and thermodynamic properties of bottom-up models by rigorously addressing the density and temperature dependence of these potentials. We also briefly discuss exciting progress in modeling high-resolution observables with low-resolution CG models. More generally, we highlight the essential role of the bottom-up framework not only for fundamentally understanding the limitations of prior CG models but also for developing robust computational methods that resolve these limitations in practice.

Publisher

Annual Reviews

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