粗粒化技术的严格进展

IF 11.7 1区 化学 Q1 CHEMISTRY, PHYSICAL Annual review of physical chemistry Pub Date : 2024-06-01 DOI:10.1146/annurev-physchem-062123-010821
W G Noid, Ryan J Szukalo, Katherine M Kidder, Maria C Lesniewski
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引用次数: 0

摘要

低分辨率粗粒度(CG)模型为模拟软材料提供了显著的计算和概念优势。原则上,自下而上的粗粒度模型可以再现原子细节模型的所有结构和热力学性质,而这些性质在粗粒度模型的分辨率下是可以观察到的。本综述讨论了为实现这一目标而开发理论和计算方法的最新进展。我们首先简要回顾了参数化相互作用势的变分方法及其与机器学习方法的关系。然后,我们讨论通过严格处理这些相互作用势的密度和温度依赖性,同时改善自下而上模型的可转移性和热力学特性的最新方法。我们还简要讨论了用低分辨率 CG 模型建模高分辨率观测指标方面令人振奋的进展。更广泛地说,我们强调了自下而上框架的重要作用,它不仅有助于从根本上理解先前 CG 模型的局限性,还有助于开发稳健的计算方法,在实践中解决这些局限性。
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Rigorous Progress in Coarse-Graining.

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.

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来源期刊
CiteScore
28.00
自引率
0.00%
发文量
21
期刊介绍: The Annual Review of Physical Chemistry has been published since 1950 and is a comprehensive resource for significant advancements in the field. It encompasses various sub-disciplines such as biophysical chemistry, chemical kinetics, colloids, electrochemistry, geochemistry and cosmochemistry, chemistry of the atmosphere and climate, laser chemistry and ultrafast processes, the liquid state, magnetic resonance, physical organic chemistry, polymers and macromolecules, and others.
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