Learning Classical Density Functionals for Ionic Fluids

IF 9 1区 物理与天体物理 Q1 PHYSICS, MULTIDISCIPLINARY Physical review letters Pub Date : 2025-04-11 DOI:10.1103/physrevlett.134.148001
Anna T. Bui, Stephen J. Cox
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Abstract

Accurate and efficient theoretical techniques for describing ionic fluids are highly desirable for many applications across the physical, biological, and materials sciences. With a rigorous statistical mechanical foundation, classical density functional theory (cDFT) is an appealing approach, but the competition between strong Coulombic interactions and steric repulsion limits the accuracy of current approximate functionals. Here, we extend a recently presented machine learning (ML) approach [Sammüller , ] designed for systems with short-ranged interactions to ionic fluids. By adopting ideas from local molecular field theory, the framework we present amounts to using neural networks to learn the local relationship between the one-body direct correlation functions and inhomogeneous density profiles for a “mimic” short-ranged system, with effects of long-ranged interactions accounted for in a mean-field, yet well-controlled, manner. By comparing to results from molecular simulations, we show that our approach accurately describes the structure and thermodynamics of prototypical models for electrolyte solutions and ionic liquids, including size-asymmetric and multivalent systems. The framework we present acts as an important step toward extending ML approaches for cDFT to systems with accurate interatomic potentials. Published by the American Physical Society 2025
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学习离子流体的经典密度泛函
对于物理、生物和材料科学领域的许多应用而言,精确而高效的离子液体描述理论技术是非常理想的。经典密度泛函理论(cDFT)具有严谨的统计力学基础,是一种极具吸引力的方法,但强库仑相互作用和立体斥力之间的竞争限制了当前近似函数的准确性。在此,我们将最近提出的一种机器学习(ML)方法 [Sammüller , ]扩展到离子液体中,该方法专为具有短程相互作用的系统而设计。通过采用局部分子场理论的思想,我们提出的框架相当于使用神经网络来学习 "模拟 "短程系统的单体直接相关函数和非均质密度曲线之间的局部关系,并以均值场但控制良好的方式考虑长程相互作用的影响。通过与分子模拟结果的比较,我们表明我们的方法准确地描述了电解质溶液和离子液体原型模型的结构和热力学,包括尺寸不对称和多价系统。我们提出的框架是将 cDFT 的 ML 方法扩展到具有精确原子间势的系统的重要一步。 美国物理学会出版 2025
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来源期刊
Physical review letters
Physical review letters 物理-物理:综合
CiteScore
16.50
自引率
7.00%
发文量
2673
审稿时长
2.2 months
期刊介绍: Physical review letters(PRL)covers the full range of applied, fundamental, and interdisciplinary physics research topics: General physics, including statistical and quantum mechanics and quantum information Gravitation, astrophysics, and cosmology Elementary particles and fields Nuclear physics Atomic, molecular, and optical physics Nonlinear dynamics, fluid dynamics, and classical optics Plasma and beam physics Condensed matter and materials physics Polymers, soft matter, biological, climate and interdisciplinary physics, including networks
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