Giunta Giuliana, Campos-Villalobos Gerardo, Dijkstra Marjolein
Soft Condensed Matter, Debye Institute for Nanomaterials Science, Utrecht University, Princetonplein 5, 3584 CC Utrecht, The Netherlands.
ACS Nano. 2023 Dec 12;17(23):23391-23404. doi: 10.1021/acsnano.3c04162. Epub 2023 Nov 27.
Colloidal nanoparticles self-assemble into a variety of superstructures with distinctive optical, structural, and electronic properties. These nanoparticles are usually stabilized by a capping layer of organic ligands to prevent aggregation in the solvent. When the ligands are sufficiently long compared to the dimensions of the nanocrystal cores, the effective coarse-grained forces between pairs of nanoparticles are largely affected by the presence of neighboring particles. In order to efficiently investigate the self-assembly behavior of these complex colloidal systems, we propose a machine-learning approach to construct effective coarse-grained many-body interaction potentials. The multiscale methodology presented in this work constitutes a general bottom-up coarse-graining strategy where the coarse-grained forces acting on coarse-grained sites are extracted from measuring the vectorial mean forces on these sites in reference fine-grained simulations. These effective coarse-grained forces, i.e., gradients of the potential of mean force or of the free-energy surface, are represented by a simple linear model in terms of gradients of structural descriptors, which are scalar functions that are rotationally invariant. In this way, we also directly obtain the free-energy surface of the coarse-grained model as a function of all coarse-grained coordinates. We expect that this simple yet accurate coarse-graining framework for the many-body potential of mean force will enable the characterization, understanding, and prediction of the structure and phase behavior of relevant soft-matter systems by direct simulations. The key advantage of this method is its generality, which allows it to be applicable to a broad range of systems. To demonstrate the generality of our method, we also apply it to a colloid-polymer model system, where coarse-grained many-body interactions are pronounced.
胶体纳米粒子自组装成具有独特光学、结构和电子性质的各种超结构。这些纳米粒子通常由有机配体的包覆层稳定,以防止在溶剂中聚集。当配体与纳米晶核的尺寸相比足够长时,纳米粒子对之间的有效粗粒化力在很大程度上受到相邻粒子存在的影响。为了有效地研究这些复杂胶体系统的自组装行为,我们提出了一种机器学习方法来构建有效的粗粒化多体相互作用势。本文提出的多尺度方法构成了一种通用的自下而上的粗粒化策略,其中作用在粗粒化位点上的粗粒化力是通过在参考细粒化模拟中测量这些位点上的矢量平均力来提取的。这些有效的粗粒化力,即平均力势或自由能表面的梯度,由一个简单的线性模型根据结构描述符的梯度来表示,结构描述符是旋转不变的标量函数。通过这种方式,我们还直接获得了作为所有粗粒化坐标函数的粗粒化模型的自由能表面。我们期望这种用于平均力多体势的简单而准确的粗粒化框架能够通过直接模拟来表征、理解和预测相关软物质系统的结构和相行为。该方法的关键优势在于其通用性,这使其能够适用于广泛的系统。为了证明我们方法的通用性,我们还将其应用于一个胶体 - 聚合物模型系统,其中粗粒化多体相互作用非常显著。