Soft Condensed Matter, Debye Institute for Nanomaterial Science, Department of Physics, Utrecht University, Utrecht, The Netherlands.
Departments of Materials Science and Engineering, Engineering Sciences & Applied Mathematics, Chemistry and Physics & Astronomy, Northwestern University, Evanston, IL, USA.
Nat Mater. 2021 Jun;20(6):762-773. doi: 10.1038/s41563-021-01014-2. Epub 2021 May 27.
An overwhelming diversity of colloidal building blocks with distinct sizes, materials and tunable interaction potentials are now available for colloidal self-assembly. The application space for materials composed of these building blocks is vast. To make progress in the rational design of new self-assembled materials, it is desirable to guide the experimental synthesis efforts by computational modelling. Here, we discuss computer simulation methods and strategies used for the design of soft materials created through bottom-up self-assembly of colloids and nanoparticles. We describe simulation techniques for investigating the self-assembly behaviour of colloidal suspensions, including crystal structure prediction methods, phase diagram calculations and enhanced sampling techniques, as well as their limitations. We also discuss the recent surge of interest in machine learning and reverse-engineering methods. Although their implementation in the colloidal realm is still in its infancy, we anticipate that these data-science tools offer new paradigms in understanding, predicting and (inverse) design of novel colloidal materials.
现在有大量具有不同尺寸、材料和可调相互作用势的胶体构建块可供胶体自组装使用。由这些构建块组成的材料的应用空间非常广阔。为了在新型自组装材料的合理设计方面取得进展,理想情况下可以通过计算建模来指导实验合成工作。在这里,我们讨论了用于设计通过胶体和纳米颗粒自下而上组装而成的软材料的计算机模拟方法和策略。我们描述了用于研究胶体悬浮液自组装行为的模拟技术,包括晶体结构预测方法、相图计算和增强采样技术,以及它们的局限性。我们还讨论了机器学习和反向工程方法最近的兴起。尽管它们在胶体领域的实施仍处于起步阶段,但我们预计这些数据科学工具将为理解、预测和(反)设计新型胶体材料提供新的范例。