框架材料中的主客交互:来自建模的洞察

IF 6.1 Q2 CHEMISTRY, PHYSICAL
Michelle Ernst, Jack D. Evans, Ganna Gryn'ova
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引用次数: 0

摘要

金属有机和共价有机框架材料的性能在广受欢迎的应用中——气体和分子的捕获、储存和输送,以及它们混合物的分离——在很大程度上取决于这些材料孔隙内建立的主客体相互作用。计算模型提供了关于这些主客体复合物结构的信息,以及在通常无法从实验中获得的细节和精度水平上存在的相互作用的强度和性质。在这篇综述中,我们总结了从分子动力学和蒙特卡罗方法到从头算方法和能量、密度和波函数划分方案的关键模拟技术。我们提供了它们在分析和设计有机框架主机中的应用的说明性文献示例。我们还描述了对数千种现有和假设的金属有机框架(mof)和共价有机框架(COFs)进行高通量筛选的现代方法,以及用于预测其性质和性能的新兴机器学习技术。最后,我们讨论了在实现高性能MOF和COF吸附剂和催化剂的计算驱动设计和可靠预测的道路上的关键方法挑战,并提出了在这个令人兴奋的计算材料科学领域可能的解决方案和未来的方向。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Host–guest interactions in framework materials: Insight from modeling
The performance of metal–organic and covalent organic framework materials in sought-after applications—capture, storage, and delivery of gases and molecules, and separation of their mixtures—heavily depends on the host–guest interactions established inside the pores of these materials. Computational modeling provides information about the structures of these host–guest complexes and the strength and nature of the interactions present at a level of detail and precision that is often unobtainable from experiment. In this Review, we summarize the key simulation techniques spanning from molecular dynamics and Monte Carlo methods to correlate ab initio approaches and energy, density, and wavefunction partitioning schemes. We provide illustrative literature examples of their uses in analyzing and designing organic framework hosts. We also describe modern approaches to the high-throughput screening of thousands of existing and hypothetical metal–organic frameworks (MOFs) and covalent organic frameworks (COFs) and emerging machine learning techniques for predicting their properties and performances. Finally, we discuss the key methodological challenges on the path toward computation-driven design and reliable prediction of high-performing MOF and COF adsorbents and catalysts and suggest possible solutions and future directions in this exciting field of computational materials science.
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