分子动力学
密度泛函理论
力场(虚构)
领域(数学)
蒙特卡罗方法
计算机科学
钥匙(锁)
金属有机骨架
统计物理学
材料科学
理论(学习稳定性)
多尺度建模
纳米技术
生化工程
计算化学
机器学习
人工智能
物理
化学
物理化学
纯数学
吸附
工程类
统计
计算机安全
数学
作者
Filip Formalik,Kaihang Shi,Faramarz Joodaki,Xijun Wang,Randall Q. Snurr
标识
DOI:10.1002/adfm.202308130
摘要
Abstract This review spotlights the role of atomic‐level modeling in research on metal‐organic frameworks (MOFs), especially the key methodologies of density functional theory (DFT), Monte Carlo (MC) simulations, and molecular dynamics (MD) simulations. The discussion focuses on how periodic and cluster‐based DFT calculations can provide novel insights into MOF properties, with a focus on predicting structural transformations, understanding thermodynamic properties and catalysis, and providing information or properties that are fed into classical simulations such as force field parameters or partial charges. Classical simulation methods, highlighting force field selection, databases of MOFs for high‐throughput screening, and the synergistic nature of MC and MD simulations, are described. By predicting equilibrium thermodynamic and dynamic properties, these methods offer a wide perspective on MOF behavior and mechanisms. Additionally, the incorporation of machine learning (ML) techniques into quantum and classical simulations is discussed. These methods can enhance accuracy, expedite simulation setup, reduce computational costs, as well as predict key parameters, optimize geometries, and estimate MOF stability. By charting the growth and promise of computational research in the MOF field, the aim is to provide insights and recommendations to facilitate the incorporation of computational modeling more broadly into MOF research.
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