Oh Changhwan, Nandy Aditya, Yue Shuwen, Kulik Heather J
Department of Chemical Engineering, Massachusetts Institute of Technology, Cambridge, Massachusetts 02139, United States.
Department of Materials Science and Engineering, Massachusetts Institute of Technology, Cambridge, Massachusetts 02139, United States.
ACS Appl Mater Interfaces. 2024 Oct 4. doi: 10.1021/acsami.4c13250.
Metal-organic frameworks (MOFs) have been widely studied for their ability to capture and store greenhouse gases. However, most computational discovery efforts study hypothetical MOFs without consideration of their stability, limiting the practical application of novel materials. We overcome this limitation by screening hypothetical ultrastable MOFs that have predicted high thermal and activation stability, as judged by machine learning (ML) models trained on experimental measures of stability. We enhance this set by computing the bulk modulus as a measure of mechanical stability and filter 1102 mechanically robust hypothetical MOFs from a database of ultrastable MOFs (USMOF DB). Grand Canonical Monte Carlo simulations are then employed to predict the gas adsorption properties of these hypothetical MOFs, alongside a database of experimental MOFs. We identify privileged building blocks that lead MOFs in USMOF DB to show exceptional working capacities compared to the experimental MOFs. We interpret these differences by training ML models on CO and CH adsorption in these databases, showing how poor model transferability between data sets indicates that novel design rules can be derived from USMOF DB that would not have been gathered through assessment of structurally characterized MOFs. We identify geometric features and node chemistry that will enable the rational design of MOFs with enhanced gas adsorption properties in synthetically realizable MOFs.
金属有机框架材料(MOFs)因其捕获和储存温室气体的能力而受到广泛研究。然而,大多数计算发现工作研究的是假设的MOFs,而没有考虑它们的稳定性,这限制了新型材料的实际应用。我们通过筛选假设的超稳定MOFs克服了这一限制,这些MOFs根据基于稳定性实验测量训练的机器学习(ML)模型判断,具有预测的高热稳定性和活化稳定性。我们通过计算体模量作为机械稳定性的度量来增强这一组,并从超稳定MOF数据库(USMOF DB)中筛选出1102个机械性能强大的假设MOFs。然后采用巨正则蒙特卡罗模拟来预测这些假设MOFs以及实验性MOFs数据库的气体吸附特性。我们确定了一些特殊的结构单元,这些结构单元使USMOF DB中的MOFs与实验性MOFs相比具有出色的工作容量。我们通过在这些数据库中对CO和CH吸附训练ML模型来解释这些差异,表明数据集之间模型转移能力差表明可以从USMOF DB中得出新的设计规则,而这些规则是通过评估结构表征的MOFs无法获得的。我们确定了几何特征和节点化学性质,这将有助于在可合成实现的MOFs中合理设计具有增强气体吸附性能的MOFs。