Wang Ruihan, Zhong Yeshuang, Bi Leming, Yang Mingli, Xu Dingguo
MOE Key Laboratory of Green Chemistry and Technology, College of Chemistry, Sichuan University, Chengdu, Sichuan 610064, PR China.
Guangxi WiRUSH Co. Ltd., Nanning, Guangxi 530022, PR China.
ACS Appl Mater Interfaces. 2020 Nov 25;12(47):52797-52807. doi: 10.1021/acsami.0c16516. Epub 2020 Nov 11.
In recent years, machine learning (ML) methods have made significant progress, and ML models have been adopted in virtually all aspects of chemistry. In this study, based on the crystal graph convolutional neural networks algorithm, an end-to-end deep learning model was developed for predicting the methane adsorption properties of metal-organic frameworks (MOFs). High-throughput grand canonical Monte Carlo calculations were carried out on the computation-ready, experimental MOF database, which contains approximately 11 000 MOFs, to construct the data set. An area under the curve of 0.930 for the test set proved the reliability of the developed deep learning model. To assess the transferability of the model, we applied it to predict the methane adsorption volume for some randomly selected covalent organic frameworks and zeolitic imidazolate framework materials. The results indicated that the model could also be suitable for other porous materials. We also applied it to the hierarchical screening of a hypothetical MOFs database (∼330 000 MOFs). Four hypothetical MOFs were demonstrated to have the highest performance in methane adsorption. A calculated maximum working capacity of 145 cm/cm at 5-35 bar and 298 K indicated that the hypothetical MOF is close to the Department of Energy's 2015 target of 180 cm/cm. Further analyses on all screened out MOFs established correlations between some structural features with the working capacity. The successful incorporation of ML and hierarchical screening can accelerate the discovery of new materials not just for gas adsorption, but also other areas involving interactions in materials and molecules.
近年来,机器学习(ML)方法取得了重大进展,ML模型已在化学的几乎所有方面得到应用。在本研究中,基于晶体图卷积神经网络算法,开发了一种用于预测金属有机框架(MOF)甲烷吸附性能的端到端深度学习模型。对包含约11000种MOF的可用于计算的实验性MOF数据库进行了高通量巨正则蒙特卡罗计算,以构建数据集。测试集的曲线下面积为0.930,证明了所开发的深度学习模型的可靠性。为了评估该模型的可转移性,我们将其应用于预测一些随机选择的共价有机框架和沸石咪唑酯框架材料的甲烷吸附量。结果表明,该模型也适用于其他多孔材料。我们还将其应用于一个假设的MOF数据库(约330000种MOF)的分层筛选。四种假设的MOF被证明在甲烷吸附方面具有最高性能。在5 - 35巴和298K下计算得到的最大工作容量为145 cm³/cm³,表明该假设的MOF接近美国能源部2015年设定的180 cm³/cm³的目标。对所有筛选出的MOF进行的进一步分析建立了一些结构特征与工作容量之间的相关性。成功地将ML方法与分层筛选相结合,不仅可以加速用于气体吸附的新材料的发现,还能加速涉及材料与分子相互作用的其他领域的新材料发现。