Karsakov Grigory V, Shirobokov Vladimir P, Kulakova Alena, Milichko Valentin A
School of Physics and Engineering, ITMO University, St. Petersburg 197101, Russia.
Institut Jean Lamour, Université de Lorraine, Centre National de la Recherche Scientifique (CNRS), F-54000 Nancy, France.
J Phys Chem Lett. 2024 Mar 21;15(11):3089-3095. doi: 10.1021/acs.jpclett.3c03639. Epub 2024 Mar 12.
Metal-organic frameworks (MOFs) possess a virtually unlimited number of potential structures. Although the latter enables an efficient route to control the structure-related functional properties of MOFs, it still complicates the prediction and searching for an optimal structure for specific application. Next to prediction of the MOFs for gas sorption/separation and catalysis via machine learning (ML), we report on ML to find MOFs demonstrating a phase transition (PT). On the basis of an available QMOF database (7463 frameworks), we create and train the autoencoder followed by training the classifier of MOFs from a unique database with experimentally confirmed PT. This makes it possible to identify MOFs with a high potential for PT and evaluate the most likely stimulus for it (guest molecules or temperature/pressure). The formed list of available MOFs for PT allows us to discuss their structural features and opens an opportunity to search for phase change MOFs for diverse physical/chemical application.
金属有机框架(MOFs)具有几乎无限数量的潜在结构。尽管这为控制MOFs与结构相关的功能特性提供了一条有效途径,但它仍然使预测和寻找特定应用的最佳结构变得复杂。除了通过机器学习(ML)预测用于气体吸附/分离和催化的MOFs之外,我们还报告了利用ML来寻找表现出相变(PT)的MOFs。基于现有的QMOF数据库(7463个框架),我们创建并训练了自动编码器,随后从一个具有经实验证实的PT的独特数据库中训练MOFs的分类器。这使得识别具有高PT潜力的MOFs并评估其最可能的刺激因素(客体分子或温度/压力)成为可能。形成的PT可用MOFs列表使我们能够讨论它们的结构特征,并为寻找用于各种物理/化学应用的相变MOFs提供了机会。