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High-throughput and machine learning approaches for the discovery of metal organic frameworks

Xiangyu Zhang, Zezhao Xu, Zidi Wang, Huiyu Liu, Yingbo Zhao, Shan Jiang

2023APL Materials16 citationsDOIOpen Access PDF

Abstract

Metal-organic frameworks (MOFs) are promising nanoporous materials with diverse applications. Traditional material discovery based on intensive manual experiments has certain limitations on efficiency and effectiveness when faced with nearly infinite material space. The current situation offers an opportunity for high-throughput (HT) and machine learning (ML) approaches, including computational and experimental methods, as they have greatly improved the efficiency of MOF screening and discovery and have the capacity to deal with the enormous growth of data. In this review, we discuss the research progress in HT computation and experiments and their effect on MOF screening and discovery. We also highlight how ML-based approaches and the integration of HT methods with ML algorithms accelerate MOF design. In addition, we provide our insights on the future capability of data-driven techniques for MOF discovery, despite facing some knowledge gaps as an obstacle.

Topics & Concepts

NanoporousThroughputMetal-organic frameworkComputer scienceChemical spaceHigh-throughput screeningObstacleComputationNanotechnologyKnowledge extractionKey (lock)Artificial intelligenceBiochemical engineeringMachine learningMaterials scienceData scienceDrug discoveryEngineeringBioinformaticsWirelessAlgorithmPolitical scienceChemistryComputer securityLawBiologyOrganic chemistryTelecommunicationsAdsorptionMetal-Organic Frameworks: Synthesis and ApplicationsMachine Learning in Materials ScienceX-ray Diffraction in Crystallography
High-throughput and machine learning approaches for the discovery of metal organic frameworks | Litcius