4.3 Article

Machine learning and descriptor selection for the computational discovery of metal-organic frameworks

Journal

MOLECULAR SIMULATION
Volume 47, Issue 10-11, Pages 857-877

Publisher

TAYLOR & FRANCIS LTD
DOI: 10.1080/08927022.2021.1916014

Keywords

Metal-organic frameworks; porous coordination polymers; molecular simulations; density-functional theory; ab-initio calculations; machine learning; high-throughput in-silico screening; computational material design

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Metal-organic frameworks (MOFs) are crystalline materials with high internal surface area and pore volume, suitable for various applications. Using computer simulations and machine learning, we can accurately predict the properties of MOFs, saving time and costs, and advancing the development of high-throughput material design.
Metal-organic frameworks (MOFs), crystalline materials with high internal surface area and pore volume, have demonstrated great potential for many applications. In the past decade, as large number of MOFs have come into existence, there has been an effort to model them using computers. High-throughput screening techniques in tandem with molecular simulations or ab-initio calculations are being used to calculate their properties. However, the number of MOFs that can be hypothetically created are in the millions, and thoughcomputer simulations have shown remarkable accuracy, we cannot deploy them for all structures due to their high-computational cost. In this regard, machine learning (ML)-based algorithms have proven to be effective in predicting material properties and reducing the need for expensive calculations. Adopting this methodology can save time and allow researchers to explore materials in unchartered chemical space, thus ushering an era of high-throughput in-silico material design using ML. In this work, we present what is ML, its associated workflow, selecting descriptors, and how it can help build reliable models for discovering MOFs. We present somepopular and novel ones. Thereafter, we review some of the recent studies with respect to ML-based implementation for MOF discovery emphasizing descriptors selected and the workflow adopted.

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