Litcius/Paper detail

Discovery of High-Performing Metal–Organic Frameworks for Efficient SF<sub>6</sub>/N<sub>2</sub> Separation: A Combined Computational Screening, Machine Learning, and Experimental Study

Yanjing He, Xiaohao Cao, Zhengqing Zhang, Zefeng Jiang, Hongliang Huang, Shitong Zhang, Qi Han, Chongli Zhong

2023Industrial & Engineering Chemistry Research25 citationsDOI

Abstract

Effective capture and recovery of sulfur hexafluoride (SF 6 ) from SF 6 /N 2 mixture is an urgent challenge. Considering the existence of a large number of metal–organic frameworks (MOFs), the computational screening of MOFs is strongly desired before experimental efforts. In this work, the top-performance MOF adsorbents were identified from the most recent computation-ready, experimental metal–organic frameworks (CoRE MOFs) based on various metrics. The degree of unsaturation (unsat) and the number of hydrogen per unit cell (H) revealed with the optimal machine learning (ML) model are important factors for effective SF 6 /N 2 separation. One of the screened MOF candidates, FIRNAX01(TKL-107), was synthesized and the separation performance exceeded all the reported MOFs. Our computational screening not only offers effective prediction but also paves the way for accelerating the development of novel MOFs.

Topics & Concepts

Metal-organic frameworkComputer scienceWork (physics)Degree of unsaturationSeparation (statistics)ComputationMaterials scienceAdsorptionProcess engineeringChemistryMachine learningOrganic chemistryPhysicsAlgorithmEngineeringThermodynamicsMetal-Organic Frameworks: Synthesis and ApplicationsInorganic Fluorides and Related CompoundsMembrane Separation and Gas Transport