Rapid design of top-performing metal-organic frameworks with qualitative representations of building blocks

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作者
Yigitcan Comlek
Thang Duc Pham
Randall Q. Snurr
Wei Chen
机构
[1] Northwestern University,Department of Mechanical Engineering
[2] Northwestern University,Department of Chemical and Biological Engineering
来源
npj Computational Materials | / 9卷
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摘要
Data-driven materials design often encounters challenges where systems possess qualitative (categorical) information. Specifically, representing Metal-organic frameworks (MOFs) through different building blocks poses a challenge for designers to incorporate qualitative information into design optimization, and leads to a combinatorial challenge, with large number of MOFs that could be explored. In this work, we integrated Latent Variable Gaussian Process (LVGP) and Multi-Objective Batch-Bayesian Optimization (MOBBO) to identify top-performing MOFs adaptively, autonomously, and efficiently. We showcased that our method (i) requires no specific physical descriptors and only uses building blocks that construct the MOFs for global optimization through qualitative representations, (ii) is application and property independent, and (iii) provides an interpretable model of building blocks with physical justification. By searching only ~1% of the design space, LVGP-MOBBO identified all MOFs on the Pareto front and 97% of the 50 top-performing designs for the CO2 working capacity and CO2/N2 selectivity properties.
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[1]  
Moosavi SM(2020)The role of machine learning in the understanding and design of materials J. Am. Chem. Soc. 142 20273-20287
[2]  
Jablonka KM(2017)Machine learning in materials informatics: Recent applications and prospects npj Comput. Mater. 3 54-8129
[3]  
Smit B(2020)Big-data science in porous materials: Materials genomics and machine learning Chem. Rev. 120 8066-835
[4]  
Ramprasad R(2012)Hydrogen storage in metal–organic frameworks Chem. Rev. 112 782-5678
[5]  
Batra R(2014)Methane storage in metal–organic frameworks Chem. Soc. Rev. 43 5657-121
[6]  
Pilania G(2018)Recent advances in gas storage and separation using metal–organic frameworks Mater. Today 21 108-2199
[7]  
Mannodi-Kanakkithodi A(2012)Current status of metal–organic framework membranes for gas separations: Promises and challenges Ind. Eng. Chem. Res. 51 2179-10586
[8]  
Kim C(2022)Recent advances in adsorption and separation of methane and carbon dioxide greenhouse gases using metal–organic framework-based composites Ind. Eng. Chem. Res. 61 10555-1504
[9]  
Jablonka KM(2009)Selective gas adsorption and separation in metal–organic frameworks Chem. Soc. Rev. 38 1477-1511
[10]  
Ongari D(2020)State of the art and prospects in metal–organic framework (mof)-based and mof-derived nanocatalysis Chem. Rev. 120 1438-12174