Machine Learning-Driven Insights into Defects of Zirconium Metal–Organic Frameworks for Enhanced Ethane–Ethylene Separation
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https://figshare.com/articles/dataset/Machine_Learning-Driven_Insights_into_Defects_of_Zirconium_Metal_Organic_Frameworks_for_Enhanced_Ethane_Ethylene_Separation/12059268
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资源简介:
Structural
defects in metal–organic frameworks (MOFs) have
the potential to yield desirable properties that could not be achieved
by “defect-free” crystals, but previous works in this
area have focused on limited versions of defects due to the difficulty
of detecting defects in MOFs. In this work, a modeling library containing
425 defective UiO-66 (UiO-66-Ds) with a comprehensive population (in
terms of concentration and distribution) of missing-linker defects
was created. Taking ethane–ethylene separation as a case study,
we demonstrated that machine learning could provide data-driven insight
into how the defects control the performance of UiO-66-Ds in adsorption,
separation, and mechanical stability. We found that the missing-linker
ratio in real materials could be predicted from the gravimetric surface
area and pore volume, making it a useful complement for the challenges
of directly measuring the defect concentration. We further identified
the “privileged” UiO-66-Ds that were optimal in overall
properties and provided decision trees as guidance to access and design
these top performers. This work offers a general strategy for fully
exploring the defects in MOFs, providing long-term opportunities for
the development of defect engineering in the adsorption community.
创建时间:
2020-03-23



