Machine Learnable Language for the Chemical Space of Nanopores Enables Structure–Property Relationships in Nanoporous 2D Materials
Piyush Sharma,
Sneha Thomas,
Mahika Nair
et al.
Abstract:The synthesis of nanoporous two-dimensional (2D) materials has revolutionized fields such as membrane separations, DNA sequencing, and osmotic power harvesting. Nanopores in 2D materials significantly modulate their optoelectronic, magnetic, and barrier properties. However, the large number of possible nanopore isomers makes their study onerous, while the lack of machinelearnable representations stymies progress toward structure− property relationships. Here, we develop a language for nanopores in 2D materials… Show more
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