Metal–organic frameworks (MOFs) hold great potential
for
carbon monoxide (CO) adsorption owing to their large pore volume,
diverse periodic network structures, and designability. Machine learning
is anticipated to provide optimization parameters for designing high-efficiency
MOFs adsorbents, avoiding time-consuming experiments. Here, we proposed
an ensemble-learning strategy accounting for multidimensional analysis
of features to rationally design pore geometries, structural properties,
and synthesis conditions of MOFs toward high performance for CO adsorption.
The extreme gradient boosting model exhibited the best predictive
performance (R2 > 0.95) under limited
data set size. Porous characteristic was identified as a dominant
factor in pristine MOFs. Prediction results illustrated that MOFs
featuring one-dimensional, two-dimensional, microporous, and isolated
pores were optimal for CO adsorption, with 0.4–0.6 cm3/g total pore volume. This enhanced adsorption capacity can be attributed
to the shortened molecular diffusion pathways. The relative significance
of structural parameters followed: space groups > geometry >
topology.
The optimal structural configuration involved space group of R3m, binuclear paddle wheel geometry, and
scorpionate-like topology. Regarding transition metal-modified MOFs,
incorporated Cu(I) demonstrated the strongest binding affinity toward
CO, while Fe(II) and Ni(II) could serve as effective binding sites.
This work offers a theoretical guidance for designing efficient adsorbents
toward CO adsorption.