Efficient separation of mixtures
of light hydrocarbons is an industrially
demanding but challenging process. In this study, we present a high-throughput
computational screening of ∼12,000 experimentally realizable
metal–organic framework (MOF) structures in order to identify
the best candidate that can separate methane from ethane and propane
at ambient conditions. We calculated several performance metricsadsorption
selectivity, working capacity, and regenerability to assess the performance
of the MOFs in the database. The MOFs were screened based on high
adsorbent performance score and regenerability >80%. MOFs AZIVAI
and
BEWCUD were found to be performing the best for the separation of
methane from its binary and ternary mixtures with ethane and propane.
We looked at various structure–property correlations of selectivity
and working capacity that reveal a generic trade-off relation between
these two metrics. Selectivity correlates strongly with the heat of
adsorption in a linear fashion, whereas working capacity exhibits
an increasing and then decreasing behavior with the heat of adsorption
complementing the trade-off relation between selectivity and working
capacity. We have also screened out few promising MOFs that are thermally
and chemically stable and discussed their experimental stability conditions
in detail.
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