High-throughput computational screening of porous polymer networks for
natural gas sweetening based on neural network
Abstract
17,846 PPNs with the diamond-like topology were computationally screened
to identify the optimal adsorbents for the removal of H2S and CO2 from
humid natural gas based on the combination of molecular simulation and
machine learning algorithms. The top-performing PPNs with the highest
adsorption performance scores (APS) were identified based on their
adsorption capacities and selectivity for H2S and CO2. The strong
affinity between water molecules and the framework atoms has a
significant impact on the adsorption selectivity of acid gases. We
proposed two main design paths (LCD ≤ 4.648 Å, Vf ≤ 0.035, PLD ≤ 3.889 Å
or 4.648 Å ≤ LCD ≤ 5.959 Å, ρ ≤ 837 kg·m-3) of high-performing PPNs. We
also found that artificial neural network (ANN) could accurately predict
the APS of PPNs. N-rich organic linkers and highest isosteric adsorption
heat of H2S and CO2 are main factors that could enhance natural gas
sweetening performance.