Litcius/Paper detail

Creation of Polymer Datasets with Targeted Backbones for Screening of High-Performance Membranes for Gas Separation

Surya Prakash Tiwari, Wei Shi, Samir Budhathoki, James S. Baker, Ali Sekizkardes, Lingxiang Zhu, Victor Kusuma, David Hopkinson, Janice A. Steckel

2024Journal of Chemical Information and Modeling11 citationsDOIOpen Access PDF

Abstract

A simple approach was developed to computationally construct a polymer dataset by combining simplified molecular-input line-entry system (SMILES) strings of a targeted polymer backbone and a variety of molecular fragments. This method was used to create 14 polymer datasets by combining seven polymer backbones and molecules from two large molecular datasets (MOSES and QM9). Polymer backbones that were studied include four polydimethylsiloxane (PDMS) based backbones, poly(ethylene oxide) (PEO), poly(allyl glycidyl ether) (PAGE), and polyphosphazene (PPZ). The generated polymer datasets can be used for various cheminformatics tasks, including high-throughput screening for gas permeability and selectivity. This study utilized machine learning (ML) models to screen the polymers for CO 2 /CH 4 and CO 2 /N 2 gas separation using membranes. Several polymers of interest were identified. The results highlight that employing an ML model fitted to polymer selectivities leads to higher accuracy in predicting polymer selectivity compared to using the ratio of predicted permeabilities.

Topics & Concepts

PolymerPolydimethylsiloxanePeptoidMembraneSelectivityMaterials scienceGas separationEthylene oxideNanotechnologyChemistryOrganic chemistryCopolymerPeptideBiochemistryCatalysisMembrane Separation and Gas TransportMachine Learning in Materials ScienceCO2 Reduction Techniques and Catalysts