Designing exceptional gas-separation polymer membranes using machine learning

Open Access
Authors
  • J.W. Barnett
  • C.R. Bilchak
  • Y. Wang
  • B.C. Benicewicz
  • L.A. Murdock
  • T. Bereau ORCID logo
  • S.K. Kumar
Publication date 05-2020
Journal Science Advances
Article number eaaz4301
Volume | Issue number 6 | 20
Number of pages 8
Organisations
  • Faculty of Science (FNWI) - Informatics Institute (IVI)
Abstract

The field of polymer membrane design is primarily based on empirical observation, which limits discovery of new materials optimized for separating a given gas pair. Instead of relying on exhaustive experimental investigations, we trained a machine learning (ML) algorithm, using a topological, path-based hash of the polymer repeating unit. We used a limited set of experimental gas permeability data for six different gases in ~700 polymeric constructs that have been measured to date to predict the gas-separation behavior of over 11,000 homopolymers not previously tested for these properties. To test the algorithm’s accuracy, we synthesized two of the most promising polymer membranes predicted by this approach and found that they exceeded the upper bound for CO2/CH4 separation performance. This ML technique, which is trained using a relatively small body of experimental data (and no simulation data), evidently represents an innovative means of exploring the vast phase space available for polymer membrane design.

Document type Article
Note With supplementary materials.
Language English
Published at https://doi.org/10.1126/sciadv.aaz4301
Other links https://www.scopus.com/pages/publications/85084943220
Downloads
eaaz4301.full (Final published version)
Supplementary materials
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