Machine Learning Prediction on the Fractional Free Volume of Polymer Membranes

20 Pages Posted: 10 Sep 2022

See all articles by Lei Tao

Lei Tao

University of Connecticut - Department of Mechanical Engineering

Jinlong He

University of Connecticut

Tom Arbaugh

Wesleyan University

Jeffrey R. McCutcheon

University of Connecticut

Ying Li

University of Connecticut - Department of Mechanical Engineering

Abstract

Fractional free volume (FFV) characterizes the microstructural level features of polymers and affects their properties including thermal, mechanical, and separation performance. Experimental measurements and theoretical analyses have been used to quantify the FFV of polymers, but challenges remain because of their limitations. Experimental measurements are laborious and based on semi-empirical equations, while Bondi’s group contribution theory involves ambiguities like the determination of van der Waals volume and the choice of factor values in the theoretical equation. To efficiently evaluate the FFV of polymers, this study utilizes high-throughput molecular dynamics (MD) simulations to build a large dataset regarding polymer’s FFV. Based on this large dataset, we further build machine learning (ML) models to establish the composition-structure relation. Inspired by group contribution theory which correlates polymer’s functional groups to FFV, our ML models correlate polymer’s sub-structures or physico-chemical indexes to FFV. Our study first benchmarks the MD simulation protocol to obtain reliable FFV of polymers and then carries out high-throughput MD simulations for more than 6,500 homopolymers and 1,400 polyamides. Such a large and diverse dataset makes the well-trained ML models more generalizable, compared with the group contribution theory. The efficiency of a feed-forward neural network model is further demonstrated by applying it to a hypothetical polyimide dataset of more than 8 million chemical structures. The predicted FFVs of hypothetical polyimides are further validated by MD simulations. The obtained FFVs of the 8 million polymers, plus their previously reported gas separation performances, demonstrate the promising capability of ML virtual screening for the discovery of polymer membranes with exceptional permeability/selectivity.

Keywords: Machine learning, Fractional free volume, Polymer membrane, Molecular dynamics, High-throughput computing

Suggested Citation

Tao, Lei and He, Jinlong and Arbaugh, Tom and McCutcheon, Jeffrey R. and Li, Ying, Machine Learning Prediction on the Fractional Free Volume of Polymer Membranes. Available at SSRN: https://ssrn.com/abstract=4215144 or http://dx.doi.org/10.2139/ssrn.4215144

Lei Tao

University of Connecticut - Department of Mechanical Engineering ( email )

Jinlong He

University of Connecticut ( email )

Storrs, CT 06269-1063
United States

Tom Arbaugh

Wesleyan University ( email )

Middletown, CT 06459
United States

Jeffrey R. McCutcheon

University of Connecticut ( email )

Storrs, CT 06269-1063
United States

Ying Li (Contact Author)

University of Connecticut - Department of Mechanical Engineering ( email )

Storrs, CT 06269
United States

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