Machine learning strategies for the structure-property relationship of copolymers
ORAL
Abstract
Establishing the structure-property relationship is extremely valuable for the molecular design of copolymers. However, machine learning (ML) models can incorporate both chemical composition and sequence distribution of monomers, and have the generalization ability to process various copolymer types (e.g., alternating, random, block, and gradient copolymers) with a unified approach are missing. To address this challenge, we formulate four different ML models for investigation, including a feedforward neural network (FFNN) model, a convolutional neural network (CNN) model, a recurrent neural network (RNN) model, and a combined FFNN/RNN (Fusion) model. We use various copolymer types to systematically validate the performance and generalizability of different models. We find that the RNN architecture that processes the monomer sequence information both forward and backward is a more suitable ML model for copolymers with better generalizability. As a supplement to polymer informatics, our proposed approach provides an efficient way for the evaluation of copolymers.
*We gratefully acknowledge financial support from the Air Force Office of Scientific Research through the Air Force's Young Investigator Research Program (FA9550-20-1-0183; Program Manager: Dr. Ming-Jen Pan) and the National Science Foundation (CMMI-1934829, CAREER-2046751); 3M's Non-Tenured Faculty Award.
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Publication: Tao, Lei, John Byrnes, Vikas Varshney, and Ying Li. "Machine Learning Strategies for the Structure-Property Relationship of Copolymers." iScience, 25, 104585 (2022).
Presenters
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Ying Li
- University of Wisconsin-Madison