Mechanical property prediction of random copolymers using uncertainty-based active learning
Journal
Computational Materials Science
Journal Volume
247
Start Page
113489
ISSN
0927-0256
Date Issued
2025-01-31
Author(s)
DOI
10.1016/j.commatsci.2024.113489
Abstract
The copolymer, a widely used material in our daily lives, presents a significant challenge in targeted sequence design. While recent advancements in computational simulation and data science offer a promising avenue for addressing this complex issue, challenges persist in labeled data scarcity. In this study, we introduce an uncertainty-based active learning framework for predicting the properties of random copolymers. We found that the active learning strategy allowed for labeling only 40 data points within the design space of 1550 data points, drastically reducing the labeling efforts by 97%. Most data selected by active learning were positioned on the design space's periphery, transforming the learning task into an interpolation problem. Through integrating active learning and molecular dynamics, we successfully overcame the combinatorial explosion problem in copolymer sequence design, streamlining the data labeling process and culminating in a highly accurate model. This research demonstrates data science's potential in polymer design, especially when facing data scarcity.
Subjects
Active learning
Block copolymer
Machine learning
Molecular dynamics
Thermoplastic elastomer
Publisher
Elsevier BV
Type
journal article
