Authors
Qiaomu Yang, Aikaterini Vriza, Cesar A Castro Rubio, Henry Chan, Yukun Wu, Jie Xu
Publication date
2024/1/29
Journal
Chemistry of Materials
Volume
36
Issue
6
Pages
2602-2622
Publisher
American Chemical Society
Description
Conjugated polymers have garnered significant attention due to their diverse applications in electronics, photonics, and energy storage. However, realizing their full potential poses a formidable challenge, as their design has historically relied on iterative adjustments and continuous inspiration from researchers. Traditional methods often struggle to efficiently navigate their vast chemical landscape. Herein, the application of artificial intelligence (AI), specifically machine learning (ML), needs to be discussed in the realm of conjugated polymers. Our paper emphasizes the importance of understanding the structure–property relationships of these polymers and how ML can facilitate property prediction and inverse-design. We delve into various chemical fingerprints, structural descriptors, and ML algorithms, showcasing their utility across a spectrum of applications, including simulations, glass transition temperature …
Total citations
Scholar articles
Q Yang, A Vriza, CA Castro Rubio, H Chan, Y Wu, J Xu - Chemistry of Materials, 2024