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Machine learning-assisted exploration of a versatile polymer platform with charge transfer-dependent full-color emission

journal contribution
posted on 2024-11-02, 22:05 authored by Suiying Ye, Nastaran Meftahi, Igor Lyskov, Tian Tian, Richard Whitfield, Sudhir Kumar, Andrew ChristoffersonAndrew Christofferson, David Winkler, Chih-Jen Shih, Salvy RussoSalvy Russo, Jean-Christophe Leroux, Yinyin Bao
The development of color-tunable fluorescent materials with simple chemical compositions that are easy to synthesize is highly desirable but practically challenging. Here, we report a versatile yet simple platform based on through-space charge transfer (TSCT) polymers that has full-color-tunable emission and was developed with the aid of predictive machine learning models. Using a single-acceptor fluorophore as the initiator for atom transfer radical polymerization, a series of electron donor groups containing simple polycyclic aromatic moieties (e.g., pyrene) are introduced either by one-step copolymerization or by end-group functionalization of a pre-synthesized polymer. By manipulating donor-acceptor interactions via controlled polymer synthesis, continuous blue-to-red emission color tuning was easily achieved in solid polymers. Theoretical investigations confirm the structurally dependent TSCT-induced emission redshifts. We also exemplify how these TSCT polymers can be used as a general design platform for solid-state stimuli-responsive materials with high-contrast photochromic emission by applying them to proof-of-concept information encryption.

History

Journal

Chem

Volume

9

Issue

4

Start page

924

End page

947

Total pages

24

Publisher

Cell Press

Place published

United States

Language

English

Copyright

© 2022 Elsevier Inc.

Former Identifier

2006120384

Esploro creation date

2023-08-04

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