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양창덕

Yang, Changduk
Advanced Tech-Optoelectronic Materials Synthesis Lab.
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Artificial Intelligence Designer for Highly-Efficient Organic Photovoltaic Materials

Author(s)
Sun, WenboZheng, YujieZhang, QiYang, KeChen, HaiyanCho, YongjoonFu, JiehaoOdunmbaku, OmololuShah, Akeel A.Xiao, ZeyunLu, ShirongChen, ShanshanLi, MengQin, BoYang, ChangdukFrauenheim, ThomasSun, Kuan
Issued Date
2021-09
DOI
10.1021/acs.jpclett.1c02554
URI
https://scholarworks.unist.ac.kr/handle/201301/54172
Fulltext
https://pubs.acs.org/doi/10.1021/acs.jpclett.1c02554
Citation
JOURNAL OF PHYSICAL CHEMISTRY LETTERS, v.12, no.36, pp.8847 - 8854
Abstract
Designing efficient organic photovoltaic (OPV) materials purposefully is still challenging and time-consuming. It is of paramount importance in material development to identify basic functional units that play the key roles in material performance and subsequently establish the substructure-property relationship. Herein, we describe an automatic design framework based on an in-house designed La FREMD Fingerprint and machine learning (ML) algorithms for highly efficient OPV donor molecules. The key building blocks are identified, and a library consisting of 18 960 new molecules is generated within this framework. Through investigating the chemical structures of materials with different performance, a guidance on designing efficient OPV materials is proposed. Furthermore, the most promising candidates exhibit a predicted power conversion efficiency (PCE) value of over 15% when combined with acceptor Y6. Density functional theory (DFT) studies show these candidate materials possess exceptional potential for efficient charge carrier transport. The proposed framework demonstrates the ability to design new materials based on the substructure-property relationship built by ML, which provides an alternative methodology for applying ML in new material discovery.
Publisher
AMER CHEMICAL SOC
ISSN
1948-7185
Keyword
MACHINE LEARNING-MODELSSOLAR-CELLSSMALL-MOLECULEBULK-HETEROJUNCTIONCONJUGATED POLYMERSNEURAL-NETWORKSPERFORMANCEABSORPTIONDISCOVERYIMPACT

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