2024
DOI: 10.1002/pssa.202400008
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Machine Learning Study on the Virtual Screening of Donor–Acceptor Pairs for Organic Solar Cells

Ming Li,
Cai‐Rong Zhang,
Mei‐Ling Zhang
et al.

Abstract: The selection of electron donors and nonfullerene acceptors (NFAs) in organic solar cells (OSCs) is crucial for improving photovoltaic performance. Machine learning (ML) has brought a breakthrough solution. Herein, 292 donor‐NFA pairs with experimental OSC parameters from the reported articles are collected. The ML descriptors include device processing parameters, molecular properties, and molecular structure. The five ML regression models, random forest (RF), extra tree regression, gradient boosting regressio… Show more

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