Rational molecular and device design enables organic solar cells approaching 20% efficiency

Jiehao Fu(Hong Kong Polytechnic University), Qianguang Yang(Chongqing Institute of Green and Intelligent Technology), Peihao Huang(Chongqing Institute of Green and Intelligent Technology), Sein Chung(Pohang University of Science and Technology), Kilwon Cho(Pohang University of Science and Technology), Zhipeng Kan(Guangxi University), Heng Liu(Chinese University of Hong Kong), Xinhui Lu(Chinese University of Hong Kong), Yongwen Lang(Hong Kong Polytechnic University), Hanjian Lai(Southern University of Science and Technology), Feng He(Southern University of Science and Technology), W.K. Fong(Hong Kong Polytechnic University), Shirong Lu(Taizhou University), Yang Yang(University of California, Los Angeles), Zeyun Xiao(Chongqing Institute of Green and Intelligent Technology), Gang Li(Hong Kong Polytechnic University)
Nature Communications
February 28, 2024
Cited by 296Open Access
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Abstract

For organic solar cells to be competitive, the light-absorbing molecules should simultaneously satisfy multiple key requirements, including weak-absorption charge transfer state, high dielectric constant, suitable surface energy, proper crystallinity, etc. However, the systematic design rule in molecules to achieve the abovementioned goals is rarely studied. In this work, guided by theoretical calculation, we present a rational design of non-fullerene acceptor o-BTP-eC9, with distinct photoelectric properties compared to benchmark BTP-eC9. o-BTP-eC9 based device has uplifted charge transfer state, therefore significantly reducing the energy loss by 41 meV and showing excellent power conversion efficiency of 18.7%. Moreover, the new guest acceptor o-BTP-eC9 has excellent miscibility, crystallinity, and energy level compatibility with BTP-eC9, which enables an efficiency of 19.9% (19.5% certified) in PM6:BTP-C9:o-BTP-eC9 based ternary system with enhanced operational stability.


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