钙钛矿(结构)
接口(物质)
材料科学
工程物理
纳米技术
计算机科学
化学工程
工程类
复合材料
毛细管数
毛细管作用
作者
Qi Zhang,Han Wang,Qiangqiang Zhao,A.M.M. Sharif Ullah,Xiuzun Zhong,Yulin Wei,Chenyang Zhang,Ruida Xu,Stefaan De Wolf,Kai Wang
出处
期刊:ACS energy letters
[American Chemical Society]
日期:2024-11-20
卷期号:: 5924-5934
标识
DOI:10.1021/acsenergylett.4c02610
摘要
Buried-interface engineering is crucial to the performance of perovskite solar cells. Self-assembled monolayers and buffer layers at the buried interface can optimize charge transfer and reduce recombination losses. However, the complex mechanisms and the difficulty in selecting suitable functional groups pose great challenges. Machine learning (ML) offers a powerful tool for screening and identifying effective structures for interface modification. Our ML-driven approach led to the preparation of two promising organic molecules, PAPzO and PAPz, which exhibit synergistic interactions with SnO2 and perovskites. These molecules decrease charge trap densities, elongate carrier lifetimes, and retard perovskite crystallization. PAPzO, with a stronger binding energy and better aligned energy levels, enables a power conversion efficiency (PCE) of 26.04% and long-term stability, maintaining 91.24% of its original PCE after 1,200 h of continuous maximum power point tracking. This ML-integrated approach marks a significant advancement in the development of efficient and stable perovskite photovoltaics.
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