材料科学
吞吐量
学习迁移
人工神经网络
有机太阳能电池
纳米技术
高通量筛选
人工智能
计算机科学
聚合物
电信
复合材料
生物信息学
生物
无线
作者
Zijing Lu,Cunbin An,Xuefeng Liu,Zhe Mei,Xinyuan Xie,Kun Li,Yishi Wu,Qing Liao,Hongbing Fu
标识
DOI:10.1002/adom.202402405
摘要
Abstract In organic solar cells (OSCs), traditional ensemble learning models have advanced the development of photovoltaic materials, reducing the reliance on labor‐intensive trial‐and‐error methods. However, these models suffer from insufficient generalization and poor transferability, leading to low accuracy in predicting power conversion efficiency (PCE) for new materials. In this work, a transferable neural network‐based framework is established to predict PCEs of binary OSCs. Specifically, 1431 sets of donor (excluding PM6):acceptor data are collected to train and validate four ensemble learning models and a transferable neural network model. These models achieved Pearson correlation coefficients ( r ) ranging from 0.75 to 0.84. Subsequently, a new dataset containing 113 sets of PM6:acceptor pairs is used to test their generalization abilities. The ensemble learning models exhibited significantly decreased r of 0.55–0.60, whereas the transferable neural network model maintained r above 0.80. Additionally, two electron acceptors differing only in their alkyl chain branching points are synthesized. The ensemble learning models predicted the similar PCEs for both acceptors. Conversely, the transferable neural network model predicted their significantly different PCEs, consistent with experimental results. This work demonstrates that the developed predictive framework offers substantial advantages in accurately predicting PCEs for new photovoltaic materials.
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