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首页> 外文期刊>Advanced energy materials >Insights from Machine Learning Techniques for Predicting the Efficiency of Fullerene Derivatives-Based Ternary Organic Solar Cells at Ternary Blend Design
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Insights from Machine Learning Techniques for Predicting the Efficiency of Fullerene Derivatives-Based Ternary Organic Solar Cells at Ternary Blend Design

机译:机器学习技术的洞察力,可预测三元共混物设计中基于富勒烯衍生物的三元有机太阳能电池的效率

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Ternary organic solar cells (OSCs) have progressed significantly in recent years due to the sufficient photon harvesting of the blend photoactive layer including three absorption-complementary materials. With the rapid development of highly efficient ternary OSCs in photovoltaics, the precise energy-level alignment of the three active components within ternary OSC devices should be taken into account. The machine-learning technique is a computational method that can effectively learn from previous historical data to build predictive models. In this study, a dataset of 124 fullerene derivatives-based ternary OSCs is manually constructed from a diverse range of literature along with their frontier molecular orbital theory levels, and device structures. Different machine-learning algorithms are trained based on these electronic parameters to predict photovoltaic efficiency. Thus, the best predictive capability is provided by using the Random Forest approach beyond other machine-learning algorithms in the dataset. Furthermore, the Random Forest algorithm yields valuable insights into the crucial role of lowest unoccupied molecular orbital energy levels of organic donors in the performance of ternary OSCs. The outcome of this study demonstrates a smart strategy for extracting underlying complex correlations in fullerene derivatives-based ternary OSCs, thereby accelerating the development of ternary OSCs and related research fields.
机译:近年来,由于包含三种吸收互补材料的混合光敏层的光子充分收获,三元有机太阳能电池(OSC)取得了长足进步。随着光伏中高效三元OSC的快速发展,应考虑三元OSC器件内三个有源组件的精确能级对准。机器学习技术是一种计算方法,可以有效地从以前的历史数据中学习以建立预测模型。在这项研究中,由124种基于富勒烯衍生物的三元OSC的数据集,是根据各种文献及其前沿的分子轨道理论水平和器件结构手动构建的。基于这些电子参数训练不同的机器学习算法,以预测光伏效率。因此,除了数据集中的其他机器学习算法之外,通过使用随机森林方法还可以提供最佳的预测能力。此外,随机森林算法对有机供体的最低未占用分子轨道能级最低水平在三元OSC性能中的关键作用产生了宝贵的见解。这项研究的结果表明,提取基于富勒烯衍生物的三元OSC中潜在的复杂相关性的明智策略,从而加速了三元OSC和相关研究领域的发展。

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