Greenstein Brianna L, Hutchison Geoffrey R
Department of Chemistry, University of Pittsburgh, 219 Parkman Avenue, Pittsburgh, Pennsylvania 15260, United States.
Department of Chemical and Petroleum Engineering, University of Pittsburgh, 3700 O'Hara Street, Pittsburgh, Pennsylvania 15261, United States.
J Phys Chem Lett. 2022 May 19;13(19):4235-4243. doi: 10.1021/acs.jpclett.2c00866. Epub 2022 May 6.
In the design of organic solar cells, there has been a need for materials with high power conversion efficiencies. Scharber's model is commonly used to predict efficiency; however, it exhibits poor performance with new non-fullerene acceptor (NFA) devices, since it was designed for fullerene-based devices. In this work, an empirical model is proposed that can be a more accurate alternative for NFA organic solar cells. Additionally, many screening studies use computationally expensive methods. A model based on using semiempirical simplified time-dependent density functional theory (sTD-DFT) as an alternative method can accelerate the calculations and yield a similar accuracy. The models presented in this paper, termed organic photovoltaic efficiency predictor (OPEP) models, have shown significantly lower errors than previous models, with OPEP/B3LYP yielding errors of 1.53% and OPEP/sTD-DFT of 1.55%. The proposed computational models can be used for the fast and accurate screening of new high-efficiency NFAs/donor pairs.
在有机太阳能电池的设计中,一直需要具有高功率转换效率的材料。沙伯模型通常用于预测效率;然而,它在新型非富勒烯受体(NFA)器件上表现不佳,因为它是为基于富勒烯的器件设计的。在这项工作中,提出了一种经验模型,该模型对于NFA有机太阳能电池而言可能是一种更准确的替代方案。此外,许多筛选研究使用计算成本高昂的方法。一种基于使用半经验简化含时密度泛函理论(sTD-DFT)作为替代方法的模型可以加快计算速度并产生相似的准确性。本文提出的模型,称为有机光伏效率预测器(OPEP)模型,已显示出比以前的模型显著更低的误差,其中OPEP/B3LYP产生的误差为1.53%,OPEP/sTD-DFT产生的误差为1.55%。所提出的计算模型可用于快速、准确地筛选新型高效NFA/供体对。