Monteiro-de-Castro Gabriel, Borges Itamar
Departamento de Química, Instituto Militar de Engenharia (IME), Rio de Janeiro, Brazil.
Programa de Pós-Graduação em Engenharia de Defesa, Instituto Militar de Engenharia (IME), Rio de Janeiro, Brazil.
J Comput Chem. 2023 Nov 5;44(29):2256-2273. doi: 10.1002/jcc.27195. Epub 2023 Jul 26.
Diketopyrrolopyrrole (DPP) systems have promising applications in different organic electronic devices. In this work, we investigated the effect of 20 different substituent groups on the optoelectronic properties of DPP-based derivatives as the donor ( )-material in an organic photovoltaic (OPV) device. For this purpose, we employed Hammett's theory (HT), which quantifies the electron-donating or -withdrawing properties of a given substituent group. Machine learning (ML)-based , , , , , , , and Hammett's constants previously determined were used. Mono- (DPP-X ) and di-functionalized (DPP-X ) DPPs, where X is a substituent group, were investigated using density functional theory (DFT), time-dependent DFT (TDDFT), and ab initio methods. Several properties were computed using CAM-B3LYP and the second-order algebraic diagrammatic construction, ADC(2), an ab initio wave function method, including the adiabatic ionization potential ( ), the electron affinity ( ), the HOMO-LUMO gaps ( ), and the maximum absorption wavelengths ( ), the first excited state transition S → S energies ( ) (the optical gap), and exciton binding energies. From the optoelectronic properties and employing typical acceptor systems, the power conversion efficiency ( ), open-circuit voltage ( ), and fill factor ( ) were predicted for a DPP-based OPV device. These photovoltaic properties were also correlated with the machine learning (ML)-based Hammett's constants. Overall, good correlations between all properties and the different types of constants were obtained, except for the constants, which are related to inductive effects. This scenario suggests that resonance is the main factor controlling electron donation and withdrawal effects. We found that substituent groups with large values can produce higher photovoltaic efficiencies. It was also found that electron-withdrawing groups (EWGs) reduced and considerably compared to the unsubstituted DPP-H. Moreover, for every decrease (increase) in the values of a given optoelectronic property of DPP-X systems, a more significant decrease (increase) in the same values was observed for the DPP-X , thus showing that the addition of the second substituent results in a more extensive influence on all electronic properties. For the exciton binding energies, an unsupervised machine learning algorithm identified groups of substituents characterized by average values (centroids) of Hammett's constants that can drive the search for new DDP-derived materials. Our work presents a promising approach by applying HT on molecular engineering DPP-based molecules and other conjugated molecules for applications on organic optoelectronic devices.
二酮吡咯并吡咯(DPP)体系在不同的有机电子器件中具有广阔的应用前景。在本工作中,我们研究了20种不同取代基对基于DPP的衍生物作为有机光伏(OPV)器件中供体( )材料的光电性能的影响。为此,我们采用了哈米特理论(HT),该理论量化了给定取代基的给电子或吸电子性能。使用了基于机器学习(ML)的 、 、 、 、 、 、 以及先前测定的哈米特常数。使用密度泛函理论(DFT)、含时密度泛函理论(TDDFT)和从头算方法研究了单官能团(DPP-X )和双官能团(DPP-X )的DPP,其中X为取代基。使用CAM-B3LYP和二阶代数图示构建方法(ADC(2))这一从头算波函数方法计算了几个性质,包括绝热电离势( )、电子亲和势( )、最高已占分子轨道-最低未占分子轨道能隙( )、最大吸收波长( )、第一激发态跃迁 S → S能量( )(光学能隙)以及激子结合能。根据光电性能并采用典型的受体体系,预测了基于DPP的OPV器件的功率转换效率( )、开路电压( )和填充因子( )。这些光伏性质也与基于机器学习(ML)的哈米特常数相关。总体而言,除了与诱导效应相关的 常数外,所有性质与不同类型的 常数之间都获得了良好的相关性。这种情况表明共振是控制电子给体和受体效应的主要因素。我们发现具有较大 值的取代基可以产生更高光伏效率。还发现与未取代的DPP-H相比,吸电子基团(EWG)显著降低了 和 。此外,对于DPP-X体系给定光电性质值的每一次降低(增加),在DPP-X 中观察到相同值有更显著的降低(增加),因此表明第二个取代基的加入对所有电子性质产生了更广泛的影响。对于激子结合能,一种无监督机器学习算法识别出了以哈米特常数平均值(质心)为特征的取代基组,这些取代基组可推动对新型DDP衍生材料的探索。我们的工作通过将HT应用于基于DPP的分子和其他共轭分子的分子工程,为有机光电器件的应用提出了一种有前景的方法。