Design of experiments with the support of machine learning for process parameter optimization of all-small-molecule organic solar cells

FlexMat Pub Date : 2024-09-24 DOI:10.1002/flm2.34
Kuo Wang, Jiaojiao Liang, Zhennan Li, Haixin Zhou, Cong Nie, Jiahao Deng, Xiaojie Zhao, Xinyu Peng, Ziye Chen, Zhiyan Peng, Di Huang, Hun Soo Jang, Jaemin Kong, Yingping Zou
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Abstract

Traditionally, squaraine dyes have been studied and employed in biomedical research due to their excellent optical properties, and the molecules are being adopted in different research fields such as organic solar cells. In this study, we investigate correlations between solar cell performance and processing parameters of all-small-molecule bulk heterojunction solar cells comprising squaraine (SQ) as electron donor (D) and non-fullerene small molecules (e.g., ITIC) as electron acceptor (A) with the help of machine learning (ML) and design of experiment (DoE) methods. Among the five predictive ML models tested with the selected parameters, the eXtreme gradient boosting model shows the satisfactory results with quite high coefficient of determination of 0.999 and 0.997 in training and testing sets, respectively. By measuring the contribution of each input variable to solar cell efficiency, four process parameters, that is, the total concentration, the ratio of D/A, the rotational speed of spin coating, and the annealing temperature, are found to be the key features strongly correlated to solar cell efficiency. From contour plots in DoE, the highest solar cell efficiency of approximately 5% can be predicted under the conditions of 15 mg mL−1 in solution concentration, a 1:2 mix ratio of D and A, rotational speeds ranging from 800 to 900 rpm, and annealing temperatures within 100–110°C. Using the suggested parameter conditions, we fabricated solar cells, achieving a quite high efficiency of approximately 4%. Besides the global optimization conditions, we also employ the solvent vapor annealing combination to the thermal annealing to facilitate further mobilization of molecules and more optimized microstructure of bulk heterojunction films, resulting in a further enhancement in solar cell efficiency of more than 20%.

Abstract Image

在机器学习的支持下进行实验设计,优化全小分子有机太阳能电池的工艺参数
传统上,方碱染料因其优异的光学特性而一直被研究和应用于生物医学研究,而有机太阳能电池等不同研究领域也正在采用这种分子。在本研究中,我们借助机器学习(ML)和实验设计(DoE)方法,研究了由方卡因(SQ)作为电子给体(D)、非富勒烯小分子(如 ITIC)作为电子受体(A)的全小分子体异质结太阳能电池的性能与加工参数之间的相关性。在利用所选参数测试的五个预测性 ML 模型中,eXtreme 梯度提升模型显示出令人满意的结果,在训练集和测试集上的决定系数分别为 0.999 和 0.997,相当高。通过测量各输入变量对太阳能电池效率的贡献,发现总浓度、D/A 比率、旋涂转速和退火温度这四个工艺参数是与太阳能电池效率密切相关的关键特征。根据 DoE 中的等值线图,在溶液浓度为 15 mg mL-1、D 和 A 的混合比为 1:2、旋转速度为 800 至 900 rpm、退火温度为 100 至 110°C 的条件下,太阳能电池的最高效率可达 5%左右。利用建议的参数条件,我们制造出了太阳能电池,实现了相当高的效率,约为 4%。除了全局优化条件外,我们还在热退火的基础上结合使用了溶剂气相退火,以促进分子的进一步迁移,并优化了体异质结薄膜的微观结构,从而使太阳能电池的效率进一步提高了 20% 以上。
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