Machine learning-assisted prediction of organic solar cell efficiency from TCA triplelayer reflectance spectra

被引:0
|
作者
Gao, Fuhao [1 ]
Zhou, Jinxin [1 ]
Zhao, Junwei [1 ]
Lin, Senxuan [1 ]
Liu, Jingfeng [1 ]
Lan, Yubin [1 ,2 ]
Long, Yongbing [1 ,2 ,3 ]
Xu, Haitao [1 ]
机构
[1] South China Agr Univ, Coll Elect Engn, Coll Artificial Intelligence, Guangzhou 510642, Peoples R China
[2] Lingnan Modern Agr Sci & Technol Guangdong Lab, Guangzhou 510642, Peoples R China
[3] South China Agr Univ, Natl Ctr Int Collaborate Res Precis Agr Aviat Pest, Guangzhou 510642, Peoples R China
基金
中国国家自然科学基金;
关键词
Organic solar cells; Machine learning; Spectroscopic analysis; PCA; CARS; PCE; DESIGN;
D O I
10.1016/j.optcom.2025.131654
中图分类号
O43 [光学];
学科分类号
070207 ; 0803 ;
摘要
Organic Solar Cells (OSCs) are one of the most promising solar cells due to the possible for large-scale and lowcost printed production. Therefore, efficient manufacturing processes and optimization methods are crucial. Currently, the traditional trial-and-error method is mostly used to optimize device performance, which is complex and time-consuming. Previous machine learning (ML) methods can reduce the workload, but relay on multiple inputs. To accelerate the optimization process, a novel ML-based approach was proposed to predict the power conversion efficiency (PCE) of OSCs, utilizing the reflectance spectrum of the transparent electrode/ charge transport layer/active layer (TCA triplelayer). For this purpose, a dataset, containing PCEs of six types of OSCs with different active layer materials and reflectance spectra of TCA triplelayers, had been constructed by simulations via finite-difference time-Domain method. Based on the dataset, machine learning algorithms were employed to construct the regression models. Spectra pre-processing and feature extraction techniques were integrated to refine the predictive accuracy of these models. Consequently, the model based on Multilayer Perceptron Regression (MLPR) algorithm demonstrated the best performance, with coefficient of determination (R2) of 0.984 and root-mean-squared error of 0.408. These results underscore the potential to accurately predict the PCE of OSCs from the reflectance spectra of TCA triplelayer. Ultimately, a strategy was further proposed to utilize the developed regression model for real-time quality monitoring of TCA triplelayer during device fabrication. This offers a rapid way to evaluate the quality of TCA triplelayers and their influence on device performance.
引用
收藏
页数:15
相关论文
共 50 条
  • [21] Machine learning-assisted performance prediction and molecular design of all-small-molecule organic solar cells based on the Y6 acceptor
    Zhao, Qiming
    Shan, Yuqing
    Zhou, Hu
    Zhang, Guangjun
    Liu, Wanqiang
    SOLAR ENERGY, 2023, 265
  • [22] Machine learning-assisted design and prediction of materials for batteries based on alkali metals
    Si, Kexin
    Sun, Zhipeng
    Song, Huaxin
    Jiang, Xiangfen
    Wang, Xuebin
    PHYSICAL CHEMISTRY CHEMICAL PHYSICS, 2025, 27 (11) : 5423 - 5442
  • [23] Machine learning-assisted prediction of the toxicity of silver nanoparticles: a meta-analysis
    Bilgi, Eyup
    Karakus, Ceyda Oksel
    JOURNAL OF NANOPARTICLE RESEARCH, 2023, 25 (08)
  • [24] Machine Learning-Assisted Clustering of Nanoparticle-Binding Peptides and Prediction of Their Properties
    Kenry
    ADVANCED THEORY AND SIMULATIONS, 2023, 6 (06)
  • [25] Machine learning-assisted aroma profile prediction in Jiang-flavor baijiu
    Zhu, Min
    Wang, Mingyao
    Gu, Junfeng
    Deng, Zhao
    Zhang, Wenxue
    Pan, Zhengfu
    Luo, Guorong
    Wu, Renfu
    Qin, Jianliang
    Gomi, Katsuya
    FOOD CHEMISTRY, 2025, 478
  • [26] Machine Learning-Assisted Carbon Dot Synthesis: Prediction of Emission Color and Wavelength
    Senanayake, Ravithree D.
    Yao, Xiaoxiao
    Froehlich, Clarice E.
    Cahill, Meghan S.
    Sheldon, Trever R.
    McIntire, Mary
    Haynes, Christy L.
    Hernandez, Rigoberto
    JOURNAL OF CHEMICAL INFORMATION AND MODELING, 2022, 62 (23) : 5918 - 5928
  • [27] Machine learning-assisted prediction of the toxicity of silver nanoparticles: a meta-analysis
    Eyup Bilgi
    Ceyda Oksel Karakus
    Journal of Nanoparticle Research, 2023, 25
  • [28] Machine learning-assisted FTIR spectra to predict freeze-drying curve of food
    Liu, Xihui
    Feng, Baolong
    Liu, Hongyao
    Wang, Yutang
    Luo, Bowen
    Yang, Yan
    Zhang, Qi
    Wang, Zhipeng
    Xu, Ziqi
    Li, Bailiang
    Wang, Fengzhong
    LWT-FOOD SCIENCE AND TECHNOLOGY, 2024, 197
  • [29] Multimode optical fiber sensors: from conventional to machine learning-assisted
    Wang, Kun
    Mizuno, Yosuke
    Dong, Xingchen
    Kurz, Wolfgang
    Koehler, Michael
    Kienle, Patrick
    Lee, Heeyoung
    Jakobi, Martin
    Koch, Alexander W.
    MEASUREMENT SCIENCE AND TECHNOLOGY, 2024, 35 (02)
  • [30] Machine Learning-Assisted Process Prediction of Horizontal Continuous Casting for Copper Tubular Billets
    Liu, Jin-Song
    Long, Hai-Sheng
    Chen, Da-Yong
    Song, Hong-Wu
    Zhang, Shi-Hong
    Piccininni, Antonio
    Chen, Chuan-Lai
    JOURNAL OF MATERIALS ENGINEERING AND PERFORMANCE, 2025,