Advanced High-Throughput Rational Design of Porphyrin-Sensitized Solar Cells Using Interpretable Machine Learning

被引:1
|
作者
Liao, Jian-Ming [1 ]
Chen, Yu-Hsuan [2 ]
Lee, Hsuan-Wei [2 ]
Guo, Bo-Cheng [2 ]
Su, Po-Cheng [2 ]
Wang, Lun-Hong [2 ]
Reddy, Nagannagari Masi [2 ]
Yella, Aswani [3 ]
Zhang, Zhao-Jie [1 ]
Chang, Chuan-Yung [1 ]
Chen, Chia-Yuan [1 ,4 ]
Zakeeruddin, Shaik M. [3 ]
Tsai, Hui-Hsu Gavin [1 ,4 ]
Yeh, Chen-Yu [2 ]
Gratzel, Michael [3 ]
机构
[1] Natl Cent Univ, Dept Chem, 300 Zhongda Rd, Taoyuan City 32001, Taiwan
[2] Natl Chung Hsing Univ, I Ctr Adv Sci I CAST, Innovat & Dev Ctr Sustainable Agr IDCSA, Dept Chem, Taichung 402, Taiwan
[3] Ecole Polytech Fed Lausanne, Inst Chem Sci & Engn, Lab Photon & Interfaces, CH-1015 Lausanne, Switzerland
[4] Natl Cent Univ, Res Ctr New Generat Light Driven Photovolta Module, Taoyuan 32001, Taiwan
关键词
design rules; dye-sensitized solar cells; high-throughput virtual screening; interpretable machine learning model; SHAP; POWER CONVERSION EFFICIENCY; PEROVSKITE MATERIALS; ORGANIC-DYES; TIO2; PERFORMANCE; PREDICTION;
D O I
10.1002/advs.202407235
中图分类号
O6 [化学];
学科分类号
0703 ;
摘要
Accurately predicting the power conversion efficiency (PCE) in dye-sensitized solar cells (DSSCs) represents a crucial challenge, one that is pivotal for the high throughput rational design and screening of promising dye sensitizers. This study presents precise, predictive, and interpretable machine learning (ML) models specifically designed for Zn-porphyrin-sensitized solar cells. The model leverages theoretically computable, effective, and reusable molecular descriptors (MDs) to address this challenge. The models achieve excellent performance on a "blind test" of 17 newly designed cells, with a mean absolute error (MAE) of 1.02%. Notably, 10 dyes are predicted within a 1% error margin. These results validate the ML models and their importance in exploring uncharted chemical spaces of Zn-porphyrins. SHAP analysis identifies crucial MDs that align well with experimental observations, providing valuable chemical guidelines for the rational design of dyes in DSSCs. These predictive ML models enable efficient in silico screening, significantly reducing analysis time for photovoltaic cells. Promising Zn-porphyrin-based dyes with exceptional PCE are identified, facilitating high-throughput virtual screening. The prediction tool is publicly accessible at . Innovative High-Throughput Design of Porphyrin-Sensitized Solar Cells Through Interpretable Machine Learning image
引用
收藏
页数:17
相关论文
共 40 条
  • [1] Molecular design and performance improvement in organic solar cells guided by high-throughput screening and machine learning
    Feng, Jie
    Wang, Hongshuai
    Ji, Yujin
    Li, Youyong
    NANO SELECT, 2021, 2 (09): : 1629 - 1641
  • [2] Deep learning accelerated high-throughput screening of organic solar cells
    Zhang, Wenlin
    Zou, Yurong
    Wang, Xin
    Chen, Junxian
    Xu, Dingguo
    JOURNAL OF MATERIALS CHEMISTRY C, 2025, 13 (10) : 5295 - 5306
  • [3] High-throughput studies and machine learning for design of β titanium alloys with optimum properties
    Chen, Wei-min
    Ling, Jin-feng
    Bai, Kewu
    Zheng, Kai-hong
    Yin, Fu-xing
    Zhang, Li-jun
    Du, Yong
    TRANSACTIONS OF NONFERROUS METALS SOCIETY OF CHINA, 2024, 34 (10) : 3194 - 3207
  • [4] Leveraging high-throughput molecular simulations and machine learning for the design of chemical mixtures
    Chew, Alex K.
    Afzal, Mohammad Atif Faiz
    Kaplan, Zachary
    Collins, Eric M.
    Gattani, Suraj
    Misra, Mayank
    Chandrasekaran, Anand
    Leswing, Karl
    Halls, Mathew D.
    NPJ COMPUTATIONAL MATERIALS, 2025, 11 (01)
  • [5] A titanium alloys design method based on high-throughput experiments and machine learning
    Zhu, Chengpeng
    Li, Chao
    Wu, Di
    Ye, Wan
    Shi, Shuangxi
    Ming, Hui
    Zhang, Xiaoyong
    Zhou, Kechao
    JOURNAL OF MATERIALS RESEARCH AND TECHNOLOGY-JMR&T, 2021, 11 : 2336 - 2353
  • [6] Accelerated Discovery of Potential Organic Dyes for Dye-Sensitized Solar Cells by Interpretable Machine Learning Models and Virtual Screening
    Wen, Yaping
    Fu, Lulu
    Li, Gongqiang
    Ma, Jing
    Ma, Haibo
    SOLAR RRL, 2020, 4 (06)
  • [7] High-throughput design strategy for creep-resistance steel using machine learning and optimization algorithm
    Pan, Chengbo
    Wang, Chenchong
    Zhang, Yuqi
    Wei, Xiaolu
    Xu, Wei
    MATERIALS TODAY COMMUNICATIONS, 2025, 46
  • [8] Rational design of SM315-based porphyrin sensitizers for highly efficient dye-sensitized solar cells: A theoretical study
    Sheng, Ye
    Li, Minjie
    Flores-Leonar, Martha M.
    Lu, Wencong
    Yang, Jiong
    Hu, Yanni
    JOURNAL OF MOLECULAR STRUCTURE, 2020, 1205
  • [9] Machine Learning-Assisted High-Throughput Virtual Screening for On-Demand Customization of Advanced Energetic Materials
    Song, Siwei
    Wang, Yi
    Chen, Fang
    Yan, Mi
    Zhang, Qinghua
    ENGINEERING, 2022, 10 : 99 - 109
  • [10] Machine learning assisted designing of organic semiconductors for organic solar cells: High-throughput screening and reorganization energy prediction
    Katubi, Khadijah Mohammedsaleh
    Saqib, Muhammad
    Maryam, Momina
    Mubashir, Tayyaba
    Tahir, Mudassir Hussain
    Sulaman, Muhammad
    Alrowaili, Z. A.
    Al-Buriahi, M. S.
    INORGANIC CHEMISTRY COMMUNICATIONS, 2023, 151