Unraveling the Effect of Compositional Ratios on the Kesterite Thin-Film Solar Cells Using Machine Learning Techniques

Author:

Karade Vijay12ORCID,Sutar Santosh3,Jang Jun2,Gour Kuldeep4,Shin Seung5,Suryawanshi Mahesh6,Kamat Rajanish78,Dongale Tukaram9ORCID,Kim Jin2,Yun Jae1

Affiliation:

1. Department of Energy Engineering, Korea Institute of Energy Technology (KENTECH), Naju 58330, Republic of Korea

2. Optoelectronics Convergence Research Center, Department of Materials Science and Engineering, Chonnam National University, Gwangju 61186, Republic of Korea

3. Yashwantrao Chavan School of Rural Development, Shivaji University, Kolhapur 416004, India

4. Surface Engineering Group, Advanced Materials & Processes Division, CSIR-National Metallurgical Laboratory, Jamshedpur 831007, India

5. Future Agricultural Research Division, Rural Research Institute, Korea Rural Community Corporation, Ansan-si 15634, Republic of Korea

6. School of Photovoltaic and Renewable Energy Engineering, University of New South Wales, Sydney, NSW 2052, Australia

7. Department of Electronics, Shivaji University, Kolhapur 416004, India

8. The Institute of Science,. Homi Bhabha State University, 15 Madam Cama Road, Mumbai 400032, India

9. Computational Electronics and Nanoscience Research Laboratory, School of Nanoscience and Biotechnology, Shivaji University, Kolhapur 416004, India

Abstract

In the Kesterite family, the Cu2ZnSn(S,Se)4 (CZTSSe) thin-film solar cells (TFSCs) have demonstrated the highest device efficiency with non-stoichiometric cation composition ratios. These composition ratios have a strong influence on the structural, optical, and electrical properties of the CZTSSe absorber layer. So, in this work, a machine learning (ML) approach is employed to evaluate effect composition ratio on the device parameters of CZTSSe TFSCs. In particular, the bi-metallic ratios like Cu/Sn, Zn/Sn, Cu/Zn, and overall Cu/(Zn+Sn) cation composition ratio are investigated. To achieve this, different machine learning algorithms, such as decision trees (DTs) and classification and regression trees (CARTs), are used. In addition, the output performance parameters of CZTSSe TFSCs are predicted by both continuous and categorical approaches. Artificial neural networks (ANN) and XGBoost (XGB) algorithms are employed for the continuous approach. On the other hand, support vector machine and k-nearest neighbor’s algorithms are also used for the categorical approach. Through the analysis, it is observed that the DT and CART algorithms provided a critical composition range well suited for the fabrication of highly efficient CZTSSe TFSCs, while the XGB and ANN showed better prediction accuracy among the tested algorithms. The present work offers valuable guidance towards the integration of the ML approach with experimental studies in the field of TFSCs.

Publisher

MDPI AG

Subject

Inorganic Chemistry,Condensed Matter Physics,General Materials Science,General Chemical Engineering

Reference31 articles.

1. Control of the Phase Evolution of Kesterite by Tuning of the Selenium Partial Pressure for Solar Cells with 13.8% Certified Efficiency;Zhou;Nat. Energy,2023

2. CZTSSe Solar Cells: Insights into Interface Engineering;Li;J. Mater. Chem. A Mater.,2023

3. Unveiling Microscopic Carrier Loss Mechanisms in 12% Efficient Cu2ZnSnSe4 Solar Cells;Li;Nat. Energy,2022

4. Flexible Kesterite Thin-Film Solar Cells under Stress;Park;npj Flex. Electron.,2022

5. (2023, October 17). National Renewable Energy Laboratory-Best Research-Cell Efficiency Chart, Available online: https://www.nrel.gov/pv/cell-efficiency.html.

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