Machine Learning Assisted Analysis, Prediction, and Fabrication of High‐Efficiency CZTSSe Thin Film Solar Cells

Author:

Karade Vijay C.12ORCID,Sutar Santosh S.3,Shin Seung Wook4,Suryawanshi Mahesh P.5,Jang Jun Sung2,Gour Kuldeep Singh12,Kamat Rajanish K.67,Yun Jae Ho1,Dongale Tukaram D.8,Kim Jin Hyeok2ORCID

Affiliation:

1. Department of Energy Engineering Korea Institute of Energy Technology (KENTECH) Naju 522132 Republic of Korea

2. Optoelectronics Convergence Research Center and 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. Future Agricultural Research Division Rural Research Institute Korea Rural Community Corporation Ansan‐si 15634 Republic of Korea

5. School of Photovoltaic and Renewable Energy Engineering University of New South Wales Sydney New South Wales 2052 Australia

6. Department of Electronics Shivaji University Kolhapur 416004 India

7. Dr. Homi Bhabha State University 15 Madam Cama Road Mumbai 400032 India

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

Abstract

AbstractThe Earth‐abundant element‐based Cu2ZnSn(S,Se)4 (CZTSSe) absorber is considered as a promising material for thin‐film solar cells (TFSCs). The current record power conversion efficiency (PCE) of CZTSSe TFSCs is ≈13%, and it's still lower than CdTe and CIGS‐based TFSCs. A further breakthrough in its PCE mainly relies on deep insights into the various device fabrication conditions; accordingly, the experimental–oriented machine learning (ML) approach can be an effective way to discover key governing factors in improving PCE. The present work aims to identify the key governing factors throughout the device fabrication processes and apply them to break the saturated PCE for CZTSSe TFSCs. For realization, over 25,000 data points were broadly collected by fabricating more than 1300 CZTSSe TFSC devices and analyzed them using various ML techniques. Through extensive ML analysis, the i‐ZnO thickness is found to be the first, while Zn/Sn compositional ratio and sulfo‐selenization temperature are other key governing factors under thin or thick i‐ZnO thickness to achieve over 11% PCE. Based on these key governing factors, the applied random forest ML prediction model for PCE showed Adj. R2 = >0.96. Finally, the best‐predicted ML conditions considered for experimental validation showed well‐matched experimental outcomes with different ML models.

Funder

National Research Foundation of Korea

Publisher

Wiley

Subject

Electrochemistry,Condensed Matter Physics,Biomaterials,Electronic, Optical and Magnetic Materials

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