Machine Learning-Enabled Optical Architecture Design of Perovskite Solar Cells.
Zong-Zheng LiChaorong GuoWenlei LvPeng HuangYongyou ZhangPublished in: The journal of physical chemistry letters (2024)
Perovskite solar cells, emerging as a cutting-edge solar energy technology, have demonstrated a power conversion efficiency (PCE) of >26%, which is below the theoretical limit of 33%. This study, employing a combination of neural network models and high-throughput simulation calculations, taking the single-junction FAPbI 3 cell as an illustrative example, indicates that a pyramid structure, in comparison of a planar one, can increase the highest J sc to 27.4 mA/cm 2 and the PCE to 28.4%. Both J sc and PCE surpass the currently reported experimental results. The optimized periodicity and tilt angle of the pyramid structure align with the textured structure of crystalline silicon solar cells. These results underscore the substantial development potential of neural network inverse design based on high-throughput calculations in the field of optoelectronic devices and provide theoretical guidance for the design of monolithic perovskite-silicon tandem solar cells.
Keyphrases
- solar cells
- neural network
- perovskite solar cells
- high throughput
- single cell
- machine learning
- density functional theory
- high resolution
- molecular dynamics
- molecular dynamics simulations
- cell therapy
- artificial intelligence
- room temperature
- stem cells
- big data
- high speed
- mesenchymal stem cells
- climate change
- monte carlo
- deep learning