High-Quality Data Enabling Universality of Band Gap Descriptor and Discovery of Photovoltaic Perovskites
Extensive machine-learning-assisted research has been dedicated to predicting band gaps for perovskites, driven by their immense potential in photovoltaics. Yet, the effectiveness is often hampered by the lack of high-quality band gap data sets, particularly for perovskites involving d orbitals. In this work, we consistently calculate a large data set of band gaps with a high level of accuracy, which is rigorously validated by experimental and state-of-the-art GW band gaps. Leveraging this achievement, our machine-learning-derived descriptor exhibits exceptional universality and robustness, proving effectiveness not only for single and double, halide and oxide perovskites regardless of the underlying atomic structures but also for hybrid organic-inorganic perovskites. With this approach, we comprehensively explore up to 15,659 materials, unveiling 14 unreported lead-free perovskites with suitable band gaps for photovoltaics. Notably, MASnBr(3), FA(2)SnGeBr(6), MA(2)AuAuBr(6), FA(2)AuAuBr(6), FA(2)InBiCl(6), FA(2)InBiBr(6), and Ba2InBiO6 stand out with direct band gaps, small effective masses, low exciton binding energies, and high stabilities.
WOS:001225417800001
2024-05-03
REVIEWED
Funder | Grant Number |
Schweizerischer Nationalfonds zur F?rderung der Wissenschaftlichen Forschung | 200020-172524 |
Swiss National Science Foundation (SNSF) | 22173058 |
National Natural Science Foundation of China | |