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Accelerated Discovery of Efficient Solar-cell Materials using Quantum and Machine-learning Methods :Spectroscopic limited maximum efficiency (SLME) data

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Figshare2019-06-03 更新2026-04-08 收录
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https://figshare.com/articles/Accelerated_Discovery_of_Efficient_Solar-cell_Materials_using_Quantum_and_Machine-learning_Methods_________Spectroscopic_limited_maximum_efficiency_SLME_data/8218940/1
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Solar-energy plays an important role in solving serious environmental problems and meeting high-energy demand. However, the lack of suitable materials hinders further progress of this technology. Here, we present the largest inorganic solar-cell material search to date using density functional theory (DFT) and machine-learning approaches. We calculated the spectroscopy limited maximum efficiency (SLME) using Tran-Blaha modified Becke-Johnson potential for 5097 non-metallic materials, and identified 1997 candidates with a SLME higher than 10%, including 934 candidates with a suitable convex-hull stability and effective carrier mass. Screening for 2D-layered cases, we found 58 potential materials and performed G<sub>0</sub>W<sub>0</sub> calculations on a subset to estimate the prediction-uncertainty. As the above DFT methods are still computationally expensive, we developed a high accuracy machine learning model to pre-screen efficient materials and applied it to over a million materials. Our results provide a general framework and universal strategy for the design of high-efficiency solar cell materials. The data and tools are publicly distributed at: https://www.ctcms.nist.gov/~knc6/JVASP.html, https://www.ctcms.nist.gov/jarvisml/, https://jarvis.nist.gov/ and https://github.com/usnistgov/jarvis .
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2019-06-03
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