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Discovery of all-inorganic lead-free perovskites with high photovoltaic performance <i>via</i> ensemble machine learning

Xia Cai, Yan Li, Jianfei Liu, Hao Zhang, Jianguo Pan, Yiqiang Zhan

2023Materials Horizons11 citationsDOI

Abstract

ensemble machine learning for nearly 12 million all-inorganic perovskites to obtain candidates with non-toxicity and excellent photovoltaic performance. Based on experimental data, models for structure identification and band gap classification are established for , and a physics-inspired multi-component neural network is proposed as part of the exploration of the model's logical structure. It is found that extracting key features for input into the model and treating non-key features as supplements make model learning easier and are more effective in reducing the model parameters. Then, based on established ensemble models as well as the new criteria of ion radius difference and the optimization rules of toxicity and cost, over 80 000 candidates are screened. Among the 34 lead-free identified with suitable band gaps and negative formation energies through first principles calculations, 17 candidates have theoretical power conversion efficiencies over 20%. The Debye temperature of 10 lead-free , basically Bi-based compounds, is greater than 350 K, which is advantageous for suppressing nonradiative recombination and thermally induced degradation.

Topics & Concepts

Lead (geology)Photovoltaic systemMaterials scienceNanotechnologyOptoelectronicsPerovskite (structure)Engineering physicsChemical engineeringElectrical engineeringEngineeringGeologyGeomorphologyPerovskite Materials and ApplicationsMachine Learning in Materials ScienceQuantum Dots Synthesis And Properties