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Oral: Explainable machine learning to predict the properties of ABX<sub>3</sub> perovskite materials for photocatalytic applications

ORAL

Abstract

The positions of electronic band edges are crucial for assessing a material's ability to function in solar energy conversion devices that generate fuels from sunlight. In this study, we trained and compared explainable machine learning (ML) algorithms for predicting the band edge position of the conduction band minimum (ECBM) and valence band maximum (EVBM) of perovskite materials that have the formula ABX3 with the A, B, and X referring to the 3 elements that make the cubic 3-dimensional framework of the perovskite compounds. Six supervised learning models: CatBoost, Random Forest, XGBoost, LightGBM, SVM, and Decision Tree were employed to study the band edge position of these materials, and the relationships that exist between the input features in predicting these materials are discussed. Input features influencing the ML model decisions were initially determined by performing a correlation analysis on the multi-dimensional input feature space. This shows features with high collinearity and features with limited correlation. The ML models that were trained on the screened input features show that CatBoost and XGBoost models yielded the least predictive errors and the highest coefficient of determination of R2 ≥ 91% than other approaches in the testing phase for ECBM. In addition, for EVBM, CatBoost, XGBoost, and Random Forest performed better than other models in the testing phase with R2 value of approximately 99%. Furthermore, the Shapley Additive Explanation (SHAP) was used to explain the models based on the elemental composition of each perovskite compound and the features used from the physics standpoint. One key insight gained from the SHAP analysis is that the Pauling electronegativity of the B site cation contributes significantly to predicting ECBM, while that of the X site anion plays a significant role in EVBM prediction. This further confirms that these sites of the cubic perovskites play an important role in the electronic properties of this class of materials and reveal the potential of ML to predict properties useful in photocatalytic applications.

Presenters

  • Simeon Abolade

    Atlantic Technological University

Authors

  • Simeon Abolade

    Atlantic Technological University

  • Shittu B Akinpelu

    Atlantic Technological University

  • Emmanuel Okafor

    SDAIA-KFUPM Joint Research Center for Artificial Intelligence, King Fahd University of Petroleum and Minerals, 31261, Saudi Arabia, King Fahd University of Petroleum and Minerals,

  • David O Obada

    Mathematical Modelling and Intelligent Systems for Health and Environment Research Group, Atlantic Technological University, Ash Lane, Ballytivnan, Sligo, F91 YW50, Ireland, Atlantic Technological University

  • Syam R Kumar R

    Mathematical Modelling and Intelligent Systems for Health and Environment Research Group, Atlantic Technological University, Ash Lane, Ballytivnan, Sligo, F91 YW50, Ireland, Atlantic Technological University

  • Aniekan Ukpong

    School of Chemistry and Physics, University of KwaZulu-Natal, Pietermaritzburg 3201, South Africa, University of KwaZulu-Natal, Pietermaritzburg, University of Kwazulu-Natal

  • John Healy

    Modelling & Computation for Health And Society (MOCHAS), Atlantic Technological University, Ash Lane, Ballytivnan, Sligo, F91 YW50, Ireland, Atlantic Technological University

  • Akinlolu Akande

    Mathematical Modelling and Intelligent Systems for Health and Environment Research Group, Atlantic Technological University, Ash Lane, Ballytivnan, Sligo, F91 YW50, Ireland, Atlantic Technological University