Computational Materials Science2022,Vol.21010.DOI:10.1016/j.commatsci.2022.111476

Discovery of direct band gap perovskites for light harvesting by using machine learning

Rath, Smarak Priyanga, G. Sudha Nagappan, N. Thomas, Tiju
Computational Materials Science2022,Vol.21010.DOI:10.1016/j.commatsci.2022.111476

Discovery of direct band gap perovskites for light harvesting by using machine learning

Rath, Smarak 1Priyanga, G. Sudha 2Nagappan, N. 1Thomas, Tiju1
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作者信息

  • 1. Indian Inst Technol Madras
  • 2. Mepco Schlenk Engn Coll
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Abstract

An approach that would allow quick determination of compositions that are most likely to be direct band gap materials would significantly accelerate research on light-harvesting materials. Inorganic perovskites are attractive for this purpose since they afford compositional flexibility, while also offering stability. Here, ABX(3) inorganic perovskites (A and B are cations and X is an anion) are classified into direct band gap and indirect band gap materials by using the XGBOOST (eXtreme Gradient BOOST) classifier. We use a dataset containing 1528 ABX(3) compounds (X = O, F, Cl, Br, I, S, Se, Te, N, or P) along with information on the nature of their band gap (direct or indirect). All the data is taken from the Materials Project database. Descriptors for these materials are generated using the Matminer python package. Ten-fold cross-validation with the XGBOOST classifier is used on the dataset and the average accuracy is found to be 72.8%. To generate a confusion matrix, the dataset is once again split into a training set and a testing set after cross-validation. Subsequently, the confusion matrix is generated for that particular test set. It is found that the precision for the prediction of direct band gap materials is 81% i.e., 81% of the materials predicted to be direct band gap materials are actually direct band gap materials. Thus, machine learning can be an effective tool for discovering novel direct band gap perovskites. Finally, SHAP (SHapley Additive exPlanations) analysis is performed to determine the most important descriptors. One key insight gained from the SHAP analysis is that the absence of transition metals and elements belonging to groups IIIA to VIIIA with atomic number greater than 20 increases the probability of the perovskite having a direct band gap.

Key words

Perovskite/Machine learning/Nature of band gap/XGBOOST/Matminer/GLASS-TRANSITION TEMPERATURE

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出版年

2022
Computational Materials Science

Computational Materials Science

EISCI
ISSN:0927-0256
被引量13
参考文献量49
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