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arxiv 2401.10998 v1 pith:JG5JUD4V submitted 2024-01-19 cond-mat.mtrl-sci

Leveraging Domain Adaptation for Accurate Machine Learning Predictions of New Halide Perovskites

classification cond-mat.mtrl-sci
keywords accurateadaptationcompoundsdomainhalideimprovementlearningmachine
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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We combine graph neural networks (GNN) with an inexpensive and reliable structure generation approach based on the bond-valence method (BVM) to train accurate machine learning models for screening 222,960 halide perovskites using statistical estimates of the DFT/PBE formation energy (Ef), and the PBE and HSE band gaps (Eg). The GNNs were fined tuned using domain adaptation (DA) from a source model, which yields a factor of 1.8 times improvement in Ef and 1.2 - 1.35 times improvement in HSE Eg compared to direct training (i.e., without DA). Using these two ML models, 48 compounds were identified out of 222,960 candidates as both stable and that have an HSE Eg that is relevant for photovoltaic applications. For this subset, only 8 have been reported to date, indicating that 40 compounds remain unexplored to the best of our knowledge and therefore offer opportunities for potential experimental examination.

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