Efficiently charting the space of mixed vacancy-ordered perovskites by machine-learning encoded atomic-site information
Fan Zhang, Li Fu, Weiwei Gao, Peihong Zhang, Jijun Zhao

TL;DR
This paper introduces a machine learning model that encodes atomic-site information to efficiently predict properties of mixed vacancy-ordered perovskites, enabling rapid screening of diverse compositions for optoelectronic applications.
Contribution
The study develops a transformer-inspired graph neural network that accurately predicts electronic properties of mixed VODPs, including complex high-entropy systems, with high precision.
Findings
Accurately predicts band gaps and formation energies with low RMSE.
Reproduces experimental bandgap bowing in Sn-based VODPs.
Identifies unconventional mixing effects leading to smaller band gaps.
Abstract
Vacancy-ordered double perovskites (VODPs) are promising alternatives to three-dimensional lead halide perovskites for optoelectronic and photovoltaic applications. Mixing these materials creates a vast compositional space, allowing for highly tunable electronic and optical properties. However, the extensive chemical landscape poses significant challenges in efficiently screening candidates with target properties. In this study, we illustrate the diversity of electronic and optical characteristics as well as the nonlinear mixing effects on electronic structures within mixed VODPs. For mixed systems with limited local environment options, the information regarding atomic-site occupation in-principle determines both structural configurations and all essential properties. Building upon this concept, we have developed a model that integrates a data-augmentation scheme with a…
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Taxonomy
TopicsMachine Learning in Materials Science · Geochemistry and Geologic Mapping · Optical Imaging and Spectroscopy Techniques
