Accurate Crystal Structure Prediction of New 2D Hybrid Organic Inorganic Perovskites
Nima Karimitari, William J. Baldwin, Evan W. Muller, Zachary J. L., Bare, W. Joshua Kennedy, G\'abor Cs\'anyi, Christopher Sutton

TL;DR
This paper introduces a machine learning interatomic potential based on MACE architecture for accurate and efficient prediction of 2D hybrid organic-inorganic perovskite structures, validated through experiments and enabling high-throughput screening.
Contribution
The work develops a transferable MLIP trained on diverse HOIP structures, allowing reliable structure prediction and screening of new compositions at scale.
Findings
Achieves chemical accuracy on unseen structures
Successfully predicts structures of known and novel HOIPs
Laboratory synthesis confirms prediction accuracy
Abstract
Low dimensional hybrid organic-inorganic perovskites (HOIPs) represent a promising class of electronically active materials for both light absorption and emission. The design space of HOIPs is extremely large, since a diverse space of organic cations can be combined with different inorganic frameworks. This immense design space allows for tunable electronic and mechanical properties, but also necessitates the development of new tools for in silico high throughput analysis of candidate structures. In this work, we present an accurate, efficient, transferable and widely applicable machine learning interatomic potential (MLIP) for predicting the structure of new 2D HOIPs. Using the MACE architecture, an MLIP is trained on 86 diverse experimentally reported HOIP structures. The model is tested on 73 unseen perovskite compositions, and achieves chemical accuracy with respect to the reference…
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Taxonomy
TopicsPerovskite Materials and Applications · Conducting polymers and applications · Covalent Organic Framework Applications
MethodsSparse Evolutionary Training
