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High throughput inverse design and Bayesian optimization of functionalities: spin splitting in two-dimensional compounds

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arxiv 2201.09977 v1 pith:RZDWVUOR submitted 2022-01-24 cond-mat.mtrl-sci

High throughput inverse design and Bayesian optimization of functionalities: spin splitting in two-dimensional compounds

classification cond-mat.mtrl-sci
keywords materialsdesignbayesianoptimizationworkflowapplicationsdatabaseinverse
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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The development of spintronic devices demands the existence of materials with some kind of spin splitting (SS). In this Data Descriptor, we build a database of ab initio calculated SS in 2D materials. More than that, we propose a workflow for materials design integrating an inverse design approach and a Bayesian inference optimization. We use the prediction of SS prototypes for spintronic applications as an illustrative example of the proposed workflow. The prediction process starts with the establishment of the design principles (the physical mechanism behind the target properties), that are used as filters for materials screening, and followed by density functional theory (DFT) calculations. Applying this process to the C2DB database, we identify and classify 358 2D materials according to SS type at the valence and/or conduction bands. The Bayesian optimization captures trends that are used for the rationalized design of 2D materials with the ideal conditions of band gap and SS for potential spintronics applications. Our workflow can be applied to any other material property.

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