Publication | Closed Access
Accelerating the discovery of hidden two-dimensional magnets using machine learning and first principle calculations
37
Citations
12
References
2017
Year
EngineeringMachine LearningLow-dimensional MagnetismMagnetic ResonanceFirst Principle CalculationsOne-dimensional MagnetismMagnetismHidden MaterialsData SciencePhysic Aware Machine LearningMagnetohydrodynamicsMaterials SciencePhysicsHidden Two-dimensional MagnetsMagnetic MeasurementMagnetic MaterialSpintronicsFerromagnetismNatural SciencesCondensed Matter PhysicsApplied PhysicsMagnetic PropertyMagnetic Field
Two-dimensional (2D) magnets are explored in terms of data science and first principle calculations. Machine learning determines four descriptors for predicting the magnetic moments of 2D materials within reported 216 2D materials data. With the trained machine, 254 2D materials are predicted to have high magnetic moments. First principle calculations are performed to evaluate the predicted 254 2D materials where eight undiscovered stable 2D materials with high magnetic moments are revealed. The approach taken in this work indicates that undiscovered materials can be surfaced by utilizing data science and materials data, leading to an innovative way of discovering hidden materials.
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