Accurate Machine Learning Predictions of Coercivity in High-Performance Permanent Magnets
Churna Bhandari, Gavin N. Nop, Jonathan D.H. Smith, and Durga Paudyal

TL;DR
This paper develops machine learning models trained on experimental, DFT, and micromagnetic data to accurately predict coercivity in high-performance permanent magnets, surpassing traditional simulation methods in speed and accuracy.
Contribution
The study introduces a machine learning approach that integrates experimental and computational data to predict coercivity and magnetic properties, improving accuracy over micromagnetic simulations.
Findings
ML accurately predicts coercivity for various magnetic materials.
Uniaxial magneto-crystalline anisotropy is identified as the key factor for coercivity.
DFT confirms Nd-site contributions to anisotropy and predicts Curie temperature.
Abstract
Increased demand for high-performance permanent magnets in the electric vehicle and wind turbine industries has prompted the search for cost-effective alternatives.Discovering new magnetic materials with the desired intrinsic and extrinsic permanent magnet properties presents a significant challenge to researchers because of issues with the global supply of rare-earth elements, material stability, and a low maximum magnetic energy product BH.While first-principle density functional theory (DFT) predicts materials' magnetic moments, magneto-crystalline anisotropy constants, and exchange interactions, it cannot compute coercivity ().Although it is possible to calculate theoretically with micromagnetic simulations, the predicted value is larger than the experiment by almost an order of magnitude, due to the Brown paradox.To circumvent these, we employ machine learning…
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Taxonomy
TopicsMagnetic Properties of Alloys · Magnetic properties of thin films · Magnetic Properties and Applications
