Predicting the Curie temperature of magnetic materials with automated calculations across chemistries and structures
Marian Arale Br\"annvall, Gabriel Persson, Luis Casillas-Trujillo,, Rickard Armiento, and Bj\"orn Alling

TL;DR
This paper presents a new computational approach using density functional theory to predict the Curie temperature of magnetic materials, enabling efficient high-throughput screening and design of magnetic alloys with tailored properties.
Contribution
The authors develop a physically motivated model that predicts Curie temperatures with high accuracy across various chemistries and structures, improving upon existing methods.
Findings
Best model achieves ~126 K MAE in predictions.
Model extends to Fe-Co alloys, aiding alloy design.
Incorporates magnetic entropy and neighbor effects.
Abstract
We develop a technique for predicting the Curie temperature of magnetic materials using density functional theory calculations suitable to include in high-throughput frameworks. We apply four different models, including physically relevant observables and assess numerical constants by studying 32 ferro- and ferrimagnets. With the best-performing model, the Curie temperature can be predicted with a mean absolute error of approximately 126 K. As predictive factors, the models consider either the energy differences between the magnetic ground state and a magnetically disordered paramagnetic state, or the average constraining fields acting on magnetic moments in a disordered local moments calculation. Additionally, the energy differences are refined by incorporating the magnetic entropy of the paramagnetic state and the number of nearest magnetic neighbors of the magnetic atoms. The most…
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Taxonomy
TopicsMachine Learning in Materials Science · X-ray Diffraction in Crystallography
