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Main Authors: Aldarawsheh, Amal, Alia, Ahmed, Blügel, Stefan
Format: Preprint
Published: 2026
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Online Access:https://arxiv.org/abs/2605.22125
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author Aldarawsheh, Amal
Alia, Ahmed
Blügel, Stefan
author_facet Aldarawsheh, Amal
Alia, Ahmed
Blügel, Stefan
contents The identification and classification of different magnetic states are essential for understanding the complex behavior of magnetic systems. Traditional approaches that rely on handcrafted features or manual inspection often fall short, particularly when dealing with subtle or topologically complex spin textures. In this study, we present an automated deep learning model that employs an EfficientNetV1B0 Convolutional Neural Network to classify nine distinct magnetic states, including both ferromagnetic (FM) and antiferromagnetic (AFM) spin textures such as AFM skyrmions and AFM stripe domains. The spin configurations are generated through atomistic spin dynamics simulations using the Spirit code, then visualized with VFRendering to produce RGB images, which serve as inputs to the classification model.
format Preprint
id arxiv_https___arxiv_org_abs_2605_22125
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle CNN-Based Classifier for Automated Identification of Magnetic States in Spin Dynamics Simulations
Aldarawsheh, Amal
Alia, Ahmed
Blügel, Stefan
Materials Science
The identification and classification of different magnetic states are essential for understanding the complex behavior of magnetic systems. Traditional approaches that rely on handcrafted features or manual inspection often fall short, particularly when dealing with subtle or topologically complex spin textures. In this study, we present an automated deep learning model that employs an EfficientNetV1B0 Convolutional Neural Network to classify nine distinct magnetic states, including both ferromagnetic (FM) and antiferromagnetic (AFM) spin textures such as AFM skyrmions and AFM stripe domains. The spin configurations are generated through atomistic spin dynamics simulations using the Spirit code, then visualized with VFRendering to produce RGB images, which serve as inputs to the classification model.
title CNN-Based Classifier for Automated Identification of Magnetic States in Spin Dynamics Simulations
topic Materials Science
url https://arxiv.org/abs/2605.22125