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Classification and Prediction of Skyrmion Material Based on Machine Learning

  • Dan Liu*
  • , Zhixin Liu
  • , Jin E. Zhang
  • , Yinong Yin
  • , Jianfeng Xi
  • , Lichen Wang
  • , Jie Fu Xiong
  • , Ming Zhang
  • , Tongyun Zhao
  • , Jiaying Jin
  • , Fengxia Hu
  • , Jirong Sun
  • , Jun Shen
  • , Baogen Shen
  • *Corresponding author for this work
  • Beijing Technology and Business University
  • CAS - Ningbo Institute of Material Technology and Engineering
  • Inner Mongolia University of Science and Technology
  • CAS - Institute of Physics
  • Zhejiang University
  • CAS - Technical Institute of Physics and Chemistry

Research output: Contribution to journalArticlepeer-review

Abstract

The discovery and study of skyrmion materials play an important role in basic frontier physics research and future information technology. The database of 196 materials, including 64 skyrmions, was established and predicted based on machine learning. A variety of intrinsic features are classified to optimize the model, and more than a dozen methods had been used to estimate the existence of skyrmion in magnetic materials, such as support vector machines, k-nearest neighbor, and ensembles of trees. It is found that magnetic materials can be more accurately divided into skyrmion and non-skyrmion classes by using the classification of electronic layer. Note that the rare earths are the key elements affecting the production of skyrmion. The accuracy and reliability of random undersampling bagged trees were 87.5% and 0.89, respectively, which have the potential to build a reliable machine learning model from small data. The existence of skyrmions in LaBaMnO is predicted by the trained model and verified by micromagnetic theory and experiments.

Original languageEnglish
Article number0082
JournalResearch
Volume6
DOIs
StatePublished - 2023

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