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Elucidating proximity magnetism through polarized neutron reflectometry and machine learning

  • Nina Andrejevic
  • , Zhantao Chen
  • , Thanh Nguyen
  • , Leon Fan
  • , Henry Heiberger
  • , Ling Jie Zhou
  • , Yi Fan Zhao
  • , Cui Zu Chang
  • , Alexander Grutter
  • , Mingda Li

Research output: Contribution to journalArticlepeer-review

Abstract

Polarized neutron reflectometry is a powerful technique to interrogate the structures of multilayered magnetic materials with depth sensitivity and nanometer resolution. However, reflectometry profiles often inhabit a complicated objective function landscape using traditional fitting methods, posing a significant challenge for parameter retrieval. In this work, we develop a data-driven framework to recover the sample parameters from polarized neutron reflectometry data with minimal user intervention. We train a variational autoencoder to map reflectometry profiles with moderate experimental noise to an interpretable, low-dimensional space from which sample parameters can be extracted with high resolution. We apply our method to recover the scattering length density profiles of the topological insulator-ferromagnetic insulator heterostructure Bi2Se3/EuS exhibiting proximity magnetism in good agreement with the results of conventional fitting. We further analyze a more challenging reflectometry profile of the topological insulator-antiferromagnet heterostructure (Bi,Sb)2Te3/Cr2O3 and identify possible interfacial proximity magnetism in this material. We anticipate that the framework developed here can be applied to resolve hidden interfacial phenomena in a broad range of layered systems.

Original languageEnglish (US)
Article number011421
JournalApplied Physics Reviews
Volume9
Issue number1
DOIs
StatePublished - Mar 1 2022

All Science Journal Classification (ASJC) codes

  • General Physics and Astronomy

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