Machine Learning Assisted Characterization of Labyrinthine Pattern Transitions

ORAL

Abstract

Labyrinthine structures are ubiquitous emerging patterns in out-of-equilibrium nonlinear systems. They exhibit disordered stripe patterns with different orientations, sizes, and grain-boundary structures without well-defined order parameters, leading to difficulty in their systematic characterization. In this study, we present a comprehensive approach to characterizing labyrinthine structures [1]. We develop advanced machine learning based pattern recognition techniques to identify the types and locations of topological defects in magnetic labyrinthine patterns from experimental images [2]. Applying this method to single-crystal Bi-substituted Yttrium Iron Garnet films, we uncover a distinct morphological transition between two zero-field labyrinthine structures. Crucially, the pair distribution functions of the topological defects reveal subtle differences between labyrinthine structures which are beyond conventional characterization methods. By systematically analyzing the spatial correlations and geometric properties of these defects, we provide new insights into the athermal dynamics governing the observed morphological transitions. Our work demonstrates that machine learning based recognition techniques enable novel studies of rich and complex labyrinthine type structures universal to many pattern formation systems.

[1] K. Shimizu et al., arXiv:2311.10558 (2023).

[2] V. Y. Okubo et al., IEEE Access 12, 92419 (2024).

*The experimental work was partially funded by NSF grant DMR # 2016909 and by the 3Cavalier grant from the University of Virginia. This work was also supported by JSPS KAKENHI Grant Number No. JP21J20812. Gia-Wei Chern was partially supported by the US Department of Energy Basic Energy Sciences under Contract No. DE-SC0020330. K.S. was supported by the Program for Leading Graduate Schools (MERIT-WINGS).

Publication: K. Shimizu et al., arXiv:2311.10558 (2023).
V. Y. Okubo et al., IEEE Access 12, 92419 (2024).

Presenters

  • Kotaro Shimizu

    • RIKEN CEMS
    • RIKEN

Authors

  • Kotaro Shimizu

    • RIKEN CEMS
    • RIKEN
  • Vinicius Y Okubo

    • University of São Paulo
  • Rose Knight

    • University of Virginia
  • Ziyuan Wang

    • University of Virginia
  • Joseph Burton

    • University of Virginia
  • Hae Y Kim

    • University of São Paulo
  • Gia-Wei Chern

    • University of Virginia
  • Bellave S Shivaram

    • University of Virginia