4.8 Article

Toward Decoding the Relationship between Domain Structure and Functionality in Ferroelectrics via Hidden Latent Variables

Journal

ACS APPLIED MATERIALS & INTERFACES
Volume 13, Issue 1, Pages 1693-1703

Publisher

AMER CHEMICAL SOC
DOI: 10.1021/acsami.0c15085

Keywords

ferroelectrics; machine learning; neural networks; latent space; scanning probe microscopy

Funding

  1. Center for Nanophase Materials Sciences
  2. U.S. Department of Energy, Office of Science, Basic Energy Sciences, Materials Sciences and Engineering Division

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This study investigates the correlation between local domain structures and switching behavior in ferroelectric materials using convolutional encoder-decoder networks. The encoding of latent variables enables image to spectral and spectral to image translations, revealing the relationship between local spectral responses and local structure.
Polarization switching mechanisms in ferroelectric materials are fundamentally linked to local domain structure and the presence of the structural defects, which both can act as nucleation and pinning centers and create local electrostatic and mechanical depolarization fields affecting wall dynamics. However, the general correlative mechanisms between domain structure and polarization dynamics are only weakly explored, precluding insight into the associated physical mechanisms. Here, the correlation between local domain structures and switching behavior in ferroelectric materials is explored using convolutional encoder-decoder networks, enabling image to spectral (im2spec) and spectral to image (spec2im) translations via encoding of latent variables. The latter reflect the assumption that the relationship between domain structure and polarization switching is parsimonious, i.e., is based upon a small number of local mechanisms. The analysis of latent variables distributions and their real-space representations provides insight into the predictability of the local switching behavior and hence associated physical mechanisms. We further pose that the regions where these correlative relationships are violated, i.e., predictability of the polarization dynamics from domain structure is reduced, represent the obvious target for detailed studies, e.g., in the context of automated experiments. This approach provides a workflow to establish the presence of correlation between local spectral responses and local structure and can be universally applied to spectral imaging techniques such as piezoresponse force microscopy (PFM), scanning tunneling microscopy (STM) and spectroscopy, and electron energy loss spectroscopy (EELS) in scanning transmission electron microscopy (STEM).

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