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通过隐藏潜在变量解码铁电体中畴结构与功能之间的关系

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

作者信息

Kalinin Sergei V, Kelley Kyle, Vasudevan Rama K, Ziatdinov Maxim

机构信息

The Center for Nanophase Materials Sciences, Oak Ridge National Laboratory, Oak Ridge, Tennessee 37831, United States.

The Computational Sciences and Engineering Division, Oak Ridge National Laboratory, Oak Ridge, Tennessee 37831, United States.

出版信息

ACS Appl Mater Interfaces. 2021 Jan 13;13(1):1693-1703. doi: 10.1021/acsami.0c15085. Epub 2021 Jan 4.

Abstract

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 () and spectral to image () 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).

摘要

铁电材料中的极化切换机制从根本上与局部畴结构和结构缺陷的存在相关联,这两者都可以充当成核和钉扎中心,并产生影响畴壁动力学的局部静电和机械去极化场。然而,畴结构与极化动力学之间的一般关联机制仅得到了微弱的探索,这妨碍了对相关物理机制的深入理解。在此,利用卷积编码器 - 解码器网络探索铁电材料中局部畴结构与切换行为之间的相关性,通过对潜在变量的编码实现图像到光谱()以及光谱到图像()的转换。后者反映了这样一种假设,即畴结构与极化切换之间的关系是简约的,也就是说,基于少数局部机制。对潜在变量分布及其实空间表示的分析为局部切换行为的可预测性以及相关物理机制提供了深入理解。我们进一步提出,这些相关关系被违反的区域,即从畴结构预测极化动力学的能力降低的区域,是详细研究的明显目标,例如在自动化实验的背景下。这种方法提供了一种工作流程,用于确定局部光谱响应与局部结构之间相关性的存在,并且可以普遍应用于诸如压电力显微镜(PFM)、扫描隧道显微镜(STM)及光谱学以及扫描透射电子显微镜(STEM)中的电子能量损失谱(EELS)等光谱成像技术。

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