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通过非高斯线性模型和深度核学习探索因果物理机制:铁电畴结构的应用

Exploring Causal Physical Mechanisms via Non-Gaussian Linear Models and Deep Kernel Learning: Applications for Ferroelectric Domain Structures.

作者信息

Liu Yongtao, Ziatdinov Maxim, Kalinin Sergei V

机构信息

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

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

出版信息

ACS Nano. 2022 Jan 25;16(1):1250-1259. doi: 10.1021/acsnano.1c09059. Epub 2021 Dec 29.

DOI:10.1021/acsnano.1c09059
PMID:34964598
Abstract

Rapid emergence of multimodal imaging in scanning probe, electron, and optical microscopies has brought forth the challenge of understanding the information contained in these complex data sets, targeting the intrinsic correlations between different channels, and further exploring the underpinning causal physical mechanisms. Here, we develop such an analysis framework for Piezoresponse Force Microscopy. We argue that under certain conditions, we can bootstrap experimental observations with the prior knowledge of materials structure to get information on certain nonobserved properties, and demonstrate linear causal analysis for PFM observables. We further demonstrate that the strength of individual causal links between complex descriptors can be ascertained using the deep kernel learning (DKL) model. In this DKL analysis, we use the prior information on domain structure within the image to predict the physical properties. This analysis demonstrates the correlative relationships between morphology, piezoresponse, elastic property, etc., at nanoscale. The prediction of morphology and other physical parameters illustrates a mutual interaction between surface condition and physical properties in ferroelectric materials. This analysis is universal and can be extended to explore the correlative relationships of other multichannel data sets, and allow for high-fidelity reconstruction of underpinning functionalities and physical mechanisms.

摘要

扫描探针显微镜、电子显微镜和光学显微镜中多模态成像的迅速兴起带来了挑战,即理解这些复杂数据集中包含的信息,确定不同通道之间的内在相关性,并进一步探索潜在的因果物理机制。在此,我们为压电力显微镜开发了这样一个分析框架。我们认为,在某些条件下,我们可以利用材料结构的先验知识引导实验观察,以获取某些未观察到的属性的信息,并对压电力显微镜的可观测值进行线性因果分析。我们进一步证明,可以使用深度核学习(DKL)模型确定复杂描述符之间各个因果联系的强度。在这种DKL分析中,我们利用图像中域结构的先验信息来预测物理属性。该分析展示了纳米尺度下形态、压电力响应、弹性属性等之间的相关关系。形态和其他物理参数预测说明了铁电材料中表面条件与物理属性之间的相互作用。这种分析具有通用性,可扩展用于探索其他多通道数据集的相关关系,并实现对潜在功能和物理机制的高保真重建。

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