Simulation-trained machine learning models for Lorentz transmission electron microscopy

A. McCray, Alec Bender, Amanda Petford-Long, C. Phatak
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Abstract

Understanding the collective behavior of complex spin textures, such as lattices of magnetic skyrmions, is of fundamental importance for exploring and controlling the emergent ordering of these spin textures and inducing phase transitions. It is also critical to understand the skyrmion–skyrmion interactions for applications such as magnetic skyrmion-enabled reservoir or neuromorphic computing. Magnetic skyrmion lattices can be studied using in situ Lorentz transmission electron microscopy (LTEM), but quantitative and statistically robust analysis of the skyrmion lattices from LTEM images can be difficult. In this work, we show that a convolutional neural network, trained on simulated data, can be applied to perform segmentation of spin textures and to extract quantitative data, such as spin texture size and location, from experimental LTEM images, which cannot be obtained manually. This includes quantitative information about skyrmion size, position, and shape, which can, in turn, be used to calculate skyrmion–skyrmion interactions and lattice ordering. We apply this approach to segmenting images of Néel skyrmion lattices so that we can accurately identify skyrmion size and deformation in both dense and sparse lattices. The model is trained using a large set of micromagnetic simulations as well as simulated LTEM images. This entirely open-source training pipeline can be applied to a wide variety of magnetic features and materials, enabling large-scale statistical studies of spin textures using LTEM.
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用于洛伦兹透射电子显微镜的模拟训练机器学习模型
了解复杂自旋纹理(如磁性天丝晶格)的集体行为,对于探索和控制这些自旋纹理的新兴有序性以及诱导相变具有根本性的重要意义。此外,了解磁性天元与天元之间的相互作用对于磁性天元水库或神经形态计算等应用也至关重要。利用原位洛伦兹透射电子显微镜(LTEM)可以研究磁性天空离子晶格,但从 LTEM 图像中对天空离子晶格进行定量和统计分析却很困难。在这项工作中,我们展示了在模拟数据上训练的卷积神经网络可用于对自旋纹理进行分割,并从 LTEM 实验图像中提取自旋纹理大小和位置等定量数据,而这些数据是无法手动获取的。这包括有关自旋微粒大小、位置和形状的定量信息,反过来,这些信息可用于计算自旋微粒与自旋微粒之间的相互作用和晶格有序性。我们将这一方法应用于内尔斯空粒子晶格的图像分割,从而可以准确识别密集和稀疏晶格中的斯空粒子大小和变形。我们使用大量微磁模拟和模拟 LTEM 图像对模型进行了训练。这一完全开源的训练管道可应用于各种磁性特征和材料,从而利用 LTEM 对自旋纹理进行大规模统计研究。
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Computational experiments with cellular-automata generated images reveal intrinsic limitations of convolutional neural networks on pattern recognition tasks Simulation-trained machine learning models for Lorentz transmission electron microscopy Enhanced spectrum prediction using deep learning models with multi-frequency supplementary inputs Cell detection with convolutional spiking neural network for neuromorphic cytometry The development of thermodynamically consistent and physics-informed equation-of-state model through machine learning
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