Estimation of TbCo composition from local-minimum-energy magnetic images taken by magneto-optical Kerr effect microscope by using machine learning

Shiori Kuno, Shinji Deguchi, Satoshi Sumi, Hiroyuki Awano, Kenji Tanabe
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Abstract

Recently, the incorporation of machine learning (ML) has heralded significant advancements in materials science. For instance, in spintronics, it has been shown that magnetic parameters, such as the Dzyaloshinskii–Moriya interaction, can be estimated from magnetic domain images using ML. Magnetic materials exhibit hysteresis, leading to numerous magnetic states with locally minimized energy (LME) even within a single sample. However, it remains uncertain whether these parameters can be derived from LME states. In our research, we explored the estimation of material parameters from an LME magnetic state using a convolutional neural network. We introduced a technique to manipulate LME magnetic states, combining the ac demagnetizing method with the magneto-optical Kerr effect. By applying this method, we generated multiple LME magnetic states from a single sample and successfully estimated its material composition. Our findings suggest that ML emphasizes not the global domain structures that are readily perceived by humans but the more subtle local domain structures that are often overlooked. Adopting this approach could potentially facilitate the estimation of magnetic parameters from any state observed in experiments, streamlining experimental processes in spintronics.
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利用机器学习从磁光克尔效应显微镜拍摄的局部最小能磁性图像中估算锑钴成分
最近,机器学习(ML)的应用预示着材料科学的重大进步。例如,在自旋电子学中,研究表明磁性参数(如 Dzyaloshinskii-Moriya 相互作用)可以通过使用 ML 从磁域图像中估算出来。磁性材料表现出滞后性,导致即使在单个样品中也会出现许多局部能量最小化(LME)的磁态。然而,这些参数是否能从 LME 状态推导出来仍不确定。在我们的研究中,我们探索了利用卷积神经网络从 LME 磁态估算材料参数的方法。我们引入了一种操纵 LME 磁态的技术,将交流退磁法与磁光克尔效应相结合。通过应用这种方法,我们从一个样品中生成了多个 LME 磁态,并成功地估算出了其材料成分。我们的研究结果表明,ML 强调的不是人类容易感知的全局磁畴结构,而是经常被忽视的更微妙的局部磁畴结构。采用这种方法有可能促进从实验中观察到的任何状态估算磁参数,从而简化自旋电子学的实验过程。
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