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Magnetic Hamiltonian parameter estimation using deep learning techniques

机译:磁汉密尔顿人参数估计使用深层学习技术

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Understanding spin textures in magnetic systems is extremely important to the spintronics and it is vital to extrapolate the magnetic Hamiltonian parameters through the experimentally determined spin. It can provide a better complementary link between theories and experimental results. We demonstrate deep learning can quantify the magnetic Hamiltonian from magnetic domain images. To train the deep neural network, we generated domain configurations with Monte Carlo method. The errors from the estimations was analyzed with statistical methods and confirmed the network was successfully trained to relate the Hamiltonian parameters with magnetic structure characteristics. The network was applied to estimate experimentally observed domain images. The results are consistent with the reported results, which verifies the effectiveness of our methods. On the basis of our study, we anticipate that the deep learning techniques make a bridge to connect the experimental and theoretical approaches not only in magnetism but also throughout any scientific research.
机译:了解磁性系统中的旋转纹理对闪光灯非常重要,并且通过实验确定的旋转将磁汉密尔顿参数推断至关重要。它可以提供理论与实验结果之间更好的互补联系。我们展示了深度学习可以量化磁域图像的磁汉密尔顿人。要培训深神经网络,我们使用蒙特卡罗方法生成域配置。通过统计方法分析了估计的错误,并确认了网络成功培训,以涉及磁性结构特性的哈密顿参数。应用网络估计实验观察到的域图像。结果与报告的结果一致,验证了我们方法的有效性。在我们的研究的基础上,我们预计深度学习技术使桥梁不仅可以在磁性中连接实验和理论方法,而且在整个科学研究中也是如此。

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