The 65h JSAP Spring Meeting, 2018

Presentation information

Poster presentation

10 Spintronics and Magnetics » 10 Spintronics and Magnetics(Poster)

[17p-P10-1~93] 10 Spintronics and Magnetics(Poster)

Sat. Mar 17, 2018 4:00 PM - 6:00 PM P10 (P)

4:00 PM - 6:00 PM

[17p-P10-65] Feature extraction of coercivity using topological machine learning

Masato Kotsugi1,3, Takumi Yamada1,3, Shingo Suzuki1, Yuta Suzuki1, Ippei Obayashi2, Hiroaki Hiraoka2,3,4 (1.Tokyo Univ. of Science, 2.AIMR Tohoku Univ., 3.MI2I-NIMS, 4.AIP center RIKEN)

Keywords:Machine learning, magnetic domain, Topological data analysis

We visualized the origin of coercivity in the magnetic domain by using machine learning with topological data analysis. We utilized “Persistent homology”, which is known as a compact descriptor for characterizing multiscale topological features in data, for feature extraction from magnetic domain structure. In the combination of principal component analysis (PCA), we could visualize point clouds contributing to coercivity in magnetic domain structure.