Optimization of noncollinear magnetic ordering temperature in Y-type hexaferrite by machine learning
Yonghong Li,
Jing Zhang,
Linfeng Jiang
et al.
Abstract:Searching the optimal doping compositions of the Y-type hexaferrite Ba2Mg2Fe12O22 remains a long-standing challenge for enhanced non-collinear magnetic transition temperature (TNC). Instead of the conventional trial-and-error approach, the composition-property descriptor is established via a data driven machine learning method named sure independence screening and sparsifying operator. Based on the chosen efficient and physically interpretable descriptor, a series of Y-type hexaferrite compositions are predict… Show more
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