Optimization of noncollinear magnetic ordering temperature in Y-type hexaferrite by machine learning

Author:

Li Yonghong1,Zhang Jing1,Jiang Linfeng2,Zhang Long1,Zhang Yugang1,Wu Xueliang1ORCID,Chai Yisheng1ORCID,Zhou Xiaoyuan2ORCID,Zhou Zizhen2ORCID

Affiliation:

1. Low Temperature Physics Laboratory, College of Physics, Chongqing University 1 , Chongqing 401331, China

2. Center of Quantum Materials and Devices, Chongqing University 2 , Chongqing 401331, China

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 predicted to hold high TNC, among which the BaSrMg0.28Co1.72Fe10Al2O22 is then experimentally validated. Test results indicate that, under appropriate external magnetic field conditions, the TNC of this composition reaches up to 568 K, and its magnetic transition temperature is also elevated to 735 K. This work offers a machine learning-based route to develop room temperature single phase multiferroics for device applications.

Publisher

AIP Publishing

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