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Superstrength permanent magnets with iron-based superconductors by data- and researcher-driven process design

Physics

Superstrength permanent magnets with iron-based superconductors by data- and researcher-driven process design

A. Yamamoto, S. Tokuta, et al.

This groundbreaking research by Akiyasu Yamamoto and colleagues reveals how machine learning can optimize the microstructures of iron-based high-temperature superconductors, resulting in the creation of a Ba0.6K0.4Fe2As2 permanent magnet with a magnetic field strength 2.7 times greater than prior models. Discover how this innovation paves the way for superstrength quasipermanent magnets and advances in superconductivity!

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~3 min • Beginner • English
Abstract
Iron-based high-temperature (high-Tc) superconductors have good potential to serve as materials in next-generation superstrength quasipermanent magnets owing to their distinctive topological and superconducting properties. However, their unconventional high-Tc superconductivity paradoxically associates with anisotropic pairing and short coherence lengths, causing challenges by inhibiting supercurrent transport at grain boundaries in polycrystalline materials. In this study, we employ machine learning to manipulate intricate polycrystalline microstructures through a process design that integrates researcher- and data-driven approaches via tailored software. Our approach results in a bulk Ba0.6K0.4Fe₂As₂ permanent magnet with a magnetic field that is 2.7 times stronger than that previously reported. Additionally, we demonstrate magnetic field stability exceeding 0.1 ppm/h for a practical 1.5 T permanent magnet, which is a vital aspect of medical magnetic resonance imaging. Nanostructural analysis reveals contrasting outcomes from data- and researcher-driven processes, showing that high-density defects and bipolarized grain boundary spacing distributions are primary contributors to the magnet's exceptional strength and stability.
Publisher
NPG Asia Materials
Published On
Mar 01, 2024
Authors
Akiyasu Yamamoto, Shinnosuke Tokuta, Akimitsu Ishii, Akinori Yamanaka, Yusuke Shimada, Mark D. Ainslie
Tags
iron-based superconductors
machine learning
magnetic field
Ba0.6K0.4Fe2As2
supercurrent transport
defects
grain boundaries
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