Study on Compressibility According to Mixing Ratio and Milling Time of Fe-6.5wt.%Si

Author:

Kim Jaemin1,Lee Seonbong2

Affiliation:

1. Department of Mechanical Engineering, Keimyung University, Daegu 42601, Republic of Korea

2. Department of Automotive Engineering, Keimyung University, Daegu 42601, Republic of Korea

Abstract

Recently, researchers have focused on improving motor performance and efficiency. To manufacture motors with performance and efficiency higher than those of motors manufactured through the additive process, compressibility verification through the parameter control of soft magnetic composites (SMCs) is essential. To this end, this study aims to select suitable powders for manufacturing high-performance, high-efficiency motors by exploring powder mixing ratios and milling times. Through physical property tests, the optimal mixing ratio is predicted using the Multi-Particle Finite Element Method (MPFEM) and powder compression molding analysis, and compressibility is predicted in view of the influence of a change in particle size as a function of the powder mixing ratio and milling time. In addition, based on the result of a comparative analysis of density through experiments and an analysis of internal defects through SEM, a 50:50 mixing ratio of hybrid atomizing and gas atomizing powders milled for 3 h provided the best compressibility. Therefore, the use of SMC cores fabricated using powder compression molding is expected to improve motor performance and efficiency.

Funder

Daegu Metropolitan City 2023 Future Mobility Leading Technology Development Project

Publisher

MDPI AG

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