Transfer Learning-Assisted Analytical Quasi-3D Surrogate Modeling for Electromagnetic Performance Prediction of AFPMs Considering Eccentricity

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초록

Axial flux permanent magnet motors (AFPMs) are prone to static and dynamic eccentricities due to assembly and manufacturing tolerances, which result in nonuniform air gaps. Such eccentricities distort the air gap flux density and consequently affect electromagnetic performance, including back EMF and cogging torque. In addition, tolerance analysis and robust design under eccentric conditions require repeated performance evaluations. However, high-fidelity 3D FEA entails a very high computational cost. This paper proposes a surrogate modeling framework that predicts electromagnetic performance using a quasi-3D analytical method considering eccentricity and calibrates the analytical predictions to approach the 3D FEA results by applying transfer learning. The proposed approach improves the computational efficiency of AFPM tolerance analysis under eccentric conditions and provides a practical electromagnetic performance prediction model applicable in the design stage. © 1965-2012 IEEE.

키워드

analytical methodAxial flux permanent magnet motor (AFPM)eccentricitypermeance modulationquasi-3D modelthree-dimensional finite element analysis (3D FEA)transfer learning
제목
Transfer Learning-Assisted Analytical Quasi-3D Surrogate Modeling for Electromagnetic Performance Prediction of AFPMs Considering Eccentricity
저자
Kim, Hye-SeongPark, Soo-HwanLee, Yong-MinPark, Min-Ro
DOI
10.1109/TMAG.2026.3701418
발행일
2026
유형
Article in press
저널명
IEEE Transactions on Magnetics