학술논문

Topology Optimization for Motor Using Multitask Convolutional Neural Network Under Multiple Current Conditions
Document Type
Periodical
Author
Source
IEEE Transactions on Magnetics IEEE Trans. Magn. Magnetics, IEEE Transactions on. 58(9):1-4 Sep, 2022
Subject
Fields, Waves and Electromagnetics
Torque
Optimization
Convolutional neural networks
Training
Finite element analysis
Permanent magnet motors
Magnetic flux density
Design optimization
finite-element analysis
machine learning
motor
multitask CNN
Language
ISSN
0018-9464
1941-0069
Abstract
This article proposes a new topology optimization (TO) method for a motor that leads to an optimized solution in less time under multiple current conditions while considering the torque ripple-order component. To consider the different characteristics, a multitask CNN is newly employed. The multitask CNN predicts multiple torque performances based on the current conditions and cross-sectional magnetic flux density distribution and applies it to the TO process. As a result, the average torque and harmonic components of the target motor improved by 8.9% and 48.2%, respectively, under multiple current conditions. Furthermore, the computational cost for TO was reduced by 95.1% using the proposed method, compared with that of conventional methods. Therefore, the proposed method enables fast optimization of torque ripple-order components under a wide range of current conditions.