T. Motomatsu, T. Koga, N. Shigei, M. Yamaguchi, A. Itagaki and Y. Ishizuka, “A Data-Driven Inductor Modeling Technique Using Parametric Circuit Simulation and Deep Learning,” in IEEE Transactions on Magnetics, doi: 10.1109/TMAG.2023.3299110.

Abstract:

Optimization of magnetic components design, such as power inductors and transformers, is most needed to improve the performance of future power electronics. However, power electronics designers face the  problem of not having sufficient magnetic component models available for their designs. In this paper,  we propose a method to construct a unique nonlinear magnetic component model using parametric circuit simulation and deep learning.