The Applied Power Electronics Conference (APEC) 2026
This study proposes a data-driven modeling approach for magnetic components by integrating double pulse testing (DPT) with deep learning. Traditional modeling methods often rely on idealized assumptions, making it difficult to reproduce parasitic parameters in high-frequency regions precisely and requiring considerable effort for model tuning. The proposed method efficiently captures the nonlinear and dynamic behavior of magnetic components using DPT waveforms. It employs convolutional neural networks (CNNs) to regress parasitic parameters from time-series voltage and current waveforms. The results demonstrate the feasibility of accurate parameter estimation using this approach.






