This repository contains the slides and code related to the following webinar:
- 2023 MagNet Challenge Webinar: Equation-based Baseline Models
- IEEE PELS Webinar - May 12 2023
- Thomas Guillod - Dartmouth College
This webinar focuses on equation-based loss models for soft-magnetic materials:
- Several models are presented (SE, iGSE, ISE, iGCC, and Stenglein equation).
- The model performances are evaluated for different frequencies, waveshapes, and temperatures.
- The advantages and drawbacks of equation-based models and machine learning models are discussed.
- A MATLAB implementation of the iGSE and iGCC is discussed in detail and the pitfalls are highlighted.
- slides.pdf - Slides of the webinar
- paper.pdf - APEC paper introducing the iGCC
- run_igse.m - Parametrize and evaluate the iGSE model
- run_igcc.m - Parametrize and evaluate the iGCC model
- For the software implementation, the EPCOS/TDK N87 ferrite material is considered.
- The material is measured at ambient temperature (25C) without DC bias.
- For parametrizing the models, the following dataset is used:
- 346 symmetric triangular waveforms (50% duty cycle)
- Dataset contained in N87_25C_fit.mat
- For evaluating the models, the following dataset is used:
- 2446 asymmetric triangular waveforms (10% to 90% duty cycle)
- Dataset contained in N87_25C_eval.mat
- Both datasets are extracted from the following repository:
- Guillod, T. and Lee, J. S. and Li, H. and Wang, S. and Chen, M. and Sullivan, C. R.
- Calculation of Ferrite Core Losses with Arbitrary Waveforms using the Composite Waveform Hypothesis: Reproducibility Dataset
- Zenodo Repository, 2022
- 10.5281/zenodo.7368936
Warning This implementation is provided for pedagogical purposes:
- The goal of this code is to highlight the typical workflow of equation-based loss models.
- The implementation is not meant to be comprehensive and/or accurate.
Warning In order to limit the complexity of the code, several assumptions are made:
- Single material measured at ambient temperature
- Only triangular signals are considered
- No DC bias and relaxation effects
- Simple model parametrization
- Reduced dataset size
- Tested with MATLAB R2021a and R2023a.
- The
optimization_toolbox
is required. - The
signal_toolbox
is required. - The
statistics_toolbox
is required.
Thomas Guillod - GitHub Profile
This project is licensed under the MIT License, see LICENSE.md.