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Multi-State-Space Modeling for Magnetic Core Loss Prediction Using Empirical Approach
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- Citation Author(s):
- Submitted by:
- Peng Liu
- Last updated:
- Sun, 03/02/2025 - 00:20
- DOI:
- 10.21227/tee6-4s06
- License:
- Categories:
- Keywords:
Abstract
MagNet is a large-scale dataset designed to enable researchers modeling magnetic core loss using machine learning to accelerate the design process of power electronics. The dataset contains a large amount of voltage and current data of different magnetic components with different shapes of waveforms and different properties measured in the real world. Researchers may use these data as pairs of excitations and responses to build up dynamic magnetic models or calculate the core loss to derive static models.
MagNet is a large-scale dataset designed to enable researchers modeling magnetic core loss using machine learning to accelerate the design process of power electronics. The dataset contains a large amount of voltage and current data of different magnetic components with different shapes of waveforms and different properties measured in the real world. Researchers may use these data as pairs of excitations and responses to build up dynamic magnetic models or calculate the core loss to derive static models.