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Magnetic components are responsible for a significant portion of the losses in switched-mode power converters. Predicting these losses is vital to a successful design process. Core losses, specifically, are hard to predict, and many standard modeling techniques are often inaccurate. This paper presents a novel approach that integrates an existing, equation-based, core loss algorithm based on Steinmetz parameters with a simple random forest regression model to provide increased accuracy in core loss predictions without incurring significant computational costs. The regression model uses the equation-based model as a starting point and attempts to predict and correct the error through a multiplicative correction coefficient. This hybrid approach is trained and validated using the MagNet database of experimentally measured core loss data that includes a wide variety of materials and operating conditions 1. Results are presented showing that the hybrid model reduces errors to an average of about one-fifth of what they were when using conventional equation-based techniques.
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Bailey Sauter
University of Colorado Boulder
Skye Reese
University of Colorado Boulder
Shivangi Sinha
All India Institute of Medical Sciences Bhopal
Lockheed Martin (United States)
Colorado Power Electronics (United States)
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Sauter et al. (Sun,) studied this question.
synapsesocial.com/papers/68e77b3bb6db6435876efc5b — DOI: https://doi.org/10.1109/apec48139.2024.10509368