Small power litz wire ferrite inductor loss model based on neural network
编号:79 访问权限:仅限参会人 更新:2023-11-20 13:45:40 浏览:490次 口头报告

报告开始:2023年12月10日 11:45(Asia/Shanghai)

报告时间:15min

所在会场:[S9] Transformer technology and applications [S9] Transformer technology and applications

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摘要
Several kilowatt litz wire inductor has wide application, including automotive, renewable energy, household power supply, etc., which has a promising market for the next ten years. The traditional method of inductor loss calculation is a compromise between simplicity and accuracy. For example, iGSE (improved generalized Steinmetz equation) is commonly seen in core loss calculation, and the Dowell equation is commonly seen in high-frequency winding loss calculation. However, these methods, although simple and clear in the calculation, are not accurate. A neural network has been proven a powerful tool for modeling. In this paper, the authors try to model the inductor loss – core and winding loss – in a neural network approach. For core loss, Magnets dataset and three layers neural networks are used. Because magnetic bias is not included in the dataset, this model is only suitable when bias is absent. For winding loss, the sequence-to-sequence transformer network is introduced. The results show much-improved accuracy but with increased calculation complexity. So this neural network approach is suitable for higher accuracy design. Finally, the authors open-sourced the inductor loss code. Users just need to provide the necessary design parameters and working points to get inductor loss in their design.
关键词
inductor,core loss,windin,winding loss
报告人
Huizhong Sun
PhD student Aalborg University

稿件作者
Huizhong Sun Aalborg University
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重要日期
  • 会议日期

    12月08日

    2023

    12月10日

    2023

  • 11月01日 2023

    初稿截稿日期

  • 12月10日 2023

    注册截止日期

主办单位
IEEE IAS
承办单位
Southwest Jiaotong University (SWJTU)
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