铁氧体磁芯
变压器
电感器
功率损耗
铁氧体(磁铁)
磁芯
计算机科学
深度学习
电子工程
电气工程
材料科学
工程类
人工智能
电磁线圈
电压
作者
Miguel Angel Carmona,Juan A. Gallego,Alfonso Martinez
出处
期刊:PCIM Europe digital days 2020; International Exhibition and Conference for Power Electronics, Intelligent Motion, Renewable Energy and Energy Management
日期:2020-07-07
卷期号:: 1-7
摘要
A new method for predicting ferrite properties, particularly core loss density, is proposed. Through the usage of this method, core loss in power transformers and inductors can be predicted with little use of measuring equipment, only in the training phase. Improvement on these predictions is done with the measurement at specific points with the help of deep learning methods. The architecture is described and the loss versus frequency, temperature, and peak magnetic field graphs from a ferrite material are processed. Finally, an inductor is built and measured, and its loss compared with the one predicted by the proposed method.
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