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The use of neural networks combined with FEM to optimize the coil geometry and structure of transverse flux induction equipments

机译:使用神经网络与有限元法相结合来优化横向磁通感应设备的线圈几何形状和结构

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摘要

A method is presented to optimize transverse flux induction heating (TFIH) inductor for a uniform temperature distribution. There were two neural networks used for eddy current and temperature field prediction respectively. The trained networks used for tested examples show a reasonable accuracy for the prediction, and then can be used for two purposes. One is to provide a good guessed value of the temperature dependent parameters for each finite element and an initial value for temperature field solution, which speeds up the iterative solution process for the nonlinear coupled electromagnetic thermal problems. The other is to be used in the optimization process.
机译:提出了一种优化横向磁通感应加热(TFIH)感应器以获得均匀温度分布的方法。有两个神经网络分别用于涡流和温度场的预测。用于测试示例的训练有素的网络显示出合理的预测准确度,然后可用于两个目的。一种方法是为每个有限元提供与温度有关的参数的良好猜测值,并为温度场解提供初始值,从而加快非线性耦合电磁热问题的迭代解过程。另一个将在优化过程中使用。

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