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A neural network combined with a three-dimensional finite element method applied to optimize eddy current and temperature distributions of traveling wave induction heating system

机译:一种神经网络与三维有限元方法相结合,用于优化行波感应加热系统的涡流和温度分布

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In this paper, neural networks with a finite element method (FEM) were introduced to predict eddy current distributions on the continuously moving thin conducting strips in traveling wave induction heating (TWIH) equipments. A method that combines a neural network with a finite element method (FEM) is proposed to optimize eddy current distributions of TWIH heater. The trained network used for tested examples shows quite good accuracy of the prediction. The results have then been used with reference to a double-side TWIH in order to analyze the distributions of the magnetic field and eddy current intensity, which accelerates the iterative solution process for the nonlinear coupled electromagnetic matters. The FEM computation of temperature converged conspicuously faster using the prediction results as initial values than using the zero values, and the number of iterations is reduced dramatically. Simulation results demonstrate the effectiveness and characteristics of the proposed method.
机译:在本文中,引入了具有有限元方法(FEM)的神经网络,以预测涡流驱动波感应加热(TWIH)设备的连续移动薄导电条上的涡流分布。提出了一种与有限元方法(FEM)结合神经网络的方法,以优化TWIH加热器的涡流分布。用于测试示例的训练有素的网络显示了预测的非常好的准确性。然后参考双侧TWIH使用结果,以分析磁场和涡流强度的分布,这加速了非线性耦合电磁物质的迭代解决方法。使用预测结果与初始值的预测结果相比,温度的有限元计算比使用零值,并且迭代的数量大幅降低。仿真结果证明了所提出的方法的有效性和特征。

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