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Genetic neural-based modeling of AC resistance of heating coil used for high-frequency inverter-fed induction cooker

机译:基于遗传神经网络的高频逆变电磁炉加热线圈交流电阻建模

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摘要

The present paper deals with modeling of AC resistance of twisted litz wires used for high-frequency inverter-fed induction cooker. Several traditional approaches are available, most of which have concentrated in deriving the analytical relationships between the AC resistances with the parameters of the wire. However, it is very difficult to get the exact relationship, due to several reasons. An attempt is made in this paper to model the AC resistance using a three-layered feed-forward Neural Network. For this purpose, four inputs (wire type, number of strand, number of spiral turn and operating frequency) and one output as AC resistance have been considered. Since the performance of Neural Network alone might not be optimal; it is optimized using a binary-coded Genetic Algorithm. Performances of the proposed approach were compared with the method of AC resistance computation proposed by Ferreira. Genetic-neural system has given a very close accuracy, and the computational complexity was found to be very low. Thus, it is suitable for online implementations.
机译:本文涉及用于高频逆变器馈电电磁炉的绞合双绞线的交流电阻的建模。有几种传统方法可用,其中大多数集中在推导AC电阻与导线参数之间的分析关系。但是,由于多种原因,很难获得确切的关系。本文尝试使用三层前馈神经网络对交流电阻建模。为此,已经考虑了四个输入(导线类型,股数,螺旋匝数和工作频率)和一个输出作为交流电阻。由于仅神经网络的性能可能不是最佳的;使用二进制编码的遗传算法对其进行了优化。将该方法的性能与Ferreira提出的交流电阻计算方法进行了比较。遗传神经系统的精度非常接近,发现计算复杂度很低。因此,它适合在线实施。

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