Microwave cylindrical cavity applicators modeling using knowledge based neural network

Z. Stanković, B. Milovanovic, S. Lvkovic
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引用次数: 4

Abstract

In this paper, the loaded cylindrical metallic cavity with circular cross-section is modeled using knowledge based neural networks (KBNN). The load in the form of a homogeneous dielectric slab with losses located on the bottom of the cavity is considered. The appropriate neural model is investigated in which knowledge about resonant frequency behaviour, defined in approximate approach, is integrated. In the aim of comparison, the considered cavity is modeled using classical multilayer perception (MLP) network, too. For the same training set the appropriate MLP model, giving best results, is investigated. The accuracy of both models as well as the advantage of using KBNN model is illustrated through the example of TM/sub 112/ mode.
基于知识的神经网络的微波圆柱腔应用器建模
本文采用基于知识的神经网络(KBNN)对具有圆形截面的圆柱形金属腔进行建模。考虑了均匀介质板形式的载荷,损耗位于腔体底部。研究了适当的神经模型,在该模型中集成了以近似方法定义的有关谐振频率行为的知识。为了进行比较,我们也使用经典的多层感知(MLP)网络对所考虑的空腔进行建模。对于相同的训练集,研究了给出最佳结果的合适的MLP模型。以TM/sub 112/模式为例,说明了两种模型的精度以及使用KBNN模型的优势。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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