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A CAD approach based on artificial neural networks for conductor- backed edge coupled coplanar waveguides

机译:基于人工神经网络的导体后缘耦合共面波导的CAD方法

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In this paper, a new conformal mapping quasi static approximation method based on ANNs is used to calculate accurately the odd-and even-mode characteristic impedances, coupling coefficient and effective permittivities of CB-ECCPWs. ANNs have been recently recognized as a fast and flexible tool for RF and microwave modeling, analysis and design. ANN models are developed from measured or simulated microwave data training process. Resulting ANN models are used in place of CPU-intensive theoretical for fast accurate microwave design, analysis and optimization. The ANN employed in this paper is the MLPNN. Four learning algorithms BR, LM, QN and SCG are used to train the MLPNNs. These learning algorithms are employed to obtain better performance and faster convergence with simpler structure.
机译:本文采用一种新的基于人工神经网络的共形映射准静态逼近方法,准确计算了CB-ECCPW的奇偶模式特征阻抗,耦合系数和有效介电常数。人工神经网络最近被公认为是用于射频和微波建模,分析和设计的快速,灵活的工具。人工神经网络模型是根据测量或模拟的微波数据训练过程开发的。所得的ANN模型代替了CPU密集型理论,可进行快速准确的微波设计,分析和优化。本文采用的人工神经网络是MLPNN。四种学习算法BR,LM,QN和SCG用于训练MLPNN。这些学习算法用于以更简单的结构获得更好的性能和更快的收敛。

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