一种基于鲁棒校正模型的电磁仿真和射频测量神经网络建模框架

Srujana Adusumilli, M. Almalkawi, V. Devabhaktuni
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引用次数: 0

摘要

本文介绍了一种新的基于人工神经网络的仿真和测量校正建模方法。该方法通过系统地反转输入输出变量,提高了传统神经网络模型的精度,同时保持了相对于复杂的基于知识的神经网络(kbnn)的模型结构简单。该方法有助于对训练数据昂贵的实际电磁结构进行准确/快速的神经网络建模。通过两个实例验证了所提建模方法的准确性、有效性和可行性。第一个示例是在天线馈电点加载环形介电环形谐振器(DRR)的宽带线单极天线。第二个例子是涂有非均匀损耗材料的金属波导(WG)管,用于增强电磁干扰(EMI)屏蔽。所提出的方法对射频电路设计人员来说意义重大,因为它有助于通过减少全波电磁模拟和/或射频测量的次数来建立准确的模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A robust correction model based neural network modeling framework for electromagnetic simulations and RF measurements
This paper introduces a new artificial neural networks (ANNs)-based correction-modeling approach for simulations and measurements. The proposed approach improves the accuracy of conventional neural models by reversing input-output variables in a systematic manner, while keeping the model structures simple relative to complex knowledge-based ANNs (KBNNs). The approach facilitates accurate/fast neural network modeling of practical electromagnetic (EM) structures, for which, training data is expensive. Two examples are presented to demonstrate the accuracy, efficiency, and feasibility of the proposed modeling approach. The first example is a broadband wire monopole antenna loaded by an annular dielectric ring resonator (DRR) at the antenna feed point. The second example is a metallic waveguide (WG) tube coated with inhomogeneous lossy materials for enhanced electromagnetic interference (EMI) shielding. The proposed approach is significant to RF circuit designers since it helps in building accurate models using reduced numbers of full-wave EM simulations and/or RF measurements.
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