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Automated Time Domain Modeling of Linear and Nonlinear Microwave Circuits Using Recurrent Neural Networks

机译:基于递归神经网络的线性和非线性微波电路的自动时域建模

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摘要

In this article, a recurrent neural network (RNN) method is employed for dynamic time-domain modeling of both linear and nonlinear microwave circuits. An automated RNN modeling technique is proposed to efficiently determine the training waveform distribution and internal RNN structure during the offline training process. This technique extends a recent automatic model generation (AMG) algorithm from frequency-domain model generation to dynamic time-domain model generation. Two types of applications of the algorithm are presented, transient electromagnetic (EM) behavior modeling of microwave structures, and time- domain envelope modeling of power amplifiers (PA). For transient EM modeling, we consider EM structures with varying material and geometrical parameters. AMG automatically varies the EM structural parameters during training and drives time-domain EM simulators to generate necessary amount of data for RNN to learn. AMG aims to model the transient behavior with minimum RNN order while satisfying accuracy requirements. In modeling PA behavior, an envelope formulation is used to specifically learn the AM/AM and AM/PM distortions due to third-generation (3G) digital modulation input. The RNN PA model is able to model these time domain distortions after training and can accurately model the amplifier behavior in both time (AM/AM, AM/PM) and frequency (spectral re-growth).
机译:在本文中,采用递归神经网络(RNN)方法对线性和非线性微波电路进行动态时域建模。提出了一种自动RNN建模技术,以在离线训练过程中有效地确定训练波形分布和内部RNN结构。该技术将最近的自动模型生成(AMG)算法从频域模型生成扩展到动态时域模型生成。提出了该算法的两种类型的应用:微波结构的瞬态电磁(EM)行为建模和功率放大器(PA)的时域包络建模。对于瞬态EM建模,我们考虑具有变化的材料和几何参数的EM结构。 AMG在训练过程中会自动更改EM结构参数,并驱动时域EM仿真器以生成必要数量的数据供RNN学习。 AMG旨在以最小的RNN阶数来建模瞬态行为,同时满足精度要求。在对PA行为进行建模时,采用包络公式专门了解由于第三代(3G)数字调制输入而引起的AM / AM和AM / PM失真。 RNN PA模型能够在训练后对这些时域失真进行建模,并且可以在时间(AM / AM,AM / PM)和频率(频谱重新增长)方面准确地建模放大器的行为。

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