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Dynamic behavioral modeling of nonlinear circuits using a novel recurrent neural network technique

机译:使用新型递归神经网络技术的非线性电路动态行为建模

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摘要

In this paper, a new method called local-global feedback recurrent neural network (LGFRNN) is proposed for dynamic behavioral modeling of nonlinear circuits. The structure of the proposed method is based on recurrent neural network and constructed by time-delayed local and global feedbacks. Adding time-delayed feedbacks has a great impact on the learning capability of previous neural network-based methods. Moreover, time-delayed local feedbacks alleviate the problem of slow convergency of the conventional neural network-based methods in the training phase. The proposed LGFRNN can be trained only by having sampled input-output waveforms of the original circuit without knowing the internal details of the circuit. A training algorithm based on real-time recurrent learning (RTRL) is used to train LGFRNN. After the training phase, the proposed LGFRNN provides accurate macromodel of a nonlinear circuit. The proposed method is more accurate compared with the conventional neural-based models (which do not benefit from time-delayed local-global feedbacks) and also significantly reduces the training time of the conventional models. Moreover, proposed LGFRNN is faster than the existing models in simulation tools. The validity of the proposed method is verified by time-domain modeling of three nonlinear devices including commercial TI's SN74AHCT540 device, five-stage complementary metal-oxide-semiconductor (CMOS) receiver, and commercial TI's LM324 power amplifier.
机译:本文提出了一种新的方法,称为局部-全局反馈递归神经网络(LGFRNN),用于非线性电路的动态行为建模。该方法的结构基于递归神经网络,并由时延的局部和全局反馈构成。添加延时反馈对以前基于神经网络的方法的学习能力有很大影响。此外,延时的局部反馈缓解了传统的基于神经网络的方法在训练阶段收敛缓慢的问题。所提出的LGFRNN只能在不知道电路内部细节的情况下,通过对原始电路的输入输出波形进行采样来进行训练。基于实时递归学习(RTRL)的训练算法用于训练LGFRNN。在训练阶段之后,提出的LGFRNN提供了非线性电路的精确宏模型。与传统的基于神经网络的模型(不能从延迟的局部全局反馈中受益)相比,所提出的方法更加准确,并且显着减少了传统模型的训练时间。而且,提出的LGFRNN比仿真工具中的现有模型更快。该方法的有效性通过时域建模对三种非线性器件进行了验证,包括商用TI的SN74AHCT54​​0器件,五级互补金属氧化物半导体(CMOS)接收器以及商用TI的LM324功率放大器。

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