Nonlinear and Time Varying System Identification Using a Novel Adaptive Fully Connected Recurrent Wavelet Network

Zahra Motazedian, A. Safavi
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引用次数: 1

Abstract

This paper presents a novel Adaptive Fully Connected Recurrent Wavelet Network (AFCRWN) for online identification of nonlinear dynamic and time varying systems. The AFCRWN inherits the architecture of fully connected recurrent neural network proposed by Williams & Zipser. Since the AFCRWN incorporates translated and dilated versions of scaling function and wavelet instead of global functions as activation functions of hidden neurons, this would lead to a significant improvement of network performance. An adaptive gradient based algorithm is used to adjust the shapes and weights of scaling functions and wavelets. Simulation results for modeling of different dynamic nonlinear and dynamic nonlinear and time varying systems are presented. Comparisons with a network of neurons with wavelets and a network of neurons with sigmoid functions are provided. Computer simulation results have successfully validated the superior performance of AFCRWN.
基于自适应全连通循环小波网络的非线性时变系统辨识
提出了一种用于非线性动态时变系统在线辨识的自适应全连通循环小波网络(AFCRWN)。AFCRWN继承了Williams & Zipser提出的全连接递归神经网络架构。由于AFCRWN采用缩放函数和小波的翻译和扩展版本,而不是全局函数作为隐藏神经元的激活函数,这将导致网络性能的显著提高。采用基于自适应梯度的算法对尺度函数和小波的形状和权值进行调整。给出了不同动态非线性和动态非线性时变系统建模的仿真结果。提供了与具有小波的神经元网络和具有s型函数的神经元网络的比较。计算机仿真结果成功验证了AFCRWN的优越性能。
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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