Statistical analysis of neural network modeling and identification of nonlinear systems with memory

M. Ibnkahla
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引用次数: 21

Abstract

The paper presents a statistical analysis of neural network modeling and identification of nonlinear systems with memory. The nonlinear system model is comprised of a discrete-time linear filter H followed by a zero-memory nonlinear function g(.). The system is corrupted by input and output independent Gaussian noise. The neural network is used to identify and model the unknown linear filter H and the unknown nonlinearity g(.). The network architecture is composed of a linear adaptive filter and a two-layer nonlinear neural network (with an arbitrary number of neurons). The network is trained using the backpropagation algorithm. The paper studies the MSE surface and the stationary points of the adaptive system. Recursions are derived for the mean transient behavior of the adaptive filter coefficients and the neural network weights for slow learning. It is shown that the adaptive filter converges to a scaled version of the unknown filter H, and that the nonlinear neural network converges to an approximation of the unknown nonlinearity. Computer simulations show good agreement between theory and experimental results.
具有记忆的非线性系统神经网络建模与辨识的统计分析
本文对具有记忆的非线性系统的神经网络建模与辨识进行了统计分析。非线性系统模型由一个离散时间线性滤波器H和一个零记忆非线性函数g(.)组成。系统被输入和输出无关的高斯噪声破坏。利用神经网络对未知线性滤波器H和未知非线性滤波器g(.)进行识别和建模。该网络结构由一个线性自适应滤波器和一个两层非线性神经网络(具有任意数量的神经元)组成。该网络使用反向传播算法进行训练。本文研究了自适应系统的均方误差曲面和平稳点。推导了自适应滤波系数和神经网络权值的平均暂态行为递归。结果表明,自适应滤波器收敛于未知滤波器H的缩放版本,非线性神经网络收敛于未知非线性的近似。计算机模拟结果表明理论与实验结果吻合较好。
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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