Nonlinear system identification using multilayer perceptrons with locally recurrent synaptic structure

A. Back, A. Tsoi
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引用次数: 9

Abstract

It is proved that a multilayer perceptron (MLP) with infinite impulse response (IIR) synapses can represent a class of nonlinear block-oriented systems. This includes the well-known Wiener, Hammerstein, and cascade or sandwich systems. Previous methods used to model these systems such as the Volterra series representation are known to be extremely inefficient, and so the IIR MLP represents an effective method of modeling block-oriented nonlinear systems. This was demonstrated by simulations on two models within the class. The significance of the IIR MLP is that it demonstrates that a useful range of systems can be modeled by a network architecture based on the MLP and adaptive linear filters.<>
具有局部递归突触结构的多层感知器非线性系统辨识
证明了具有无限脉冲响应(IIR)突触的多层感知器(MLP)可以表示一类非线性块导向系统。这包括著名的Wiener, Hammerstein和级联或三明治系统。以前用于建模这些系统的方法,如Volterra级数表示,是非常低效的,因此IIR MLP代表了一种有效的建模面向块的非线性系统的方法。这在两个模型上得到了验证。IIR MLP的意义在于,它证明了基于MLP和自适应线性滤波器的网络体系结构可以对一系列有用的系统进行建模。
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