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Using a Wiener-Type Recurrent Neural Network with the Minimum Description Length Principle for Dynamic System Identification.

Authors :
Carbonell, Jaime G.
Siekmann, Jörg
De-Shuang Huang
Heutte, Laurent
Loog, Marco
Jeen-Shing Wang
Hung-Yi Lin
Yu-Liang Hsu
Ya-Ting Yang
Source :
Advanced Intelligent Computing Theories & Applications. With Aspects of Artificial Intelligence; 2007, p192-201, 10p
Publication Year :
2007

Abstract

This paper presents a novel Wiener-type recurrent neural network with the minimum description length (MDL) principle for unknown dynamic nonlinear system identification. The proposed Wiener-type recurrent network resembles the conventional Wiener model that consists of a dynamic linear subsystem cascaded with a static nonlinear subsystem. The novelties of our approach include: 1) the realization of a conventional Wiener model into a simple connectionist recurrent network whose output can be expressed by a nonlinear transformation of a linear state-space equation; 2) the state-space equation mapped from the network topology can be used to analyze the characteristics of the network using the well-developed theory of linear systems; and 3) the overall network structure can be determined by the MDL principle effectively using only the input-output measurements. Computer simulations and comparisons with some existing recurrent networks have successfully confirmed the effectiveness and superiority of the proposed Wiener-type network with the MDL principle. [ABSTRACT FROM AUTHOR]

Details

Language :
English
ISBNs :
9783540742012
Database :
Complementary Index
Journal :
Advanced Intelligent Computing Theories & Applications. With Aspects of Artificial Intelligence
Publication Type :
Book
Accession number :
33100565
Full Text :
https://doi.org/10.1007/978-3-540-74205-0_22