DocumentCode
2576210
Title
Online identification of nonlinear time-variant systems using structurally adaptive radial basis function networks
Author
Junge, Thomas F. ; Unbehauen, Heinz
Author_Institution
Control Eng. Lab., Ruhr-Univ., Bochum, Germany
Volume
2
fYear
1997
fDate
4-6 Jun 1997
Firstpage
1037
Abstract
This paper presents a new algorithm to train direct linear feedthrough radial basis function (RBF) networks, especially designed for online identification of time-variant nonlinear dynamical systems. The algorithm basically explores the network´s input space and the model error to determine automatically the number of RBF neurons, and to adapt their center positions (adaptive error dependent clustering). The widths and the output layer weights are adapted using two in series connected recursive least squares algorithms. This lead to parsimonious models of SISO or MIMO dynamical systems, a primordial aim when solving nonlinear system identification problems. The effectiveness and the performance of the new method is demonstrated by the identification of two highly nonlinear systems (time-invariant and time-variant types, respectively)
Keywords
MIMO systems; feedforward neural nets; function approximation; identification; learning (artificial intelligence); least squares approximations; nonlinear dynamical systems; real-time systems; time-varying systems; MIMO systems; SISO systems; adaptive radial basis function networks; function approximation; learning algorithm; nonlinear dynamical systems; online identification; recursive least squares; time-variant systems; Adaptive control; Adaptive systems; Algorithm design and analysis; Clustering algorithms; Least squares approximation; Neurons; Nonlinear dynamical systems; Nonlinear systems; Programmable control; Radial basis function networks;
fLanguage
English
Publisher
ieee
Conference_Titel
American Control Conference, 1997. Proceedings of the 1997
Conference_Location
Albuquerque, NM
ISSN
0743-1619
Print_ISBN
0-7803-3832-4
Type
conf
DOI
10.1109/ACC.1997.609685
Filename
609685
Link To Document