DocumentCode
2633897
Title
A neural network approach to identification of structural systems
Author
Korbicz, Józef ; Janczak, Andrzej
Author_Institution
Dept. of Robotics & Software Eng., Tech. Univ. of Zielona Gora, Poland
Volume
1
fYear
1996
fDate
17-20 Jun 1996
Firstpage
98
Abstract
Artificial neural networks are widely used for identification of nonlinear control systems. Two common approaches are multichannel neural networks and recurrent networks. The nonlinear autoregressive moving averages with exogenous input (NARMAX) model is usually used as a general input-output representation. Using the NARMAX model it is not necessary to make any assumptions regarding the structure of identified system except for the maximal values of delays. Another problem considered here is identification of a structural system, i.e., a system consisting of a few interconnected subsystems. First, we assume the internal structure of the identified system to be known and containing interconnected nonlinear static and linear or nonlinear dynamical subsystems. Identification of the system can then be performed using a neural network of a mixed linear-nonlinear perceptron architecture. Next, it is shown that recurrent models should be used to obtain uncorrelated residuals in the case of additive output noise. Finally, we also show how the backpropagation learning algorithm can be specialized to adjust weights of both the linear and nonlinear parts of the network. Some simulation examples show the high effectiveness of the structural approach (in comparison with the technique of NARX modeling)
Keywords
autoregressive moving average processes; backpropagation; identification; linear systems; nonlinear control systems; nonlinear dynamical systems; perceptrons; recurrent neural nets; NARMAX model; NARX modeling; backpropagation learning algorithm; general input-output representation; mixed linear-nonlinear perceptron architecture; multichannel neural networks; neural network; nonlinear autoregressive moving averages with exogenous input; nonlinear control systems; recurrent networks; structural systems identification; uncorrelated residuals; Additive noise; Artificial neural networks; Autoregressive processes; Backpropagation; Biological neural networks; Delay; Neural networks; Nonlinear control systems; Recurrent neural networks; Robots;
fLanguage
English
Publisher
ieee
Conference_Titel
Industrial Electronics, 1996. ISIE '96., Proceedings of the IEEE International Symposium on
Conference_Location
Warsaw
Print_ISBN
0-7803-3334-9
Type
conf
DOI
10.1109/ISIE.1996.548399
Filename
548399
Link To Document