DocumentCode
1064686
Title
Application of the recurrent multilayer perceptron in modeling complex process dynamics
Author
Parlos, Alexander G. ; Chong, Kil T. ; Atiya, Amir F.
Author_Institution
Dept. of Nucl. Eng., Texas A&M Univ., College Station, TX, USA
Volume
5
Issue
2
fYear
1994
fDate
3/1/1994 12:00:00 AM
Firstpage
255
Lastpage
266
Abstract
A nonlinear dynamic model is developed for a process system, namely a heat exchanger, using the recurrent multilayer perceptron network as the underlying model structure. The perceptron is a dynamic neural network, which appears effective in the input-output modeling of complex process systems. Dynamic gradient descent learning is used to train the recurrent multilayer perceptron, resulting in an order of magnitude improvement in convergence speed over a static learning algorithm used to train the same network. In developing the empirical process model the effects of actuator, process, and sensor noise on the training and testing sets are investigated. Learning and prediction both appear very effective, despite the presence of training and testing set noise, respectively. The recurrent multilayer perceptron appears to learn the deterministic part of a stochastic training set, and it predicts approximately a moving average response of various testing sets. Extensive model validation studies with signals that are encountered in the operation of the process system modeled, that is steps and ramps, indicate that the empirical model can substantially generalize operational transients, including accurate prediction of instabilities not in the training set. However, the accuracy of the model beyond these operational transients has not been investigated. Furthermore, online learning is necessary during some transients and for tracking slowly varying process dynamics. Neural networks based empirical models in some cases appear to provide a serious alternative to first principles models
Keywords
feedforward neural nets; heat exchangers; large-scale systems; modelling; nonlinear dynamical systems; recurrent neural nets; approximate prediction; complex process dynamics modeling; dynamic gradient descent learning; heat exchanger; input-output modeling; moving average response; nonlinear dynamic model; online learning; ramps; recurrent multilayer perceptron; steps; Artificial neural networks; Intelligent networks; Multi-layer neural network; Multilayer perceptrons; Neural networks; Nonlinear dynamical systems; Power engineering and energy; Predictive models; Signal processing; Testing;
fLanguage
English
Journal_Title
Neural Networks, IEEE Transactions on
Publisher
ieee
ISSN
1045-9227
Type
jour
DOI
10.1109/72.279189
Filename
279189
Link To Document