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Title

Design of Plant Estimator Model Using Neural Network

Author

K.Suresh Manic, R.Sivakumar, V.Nerthiga, R.Akila, K.Balu

Citation

Vol. 9  No. 6  pp. 142-147

Abstract

The construction of a parameter (or state) estimator can be basically considered as a function approximation problem. To design an estimator, it is first necessary, to obtain the training data set ¡®G¡¯ such that, this training data set contains as much information as possible about a system ¡®g¡¯. Once trained properly, the estimator will adaptively follow the slope of ¡®g¡¯ at all times. In this paper, signals are processed in real time and combined with previous monitoring data to estimate, using the neural network, the process variable level in a nonlinear process control plant.

Keywords

Estimator, Neural Network, Nonlinear control, Sensor validation

URL

http://paper.ijcsns.org/07_book/200906/20090620.pdf