Model reference adaptive neuro-controller with on-line parameter estimation
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Date
2010-10-16Author
Siti Maryam, Sharun
Mohd Yusoff, Mashor, Prof. Dr.
Norhayati, Mohd Noor
Wan Nurhadani
Sazali, Yaacob, Prof. Dr.
Muhyi, Yaakob
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In this paper, a Model Reference Adaptive Neuro-
Controller is developed, in which the error between the
outputs of the plant and the reference model is used to
adapt the controller parameters. The Model Reference
Adaptive System (MRAS) was originally proposed to
control a time varying systems where the performance
specifications are given in terms of a reference model.
A neural network model, called Hybrid Multi Layered
Perceptron (HMLP) network will be used for this
Adaptive Neuro-Controller (ANC). The Recursive
Least Square (RLS) algorithm will adjust the ANC
parameters to minimize the error between the plant
output and the model reference output. The
performance of the HMLP network is compared with
Multi Layered Perceptron (MLP) networks. These
networks have been tested using a linear and nonlinear
plant with some variations in operating conditions. The
results for both plants sets indicated that HMLP
network gave significant improvement over standard
MLP network.
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