A WAVELET NEURON NETWORK AND IT’S APPLICATIONS FOR DYNAMIC SYSTEM IDENTIFICATION
Abstract
The paper proposes using WNN for dynamic system identification. By using this method a lot of control systems have been designed and implemented. This is a viable method, using the technique of
softcomputing for identification and design of the control system in accordance with the current advanced
technology.
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