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PREDICTION OF RESONAN CE FREQUENCY OF APERTURE COUPLED MICROSTRIP ANTENNAS BY ARTIFICIAL NEURAL NETWORK

Journal: International Journal of Engineering Sciences & Research Technology (IJESRT) (Vol.5, No. 10)

Publication Date:

Authors : ; ;

Page : 252-260

Keywords : Prediction model; a pertu re coupled microstrip antenna; artificial neural network; r esonance frequency .;

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Abstract

In this study, the simulation model of Aperture - Coupled Micro - Strip Antenna (ACMA) by using Artificial Neural Network (ANN) is proposed. The developed model tries to predict the output resonan ce frequency of the ACMA according to the input physical parameters of the antenna . ACMA models were designed in High Frequency Structure Simulator (HFSS) software tool that could conduct three dimension al full - wave electromagnetic structure analysis based on Finite Element Method . Main objective is to simulate HFSS model via proposed learning model . Lev enberg - Marquardt (LM) is utilized as a learning algorithm . 500 different ACMA models was designed in HFSS tool. Physical dimensions and output operating frequencies of the ACMA models were recorded in order to establish the dataset. Prediction performance of the proposed ANN simulation model was evaluated by 5 - fold cros s - validation scheme . Overall generalization error was calculated as 3.58 %. Experiments revealed that proposed simulation model operates at least ten thousand times faster than HFSS software . Due to its overwhelming running speed, i t was concluded that proposed LM - ANN simulation model can be utilized as a preliminary search tool for optimizing the industrial ACMA models.

Last modified: 2016-10-15 20:44:14