Title of article :
Levenberg-Marquardt and Conjugate Gradient Neuro-Modeling of Simulated Miniature Rectangular Microstrip Antenna
Author/Authors :
Mishra، Abhilasha نويسنده , , Janvale، Ganesh B. نويسنده , , Kasar، Smita نويسنده ,
Issue Information :
روزنامه با شماره پیاپی 9 سال 2012
Abstract :
Neural-network computational modules have recently gained recognition as an unconventional and useful tool for RF and microwave modeling
and design. Neural networks can be trained to learn the behaviour of passive/active components/circuits. This work presents artificial neural
network (ANN) for design of IE3D simulated miniature microstrip antenna. In the presented work, the artificial neural network is used for
accurate determination of dierent parameters like resonant frequency, bandwidth, return loss, and voltage standing wave ratio (VSWR) of square
and rectangular microstrip patch antenna. The developed neural network model which uses the data of simulated hundred antennas is based on
Levenberg-Marquardt (LM) and conjugate gradient (CG) feed-back propagation. The developed ANN models for rectangular microstrip antennas
(RMSAs) are in very good agreement with the experimental results available in the literature. The comparative analysis of developed models is
presented which gives higher accuracy than that reported elsewhere.
Journal title :
Advanced Computational Techniques in Electromagnetics
Journal title :
Advanced Computational Techniques in Electromagnetics