Development of Knowledge Based Response Correction for a Reconfigurable N-Shaped Microstrip Antenna Design
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Date
2015
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IEEE
Abstract
This study presents the use of prior knowledge of inverse artificial neural network (ANN) to model and optimize a reconfigurable N-shaped microstrip antenna. Three accurate prior knowledge inverse ANNs with large amount training data are proposed where the frequency information is incorporated into the structure of ANN. The complexity of the input/output relationship is reduced by using prior knowledge. Three separate methods of incorporating knowledge in the second step of the training process with a multilayer perceptron (MEP) in the first step are demonstrated and their results are compared to EM simulation.
Description
Meeting:IEEE MTT-S International Conference on Numerical Electromagnetic and Multiphysics Modeling and Optimization
Location:Ottawa, CANADA
Date:AUG 11-14, 2015
Keywords
artificial neural networks, reconfigurable microstrip antenna, prior knowledge input
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3