Pre-Design of Multi-Band Planar Antennas by Artificial Neural Networks

Author:

Lahiani Mohamed Aziz1,Raida Zbyněk23ORCID,Veselý Jiří3,Olivová Jana3ORCID

Affiliation:

1. National Institute of Applied Sciences and Technology, Tunis 625 00, Tunisia

2. Faculty of Electrical Engineering and Communication, Brno University of Technology, Brno-Královo Pole, 616 00 Brno, Czech Republic

3. Faculty of Military Technology, University of Defence, Brno-Střed, 662 10 Brno, Czech Republic

Abstract

In this communication, artificial neural networks are used to estimate the initial structure of a multiband planar antenna. The neural networks are trained on a set of selected normalized multiband antennas characterized by time-efficient modal analysis with limited accuracy. Using the Deep Learning Toolbox in Matlab, several types of neural networks have been created and trained on the sample planar multiband antennas. In the neural network learning process, suitable network types were selected for the design of these antennas. The trained networks, depending on the desired operating bands, will select the appropriate antenna geometry. This is further optimized using Newton’s method in HFSS. The use of the neural pre-design concept speeds up and simplifies the design of multiband planar antennas. The findings presented in this paper will be used to refine and accelerate the design of planar multiband antennas.

Funder

Czech Ministry of Defense

Internal Grant Agency of Brno University of Technology

Publisher

MDPI AG

Subject

Electrical and Electronic Engineering,Computer Networks and Communications,Hardware and Architecture,Signal Processing,Control and Systems Engineering

Reference28 articles.

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