Automated optimization for broadband flat‐gain antenna designs with artificial neural network

Abstract An automated optimization process for designing and optimising high‐performance single microstrip antennas is presented. It consists of the successive use of two optimization methods, bottom‐up optimization (BUO) and Bayesian optimization (BO), which are applied sequentially, resulting in e...

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Main Authors: Farzad Mir, Lida Kouhalvandi, Ladislau Matekovits, Ece Olcay Gunes
Format: Article
Language:English
Published: Wiley 2021-10-01
Series:IET Microwaves, Antennas & Propagation
Online Access:https://doi.org/10.1049/mia2.12137
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spelling doaj-cbf0d5e5acc84ce08c96bd06c26d6a432021-09-08T18:42:09ZengWileyIET Microwaves, Antennas & Propagation1751-87251751-87332021-10-0115121537154410.1049/mia2.12137Automated optimization for broadband flat‐gain antenna designs with artificial neural networkFarzad Mir0Lida Kouhalvandi1Ladislau Matekovits2Ece Olcay Gunes3Dipartimento di Elettronica e Telecomunicazioni Politecnico di Torino Turin ItalyDipartimento di Elettronica e Telecomunicazioni Politecnico di Torino Turin ItalyDipartimento di Elettronica e Telecomunicazioni Politecnico di Torino Turin ItalyElectronics and Communication Engineering Department Istanbul Technical University Istanbul TurkeyAbstract An automated optimization process for designing and optimising high‐performance single microstrip antennas is presented. It consists of the successive use of two optimization methods, bottom‐up optimization (BUO) and Bayesian optimization (BO), which are applied sequentially, resulting in electromagnetic (EM)‐based artificial neural network modelling. The BUO method is applied for the initial design of the structure of the antennas whereas the BO approach is successively implemented to predict suitable dimensional parameters, leading to broadband, high flat‐gain antennas. The optimization process is performed automatically with the combination of an electronic design automation tool and a numerical analyser. The proposed method is easy to use; it allows one to perform the design with little experience, because both structure modelling and sizing are performed automatically. To verify the power of the proposed EM‐based method experimentally, two single microstrip antennas have been designed, optimised, fabricated, and measured. The first antenna has flat‐gain performance (6.9–7.2 dB) in a frequency band of 8.8–10 GHz. The second has been designed to perform in the 8.7‐ to 10‐GHz band, where it exhibits flat‐gain performance with reduced fluctuation in the range of 6.7–7 dB. The experimental results are in good agreement with the numerical data.https://doi.org/10.1049/mia2.12137
collection DOAJ
language English
format Article
sources DOAJ
author Farzad Mir
Lida Kouhalvandi
Ladislau Matekovits
Ece Olcay Gunes
spellingShingle Farzad Mir
Lida Kouhalvandi
Ladislau Matekovits
Ece Olcay Gunes
Automated optimization for broadband flat‐gain antenna designs with artificial neural network
IET Microwaves, Antennas & Propagation
author_facet Farzad Mir
Lida Kouhalvandi
Ladislau Matekovits
Ece Olcay Gunes
author_sort Farzad Mir
title Automated optimization for broadband flat‐gain antenna designs with artificial neural network
title_short Automated optimization for broadband flat‐gain antenna designs with artificial neural network
title_full Automated optimization for broadband flat‐gain antenna designs with artificial neural network
title_fullStr Automated optimization for broadband flat‐gain antenna designs with artificial neural network
title_full_unstemmed Automated optimization for broadband flat‐gain antenna designs with artificial neural network
title_sort automated optimization for broadband flat‐gain antenna designs with artificial neural network
publisher Wiley
series IET Microwaves, Antennas & Propagation
issn 1751-8725
1751-8733
publishDate 2021-10-01
description Abstract An automated optimization process for designing and optimising high‐performance single microstrip antennas is presented. It consists of the successive use of two optimization methods, bottom‐up optimization (BUO) and Bayesian optimization (BO), which are applied sequentially, resulting in electromagnetic (EM)‐based artificial neural network modelling. The BUO method is applied for the initial design of the structure of the antennas whereas the BO approach is successively implemented to predict suitable dimensional parameters, leading to broadband, high flat‐gain antennas. The optimization process is performed automatically with the combination of an electronic design automation tool and a numerical analyser. The proposed method is easy to use; it allows one to perform the design with little experience, because both structure modelling and sizing are performed automatically. To verify the power of the proposed EM‐based method experimentally, two single microstrip antennas have been designed, optimised, fabricated, and measured. The first antenna has flat‐gain performance (6.9–7.2 dB) in a frequency band of 8.8–10 GHz. The second has been designed to perform in the 8.7‐ to 10‐GHz band, where it exhibits flat‐gain performance with reduced fluctuation in the range of 6.7–7 dB. The experimental results are in good agreement with the numerical data.
url https://doi.org/10.1049/mia2.12137
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