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An Efficient Method for Complex Digitally Coded Antenna Design Based on Evolutionary Computation and Machine Learning Techniques

Tao Wu, Bo Liu, Qiang Hua, Mobayode O. Akinsolu, Dhyey P Buch, Jacob J Adams, Muhammad Ali Imran, Pavlos Lazaridis, Rui Pei, Peter Excell

Research output: Contribution to journalArticlepeer-review

Abstract

Digitally coded antennas (DCAs), also called pixelized or fragmented antennas, show high potential for improving performance and size via unconventional structures. However, the bottleneck is the resolution that can be handled. When the resolution is more than a few hundred pixels, optimization quality and efficiency become severe challenges. Therefore, a new method, called digitally coded antenna-oriented surrogate model-assisted evolutionary algorithm (DC-SADEA), is presented in this article. The key innovations include: 1) the introduction of an ensemble learning-based surrogate modeling method for mapping the DCA design variables to performances and 2) a bespoke surrogate model-assisted global optimization framework and genetic algorithm (GA) operators for DCAs. An ultrawideband antenna (about 1900 pixels) and the feeding part of a 5G outdoor base station antenna (about 1500 pixels) are used to demonstrate DC-SADEA. Measurement results demonstrate the effectiveness and efficiency of DC-SADEA.

Original languageEnglish
Article number11202352
Pages (from-to)9734-9747
Number of pages14
JournalIEEE Transactions on Antennas and Propagation
Volume73
Issue number12
Early online date14 Oct 2025
DOIs
Publication statusPublished - 1 Dec 2025

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