Deep-learning Empowered Multi-objective Antenna Design: A Polygon Patch Antenna Case Study
Source
2024 National Conference on Communications Ncc 2024
Date Issued
2024-01-01
Abstract
We present a multi-objective inverse design approach for rapidly synthesizing antennas, leveraging a deep-learning-assisted evolutionary algorithm. A convolutional neural network (CNN) surrogate prediction model has been developed and trained to provide prompt and precise predictions of multiple antenna parameters. The optimization process utilizes a multi-island differential evolution algorithm and surrogate fitness evaluation. To validate this approach, we consider the design of an arbitrary-shaped polygon patch antenna with a resonance frequency of 2.4 GHz. The antenna design process is accomplished within a few minutes by optimizing multiple objectives, such as reflection coefficient, input impedance, and radiation pattern. The proposed approach is promising for expediting the synthesis of modern antennas characterized by numerous design variables and performance metrics.
Subjects
Convolutional Neural Networks | Deep-learning | Differential evolution | Inverse design | Multi-objective optimization | Polygon patch antenna | Surrogate-assisted evolutionary algorithms
