Electromagnetic Simulations of Antennas on GPUs for Machine Learning Applications
Murat Temiz, Vemund Bakken

TL;DR
This paper introduces a GPU-accelerated electromagnetic simulation framework for antenna design, enabling rapid data generation for machine learning, and compares its performance and accuracy to commercial software.
Contribution
It presents an open-source GPU-based EM simulation framework for antenna modeling, significantly improving data generation speed for machine learning applications.
Findings
GPU simulations outperform CPU in speed, with 18x higher performance.
Open-source software produces comparable results to commercial tools.
GPU acceleration enables large-scale antenna data set creation.
Abstract
This study proposes an antenna simulation framework powered by graphics processing units (GPUs) based on an open-source electromagnetic (EM) simulation software (gprMax) for machine learning applications of antenna design and optimization. Furthermore, it compares the simulation results with those obtained through commercial EM software. The proposed software framework for machine learning and surrogate model applications will produce antenna data sets consisting of a large number of antenna simulation results using GPUs. Although machine learning methods can attain the optimum solutions for many problems, they are known to be data-hungry and require a great deal of samples for the training stage of the algorithms. However, producing a sufficient number of training samples in EM applications within a limited time is challenging due to the high computational complexity of EM simulations.…
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