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A Deep Learning Framework for Two-Dimensional, Multi-Frequency Propagation Factor Estimation
Author(s) -
Sarah E. Wessinger,
Leslie N. Smith,
Jacob Gull,
Jonathan Gehman,
Zachary Beever,
Andrew J. Kammerer
Publication year - 2025
Publication title -
ieee transactions on antennas and propagation
Language(s) - English
Resource type - Magazines
SCImago Journal Rank - 1.652
H-Index - 200
eISSN - 1558-2221
pISSN - 0018-926X
DOI - 10.1109/tap.2025.3617236
Subject(s) - fields, waves and electromagnetics , aerospace , transportation , components, circuits, devices and systems
Accurately estimating propagation factor over multiple frequencies within the marine atmospheric boundary layer is crucial for the effective deployment of radar technologies. Traditional parabolic equation simulations, while effective, can be computationally expensive and time-intensive, limiting their practical application. This communication explores a novel approach using deep neural networks to estimate the pattern propagation factor, a critical parameter for characterizing environmental impacts on signal propagation. Image-to-image translation generators designed to ingest modified refractivity data and generate predictions of pattern propagation factors over the same domain are developed. Findings demonstrate that deep neural networks can be trained to analyze multiple frequencies and reasonably predict the pattern propagation factor, offering an alternative to traditional methods.

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