Tropospheric Ducting: A Comprehensive Review and Machine Learning-Based Classification Advancements

Tropospheric ducts, characterized by anomalous positive vertical refractive index gradients, significantly influence radio wave propagation by enhancing signal strength and extending communication ranges. While beneficial in some contexts, these phenomena can disrupt communication systems, particula...

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Main Authors: Mohammed Banafaa, Ali Hussein Muqaibel
Format: Article
Language:English
Published: IEEE 2025-01-01
Series:IEEE Access
Subjects:
Online Access:https://ieeexplore.ieee.org/document/10858737/
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author Mohammed Banafaa
Ali Hussein Muqaibel
author_facet Mohammed Banafaa
Ali Hussein Muqaibel
author_sort Mohammed Banafaa
collection DOAJ
description Tropospheric ducts, characterized by anomalous positive vertical refractive index gradients, significantly influence radio wave propagation by enhancing signal strength and extending communication ranges. While beneficial in some contexts, these phenomena can disrupt communication systems, particularly in maritime and coastal regions where ducting conditions are prevalent. This paper addresses the challenge of accurately predicting and mitigating the effects of tropospheric ducts on radio propagation, which is critical for the reliability of next-generation communication systems. We present a comprehensive review of radio propagation in tropospheric ducts, encompassing fundamental concepts, theoretical models, and estimation techniques. To enhance the classification of anomalous propagation in the troposphere, including ducting, we develop machine learning models based on real-world data obtained from King Fahd University of Petroleum and Minerals (KFUPM). Our findings demonstrate that machine learning models, particularly support vector machines, can effectively classify ducting conditions, offering superior predictive performance compared to other models. The advancements presented in this paper address the challenges faced by next-generation radio systems and contribute to the development of effective mitigation strategies. The insights gained pave the way for further research and optimization of communication system performance in duct-prone environments.
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institution Kabale University
issn 2169-3536
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spelling doaj-art-796e84b5ce204183a2b486a392a3d6802025-02-07T00:01:18ZengIEEEIEEE Access2169-35362025-01-0113225102253410.1109/ACCESS.2025.353716010858737Tropospheric Ducting: A Comprehensive Review and Machine Learning-Based Classification AdvancementsMohammed Banafaa0https://orcid.org/0000-0002-7239-2571Ali Hussein Muqaibel1https://orcid.org/0000-0001-7865-1987Electrical Engineering Department, King Fahd University of Petroleum and Minerals, Dhahran, Saudi ArabiaElectrical Engineering Department, King Fahd University of Petroleum and Minerals, Dhahran, Saudi ArabiaTropospheric ducts, characterized by anomalous positive vertical refractive index gradients, significantly influence radio wave propagation by enhancing signal strength and extending communication ranges. While beneficial in some contexts, these phenomena can disrupt communication systems, particularly in maritime and coastal regions where ducting conditions are prevalent. This paper addresses the challenge of accurately predicting and mitigating the effects of tropospheric ducts on radio propagation, which is critical for the reliability of next-generation communication systems. We present a comprehensive review of radio propagation in tropospheric ducts, encompassing fundamental concepts, theoretical models, and estimation techniques. To enhance the classification of anomalous propagation in the troposphere, including ducting, we develop machine learning models based on real-world data obtained from King Fahd University of Petroleum and Minerals (KFUPM). Our findings demonstrate that machine learning models, particularly support vector machines, can effectively classify ducting conditions, offering superior predictive performance compared to other models. The advancements presented in this paper address the challenges faced by next-generation radio systems and contribute to the development of effective mitigation strategies. The insights gained pave the way for further research and optimization of communication system performance in duct-prone environments.https://ieeexplore.ieee.org/document/10858737/Atmospheric ductanomalous propagationducting channelrefractivity indexremote sensingduct estimation
spellingShingle Mohammed Banafaa
Ali Hussein Muqaibel
Tropospheric Ducting: A Comprehensive Review and Machine Learning-Based Classification Advancements
IEEE Access
Atmospheric duct
anomalous propagation
ducting channel
refractivity index
remote sensing
duct estimation
title Tropospheric Ducting: A Comprehensive Review and Machine Learning-Based Classification Advancements
title_full Tropospheric Ducting: A Comprehensive Review and Machine Learning-Based Classification Advancements
title_fullStr Tropospheric Ducting: A Comprehensive Review and Machine Learning-Based Classification Advancements
title_full_unstemmed Tropospheric Ducting: A Comprehensive Review and Machine Learning-Based Classification Advancements
title_short Tropospheric Ducting: A Comprehensive Review and Machine Learning-Based Classification Advancements
title_sort tropospheric ducting a comprehensive review and machine learning based classification advancements
topic Atmospheric duct
anomalous propagation
ducting channel
refractivity index
remote sensing
duct estimation
url https://ieeexplore.ieee.org/document/10858737/
work_keys_str_mv AT mohammedbanafaa troposphericductingacomprehensivereviewandmachinelearningbasedclassificationadvancements
AT alihusseinmuqaibel troposphericductingacomprehensivereviewandmachinelearningbasedclassificationadvancements