Cargando…

Enhanced Slime Mould Optimization with Deep-Learning-Based Resource Allocation in UAV-Enabled Wireless Networks

Unmanned aerial vehicle (UAV) networks offer a wide range of applications in an overload situation, broadcasting and advertising, public safety, disaster management, etc. Providing robust communication services to mobile users (MUs) is a challenging task because of the dynamic characteristics of MUs...

Descripción completa

Detalles Bibliográficos
Autores principales: Alkanhel, Reem, Rafiq, Ahsan, Mokrov, Evgeny, Khakimov, Abdukodir, Muthanna, Mohammed Saleh Ali, Muthanna, Ammar
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10459001/
https://www.ncbi.nlm.nih.gov/pubmed/37631620
http://dx.doi.org/10.3390/s23167083
_version_ 1785097302661136384
author Alkanhel, Reem
Rafiq, Ahsan
Mokrov, Evgeny
Khakimov, Abdukodir
Muthanna, Mohammed Saleh Ali
Muthanna, Ammar
author_facet Alkanhel, Reem
Rafiq, Ahsan
Mokrov, Evgeny
Khakimov, Abdukodir
Muthanna, Mohammed Saleh Ali
Muthanna, Ammar
author_sort Alkanhel, Reem
collection PubMed
description Unmanned aerial vehicle (UAV) networks offer a wide range of applications in an overload situation, broadcasting and advertising, public safety, disaster management, etc. Providing robust communication services to mobile users (MUs) is a challenging task because of the dynamic characteristics of MUs. Resource allocation, including subchannels, transmit power, and serving users, is a critical transmission problem; further, it is also crucial to improve the coverage and energy efficacy of UAV-assisted transmission networks. This paper presents an Enhanced Slime Mould Optimization with Deep-Learning-based Resource Allocation Approach (ESMOML-RAA) in UAV-enabled wireless networks. The presented ESMOML-RAA technique aims to efficiently accomplish computationally and energy-effective decisions. In addition, the ESMOML-RAA technique considers a UAV as a learning agent with the formation of a resource assignment decision as an action and designs a reward function with the intention of the minimization of the weighted resource consumption. For resource allocation, the presented ESMOML-RAA technique employs a highly parallelized long short-term memory (HP-LSTM) model with an ESMO algorithm as a hyperparameter optimizer. Using the ESMO algorithm helps properly tune the hyperparameters related to the HP-LSTM model. The performance validation of the ESMOML-RAA technique is tested using a series of simulations. This comparison study reports the enhanced performance of the ESMOML-RAA technique over other ML models.
format Online
Article
Text
id pubmed-10459001
institution National Center for Biotechnology Information
language English
publishDate 2023
publisher MDPI
record_format MEDLINE/PubMed
spelling pubmed-104590012023-08-27 Enhanced Slime Mould Optimization with Deep-Learning-Based Resource Allocation in UAV-Enabled Wireless Networks Alkanhel, Reem Rafiq, Ahsan Mokrov, Evgeny Khakimov, Abdukodir Muthanna, Mohammed Saleh Ali Muthanna, Ammar Sensors (Basel) Article Unmanned aerial vehicle (UAV) networks offer a wide range of applications in an overload situation, broadcasting and advertising, public safety, disaster management, etc. Providing robust communication services to mobile users (MUs) is a challenging task because of the dynamic characteristics of MUs. Resource allocation, including subchannels, transmit power, and serving users, is a critical transmission problem; further, it is also crucial to improve the coverage and energy efficacy of UAV-assisted transmission networks. This paper presents an Enhanced Slime Mould Optimization with Deep-Learning-based Resource Allocation Approach (ESMOML-RAA) in UAV-enabled wireless networks. The presented ESMOML-RAA technique aims to efficiently accomplish computationally and energy-effective decisions. In addition, the ESMOML-RAA technique considers a UAV as a learning agent with the formation of a resource assignment decision as an action and designs a reward function with the intention of the minimization of the weighted resource consumption. For resource allocation, the presented ESMOML-RAA technique employs a highly parallelized long short-term memory (HP-LSTM) model with an ESMO algorithm as a hyperparameter optimizer. Using the ESMO algorithm helps properly tune the hyperparameters related to the HP-LSTM model. The performance validation of the ESMOML-RAA technique is tested using a series of simulations. This comparison study reports the enhanced performance of the ESMOML-RAA technique over other ML models. MDPI 2023-08-10 /pmc/articles/PMC10459001/ /pubmed/37631620 http://dx.doi.org/10.3390/s23167083 Text en © 2023 by the authors. https://creativecommons.org/licenses/by/4.0/Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (https://creativecommons.org/licenses/by/4.0/).
spellingShingle Article
Alkanhel, Reem
Rafiq, Ahsan
Mokrov, Evgeny
Khakimov, Abdukodir
Muthanna, Mohammed Saleh Ali
Muthanna, Ammar
Enhanced Slime Mould Optimization with Deep-Learning-Based Resource Allocation in UAV-Enabled Wireless Networks
title Enhanced Slime Mould Optimization with Deep-Learning-Based Resource Allocation in UAV-Enabled Wireless Networks
title_full Enhanced Slime Mould Optimization with Deep-Learning-Based Resource Allocation in UAV-Enabled Wireless Networks
title_fullStr Enhanced Slime Mould Optimization with Deep-Learning-Based Resource Allocation in UAV-Enabled Wireless Networks
title_full_unstemmed Enhanced Slime Mould Optimization with Deep-Learning-Based Resource Allocation in UAV-Enabled Wireless Networks
title_short Enhanced Slime Mould Optimization with Deep-Learning-Based Resource Allocation in UAV-Enabled Wireless Networks
title_sort enhanced slime mould optimization with deep-learning-based resource allocation in uav-enabled wireless networks
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10459001/
https://www.ncbi.nlm.nih.gov/pubmed/37631620
http://dx.doi.org/10.3390/s23167083
work_keys_str_mv AT alkanhelreem enhancedslimemouldoptimizationwithdeeplearningbasedresourceallocationinuavenabledwirelessnetworks
AT rafiqahsan enhancedslimemouldoptimizationwithdeeplearningbasedresourceallocationinuavenabledwirelessnetworks
AT mokrovevgeny enhancedslimemouldoptimizationwithdeeplearningbasedresourceallocationinuavenabledwirelessnetworks
AT khakimovabdukodir enhancedslimemouldoptimizationwithdeeplearningbasedresourceallocationinuavenabledwirelessnetworks
AT muthannamohammedsalehali enhancedslimemouldoptimizationwithdeeplearningbasedresourceallocationinuavenabledwirelessnetworks
AT muthannaammar enhancedslimemouldoptimizationwithdeeplearningbasedresourceallocationinuavenabledwirelessnetworks