Cargando…
A Novel Load Balancing Scheme for Satellite IoT Networks Based on Spatial–Temporal Distribution of Users and Advanced Genetic Algorithms
Satellite IoT networks (S-IoT-N), which have been a hot issue regarding the next generation of communication, are quite important for the coming era of digital twins and the metaverse because of their performance in sensing and monitoring anywhere, anytime, and anyway, in more dimensions. However, t...
Autores principales: | , , , , , , , , , |
---|---|
Formato: | Online Artículo Texto |
Lenguaje: | English |
Publicado: |
MDPI
2022
|
Materias: | |
Acceso en línea: | https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9609500/ https://www.ncbi.nlm.nih.gov/pubmed/36298287 http://dx.doi.org/10.3390/s22207930 |
_version_ | 1784819036230516736 |
---|---|
author | Lin, Wenliang Dong, Zewen Wang, Ke Wang, Dongdong Deng, Yaohua Liao, Yicheng Liu, Yang Wan, Da Xu, Bingyu Wu, Genan |
author_facet | Lin, Wenliang Dong, Zewen Wang, Ke Wang, Dongdong Deng, Yaohua Liao, Yicheng Liu, Yang Wan, Da Xu, Bingyu Wu, Genan |
author_sort | Lin, Wenliang |
collection | PubMed |
description | Satellite IoT networks (S-IoT-N), which have been a hot issue regarding the next generation of communication, are quite important for the coming era of digital twins and the metaverse because of their performance in sensing and monitoring anywhere, anytime, and anyway, in more dimensions. However, this will cause communication links to face greater traffic loads. Satellite internet networks (SIN) are considered the most possible evolution road, possessing characteristics of many satellites, such as low earth orbit (LEO), the Ku/Ka frequency, and a high data rate. Existing research on load balancing schemes for satellite networks cannot solve the problems of low efficiency under conditions of extremely non-uniform distribution of users (DoU) and dynamic density variances. Therefore, this paper proposes a novel load balancing scheme of adjacent beams for S-IoT-N based on the modeling of spatial–temporal DoU and advanced GA. In our scheme, the PDF of the DoU in the direction of movement of the SSP’s trajectory was modeled first, which provided a multi-directional constraint for the non-uniform distribution of users in S-IoT-N. Fully considering the prior periodicity of satellite movement and the similarity of DoU in different areas, we proposed an adaptive inheritance iteration to optimize the crossover factor and mutation factor for GA for the first time. Based on the proposed improved GA, we obtained the optimal scheme of load balancing under the conditions of the adaptation from the local balancing scheme to global balancing, and a selection of Ser-Beams to access. Finally, the simulations show that the proposed method can improve the average throughput by 3% under specific conditions and improve processing efficiency by 30% on average. |
format | Online Article Text |
id | pubmed-9609500 |
institution | National Center for Biotechnology Information |
language | English |
publishDate | 2022 |
publisher | MDPI |
record_format | MEDLINE/PubMed |
spelling | pubmed-96095002022-10-28 A Novel Load Balancing Scheme for Satellite IoT Networks Based on Spatial–Temporal Distribution of Users and Advanced Genetic Algorithms Lin, Wenliang Dong, Zewen Wang, Ke Wang, Dongdong Deng, Yaohua Liao, Yicheng Liu, Yang Wan, Da Xu, Bingyu Wu, Genan Sensors (Basel) Article Satellite IoT networks (S-IoT-N), which have been a hot issue regarding the next generation of communication, are quite important for the coming era of digital twins and the metaverse because of their performance in sensing and monitoring anywhere, anytime, and anyway, in more dimensions. However, this will cause communication links to face greater traffic loads. Satellite internet networks (SIN) are considered the most possible evolution road, possessing characteristics of many satellites, such as low earth orbit (LEO), the Ku/Ka frequency, and a high data rate. Existing research on load balancing schemes for satellite networks cannot solve the problems of low efficiency under conditions of extremely non-uniform distribution of users (DoU) and dynamic density variances. Therefore, this paper proposes a novel load balancing scheme of adjacent beams for S-IoT-N based on the modeling of spatial–temporal DoU and advanced GA. In our scheme, the PDF of the DoU in the direction of movement of the SSP’s trajectory was modeled first, which provided a multi-directional constraint for the non-uniform distribution of users in S-IoT-N. Fully considering the prior periodicity of satellite movement and the similarity of DoU in different areas, we proposed an adaptive inheritance iteration to optimize the crossover factor and mutation factor for GA for the first time. Based on the proposed improved GA, we obtained the optimal scheme of load balancing under the conditions of the adaptation from the local balancing scheme to global balancing, and a selection of Ser-Beams to access. Finally, the simulations show that the proposed method can improve the average throughput by 3% under specific conditions and improve processing efficiency by 30% on average. MDPI 2022-10-18 /pmc/articles/PMC9609500/ /pubmed/36298287 http://dx.doi.org/10.3390/s22207930 Text en © 2022 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 Lin, Wenliang Dong, Zewen Wang, Ke Wang, Dongdong Deng, Yaohua Liao, Yicheng Liu, Yang Wan, Da Xu, Bingyu Wu, Genan A Novel Load Balancing Scheme for Satellite IoT Networks Based on Spatial–Temporal Distribution of Users and Advanced Genetic Algorithms |
title | A Novel Load Balancing Scheme for Satellite IoT Networks Based on Spatial–Temporal Distribution of Users and Advanced Genetic Algorithms |
title_full | A Novel Load Balancing Scheme for Satellite IoT Networks Based on Spatial–Temporal Distribution of Users and Advanced Genetic Algorithms |
title_fullStr | A Novel Load Balancing Scheme for Satellite IoT Networks Based on Spatial–Temporal Distribution of Users and Advanced Genetic Algorithms |
title_full_unstemmed | A Novel Load Balancing Scheme for Satellite IoT Networks Based on Spatial–Temporal Distribution of Users and Advanced Genetic Algorithms |
title_short | A Novel Load Balancing Scheme for Satellite IoT Networks Based on Spatial–Temporal Distribution of Users and Advanced Genetic Algorithms |
title_sort | novel load balancing scheme for satellite iot networks based on spatial–temporal distribution of users and advanced genetic algorithms |
topic | Article |
url | https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9609500/ https://www.ncbi.nlm.nih.gov/pubmed/36298287 http://dx.doi.org/10.3390/s22207930 |
work_keys_str_mv | AT linwenliang anovelloadbalancingschemeforsatelliteiotnetworksbasedonspatialtemporaldistributionofusersandadvancedgeneticalgorithms AT dongzewen anovelloadbalancingschemeforsatelliteiotnetworksbasedonspatialtemporaldistributionofusersandadvancedgeneticalgorithms AT wangke anovelloadbalancingschemeforsatelliteiotnetworksbasedonspatialtemporaldistributionofusersandadvancedgeneticalgorithms AT wangdongdong anovelloadbalancingschemeforsatelliteiotnetworksbasedonspatialtemporaldistributionofusersandadvancedgeneticalgorithms AT dengyaohua anovelloadbalancingschemeforsatelliteiotnetworksbasedonspatialtemporaldistributionofusersandadvancedgeneticalgorithms AT liaoyicheng anovelloadbalancingschemeforsatelliteiotnetworksbasedonspatialtemporaldistributionofusersandadvancedgeneticalgorithms AT liuyang anovelloadbalancingschemeforsatelliteiotnetworksbasedonspatialtemporaldistributionofusersandadvancedgeneticalgorithms AT wanda anovelloadbalancingschemeforsatelliteiotnetworksbasedonspatialtemporaldistributionofusersandadvancedgeneticalgorithms AT xubingyu anovelloadbalancingschemeforsatelliteiotnetworksbasedonspatialtemporaldistributionofusersandadvancedgeneticalgorithms AT wugenan anovelloadbalancingschemeforsatelliteiotnetworksbasedonspatialtemporaldistributionofusersandadvancedgeneticalgorithms AT linwenliang novelloadbalancingschemeforsatelliteiotnetworksbasedonspatialtemporaldistributionofusersandadvancedgeneticalgorithms AT dongzewen novelloadbalancingschemeforsatelliteiotnetworksbasedonspatialtemporaldistributionofusersandadvancedgeneticalgorithms AT wangke novelloadbalancingschemeforsatelliteiotnetworksbasedonspatialtemporaldistributionofusersandadvancedgeneticalgorithms AT wangdongdong novelloadbalancingschemeforsatelliteiotnetworksbasedonspatialtemporaldistributionofusersandadvancedgeneticalgorithms AT dengyaohua novelloadbalancingschemeforsatelliteiotnetworksbasedonspatialtemporaldistributionofusersandadvancedgeneticalgorithms AT liaoyicheng novelloadbalancingschemeforsatelliteiotnetworksbasedonspatialtemporaldistributionofusersandadvancedgeneticalgorithms AT liuyang novelloadbalancingschemeforsatelliteiotnetworksbasedonspatialtemporaldistributionofusersandadvancedgeneticalgorithms AT wanda novelloadbalancingschemeforsatelliteiotnetworksbasedonspatialtemporaldistributionofusersandadvancedgeneticalgorithms AT xubingyu novelloadbalancingschemeforsatelliteiotnetworksbasedonspatialtemporaldistributionofusersandadvancedgeneticalgorithms AT wugenan novelloadbalancingschemeforsatelliteiotnetworksbasedonspatialtemporaldistributionofusersandadvancedgeneticalgorithms |