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research-article

Energy‐aware mobility for aerial networks: : A reinforcement learning approach

Published: 10 January 2022 Publication History

Summary

With recent advancements in aerial networks, aerial base stations (ABSs) have become a promising mobile network technology to enhance the coverage and capacity of the cellular networks. ABS deployment can assist cellular networks to support network infrastructure or minimize the disruptions caused by unexpected and temporary situations. However, with 3D ABS placement, the continuity of the service has increased the challenge of providing satisfactory Quality of Service (QoS). The limited battery capacity of ABSs and continuous movement of users result in frequent interruptions. Although aerial networks provide quick and effective coverage, ABS deployment is challenging due to the user mobility, increased interference, handover delay, and handover failure. In addition, once an ABS is deployed, an intelligent management must be applied. In this paper, we model user mobility pattern and formulate energy‐aware ABS deployment problem with a goal of minimizing energy consumption and handover delay. To this end, the contributions of this paper are threefold: (i) analysis of reinforcement learning (RL)‐based state action reward state action (SARSA) algorithm to deploy ABSs with an energy consumption model, (ii) predicting the user next‐place with a hidden Markov model (HMM), and (iii) managing the dynamic movement of ABSs with a handover procedure. Our model is validated by comprehensive simulation, and the results indicate superiority of the proposed model on deploying multiple ABSs to provide the communication coverage.

Graphical Abstract

With recent advancements in aerial networks, aerial base stations (ABSs) have become a promising mobile network technology to support network infrastructure or minimize the disruptions caused by unexpected and temporary situations. In this study, reinforcement learning (RL) based on an energy‐aware ABS deployment algorithm is proposed, and dynamic movements of ABSs are managed by defining the user mobility pattern.

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Cited By

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  • (2023)Digital twin-assisted and mobility-aware service migration in Mobile Edge ComputingComputer Networks: The International Journal of Computer and Telecommunications Networking10.1016/j.comnet.2023.109798231:COnline publication date: 1-Jul-2023

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Information

Published In

cover image International Journal of Network Management
International Journal of Network Management  Volume 32, Issue 1
January/February 2022
176 pages
EISSN:1099-1190
DOI:10.1002/nem.v32.1
Issue’s Table of Contents

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John Wiley & Sons, Inc.

United States

Publication History

Published: 10 January 2022

Author Tags

  1. aerial base station
  2. aerial networks
  3. energy‐aware deployment
  4. handover
  5. reinforcement learning
  6. user mobility pattern

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  • (2023)Digital twin-assisted and mobility-aware service migration in Mobile Edge ComputingComputer Networks: The International Journal of Computer and Telecommunications Networking10.1016/j.comnet.2023.109798231:COnline publication date: 1-Jul-2023

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