A novel simulated annealing trajectory optimization algorithm in an autonomous UAVs-empowered MFC system for medical internet of things devices

This article investigates a new autonomous mobile fog computing (MFC) system empowered by multiple unmanned aerial vehicles (UAVs) in order to serve medical Internet of Things devices (MIoTDs) efficiently. The aim of this article is to reduce the energy consumption of the UAVs-empowered MFC system by designing UAVs’ trajectories. To construct the trajectories of UAVs, we need to consider not only the order of SPs but also the association among UAVs, SPs, and MIoTDs. The above-mentioned problem is very complicated and is difficult to be handled via applying traditional techniques, as it is NP-hard, nonlinear, non-convex, and mixed-integer. To handle this problem, we propose a novel simulated annealing trajectory optimization algorithm (SATOA), which handles the problem in three phases. First, the deployment (i.e., number and locations) of stop points (SPs) is updated and produced randomly using variable population sizes. Accordingly, MIoTDs are associated with SPs and extra SPs are removed. Finally, a novel simulated annealing algorithm is proposed to optimize UAVs’ association with SPs as well as their trajectories. The performance of SATOA is demonstrated by performing various experiments on nine instances with 40 to 200 MIoTDs. The simulation results show that the proposed SATOA outperforms other compared state-of-the-art algorithms in terms of saving energy consumption.

Authors
Asim Muhammad1, 2 , Junhong Chen1, 3 , Muthanna Ammar 4, 5 , Wenyin Liu1 , Khan Siraj6 , El-Latif A.A.2, 7
Publisher
Springer Science+Business Media B.V., Formerly Kluwer Academic Publishers B.V.
Number of issue
7
Language
English
Pages
3163-3176
Status
Published
Volume
29
Year
2023
Organizations
  • 1 Guangdong University of Technology
  • 2 Prince Sultan University
  • 3 Hasselt University
  • 4 The Bonch-Bruevich Saint-Petersburg State University of Telecommunications
  • 5 RUDN University
  • 6 South China University of Technology
  • 7 Menoufia University
Keywords
Mobile fog computing; simulated annealing algorithm; unmanned aerial vehicle; meta-heuristic algorithm; Communications Engineering; networks; computer communication networks; electrical engineering; IT in Business
Date of creation
01.07.2024
Date of change
01.07.2024
Short link
https://repository.rudn.ru/en/records/article/record/109724/
Share

Other records