Edge computing resource allocation orchestration system for autonomous vehicles

Edge computing is the key to building 5G Networks and Future 2030 Networks. Edge computing extends the cloud computing paradigm by placing resources close to the network edges to cope with the upcoming growth of connected devices. Future applications: health monitoring and predictive services within the framework of the Smart City, Internet of things (IoT), vehicular ad hoc network, autonomous vehicles present a new set of strict requirements, such as low latency. In this paper, we develop a set of methods for managing and orchestrating new intelligent services in a new network and computing infrastructure. In addition, we consider a new prototype using an orchestration system for managing the autonomous vehicles' resources in comparison with the existing approaches to the design of high-load networks. This orchestration platform is based on independent Docker containers that running the orchestration system. The main goal of our proposed system is to build an efficient network architecture with a minimum delay to process the information based on neural networks. Finally, simulation results proved that the proposed system can significantly not only reduce the overall network load but also increase the quality of the transmitted stream across the network in comparison with traditional network architectures. © 2020 ACM.

Authors
Khakimov A. 1 , Loborchuk A.3 , Ibodullokhodzha I.2 , Poluektov D. 1 , Elgendy I.A.4 , Muthanna A. 3
Publisher
Association for Computing Machinery
Language
English
Status
Published
Number
3442594
Year
2020
Organizations
  • 1 Peoples Friendship University of Russia (RUDNUniversity), Russian Federation
  • 2 National Research University Higher School of Economics, Moscow, Russian Federation
  • 3 Saint-Petersburg State University of Telecommunications, Saint-Petersburg, Russian Federation
  • 4 School of Computer Science and Technology Harbin Institute of Technology, Harbin, China
Keywords
Edge Computing; MEC; Network; V2X
Date of creation
16.12.2021
Date of change
16.12.2021
Short link
https://repository.rudn.ru/en/records/article/record/76351/
Share

Other records