Budget-Constrained Optimal Deployment of Redundant Services in Edge Computing Environment
Document Type
Article
Publication Date
6-1-2023
Abstract
With the development of multiaccess edge computing (also called mobile-edge computing, MEC), more and more service-based applications are deployed to edge servers in order to ensure desired Quality of Service (QoS). In edge environment, how to reasonably deploy application services emerges as a challenging problem due to limited resources, heterogeneous servers, and different geographical locations of users. Benefiting from its reusability, a single service can be used by multiple applications. Yet only a few studies of the deployment problem in edge environment consider such property. This work considers the redundant deployment of reused services by different applications, so as to achieve high QoS. Due to the importance of cost for providers, it aims to minimize transmission cost and network latency under the constraint of deployment budget. This work first builds a redundant service deployment model under a heterogeneous edge environment and defines it as a multiobjective optimization problem under a given budget constraint. Then, service priority is calculated to determine redundancy, and the K-medoids clustering algorithm based on request frequency filtering is used to conduct edge server selection. It next proposes a genetic algorithm based on priority to obtain an optimized plan. Finally, this work conducts experiments on real-world datasets to prove the superiority of the proposed method over existing ones.
Identifier
85147265439 (Scopus)
Publication Title
IEEE Internet of Things Journal
External Full Text Location
https://doi.org/10.1109/JIOT.2023.3234966
e-ISSN
23274662
First Page
9453
Last Page
9464
Issue
11
Volume
10
Grant
61602109
Fund Ref
Department of Sport and Recreation, Government of Western Australia
Recommended Citation
Wang, Pengwei; Xu, Jin; Zhou, Mengchu; and Albeshri, Aiiad, "Budget-Constrained Optimal Deployment of Redundant Services in Edge Computing Environment" (2023). Faculty Publications. 1706.
https://digitalcommons.njit.edu/fac_pubs/1706