Skip to main content
Article
Stable Matching based Resource Allocation for Service Provider's Revenue Maximization in 5G Networks
IEEE Transactions on Mobile Computing
  • Ajay Pratap
  • Sajal K. Das, Missouri University of Science and Technology
Abstract

5G technology is foreseen to have a heterogeneous architecture with the various computational capability, and radio-enabled Service Providers (SPs) and Service Requesters (SRs), working altogether in a cellular model. However, the coexistence of heterogeneous network model spawns several research challenges such as diverse SRs with uneven service deadlines, interference management, and revenue maximization of non-uniform computational capacities enabled SPs. Thus, we propose a coexistence of heterogeneous SPs and SRs enabled cellular 5G network and formulate the SPs' revenue maximization via resource allocation, considering different kinds of interference, data rate, and latency altogether as an optimization problem and further propose a distributed many-to-many stable matching based solution. Moreover, we offer an adaptive stable matching based distributed algorithm to solve the formulated problem in a dynamic network model. Through extensive theoretical and simulation analysis, we have shown the effect of different parameters on the resource allocation objectives and achieves 94\% of optimum network performance.

Department(s)
Computer Science
Research Center/Lab(s)
Center for High Performance Computing Research
Publication Status
Early Access
Comments
Published online: 05 Mar 2021
Keywords and Phrases
  • 5G,
  • IoT,
  • Service Provider,
  • Service Requester,
  • Smart Healthcare,
  • Stable matching
Document Type
Article - Journal
Document Version
Citation
File Type
text
Language(s)
English
Rights
© 2021 Institute of Electrical and Electronics Engineers (IEEE), All rights reserved.
Publication Date
3-5-2021
Publication Date
05 Mar 2021
Disciplines
Citation Information
Ajay Pratap and Sajal K. Das. "Stable Matching based Resource Allocation for Service Provider's Revenue Maximization in 5G Networks" IEEE Transactions on Mobile Computing (2021) ISSN: 1536-1233; 1558-0660
Available at: http://works.bepress.com/sajal-das/198/