English

Tenant-Aware Slice Admission Control using Neural Networks-Based Policy Agent

Signal Processing 2020-01-14 v2

Abstract

5G networks will provide the platform for deploying large number of tenant-associated management, control and end-user applications having different resource requirements at the infrastructure level. In this context, the 5G infrastructure provider must optimize the infrastructure resource utilization and increase its revenue by intelligently admitting network slices that bring the most revenue to the system. In addition, it must ensure that resources can be scaled dynamically for the deployed slices when there is a demand for them from the deployed slices. In this paper, we present a neural networks-driven policy agent for network slice admission that learns the characteristics of the slices deployed by the network tenants from their resource requirements profile and balances the costs and benefits of slice admission against resource management and orchestration costs. The policy agent learns to admit the most profitable slices in the network while ensuring their resource demands can be scaled elastically. We present the system model, the policy agent architecture and results from simulation study showing an increased revenue for infra-structure provider compared to other relevant slice admission strategies.

Keywords

Cite

@article{arxiv.1908.07494,
  title  = {Tenant-Aware Slice Admission Control using Neural Networks-Based Policy Agent},
  author = {Pedro Batista and Shah Nawaz Khan and Peter Öhlén and Aldebaro Klautau},
  journal= {arXiv preprint arXiv:1908.07494},
  year   = {2020}
}

Comments

14 pages; update: fixed typo

R2 v1 2026-06-23T10:52:28.478Z