Estimation of Video Streaming KQIs for Radio Access Negotiation in
Network Slicing Scenarios
- URL: http://arxiv.org/abs/2006.09162v1
- Date: Tue, 16 Jun 2020 14:10:54 GMT
- Title: Estimation of Video Streaming KQIs for Radio Access Negotiation in
Network Slicing Scenarios
- Authors: Carlos Baena, Sergio Fortes, Eduardo Baena, Raquel Barco
- Abstract summary: 5G introduces the concept of network slicing as a new paradigm that presents a completely different view of the network configuration and optimization.
A main challenge of this scheme is to establish which specific resources would provide the necessary quality of service for the users using the slice.
- Score: 0.34410212782758043
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: The use of multimedia content has hugely increased in recent times, becoming
one of the most important services for the users of mobile networks.
Consequently, network operators struggle to optimize their infrastructure to
support the best video service-provision. As an additional challenge, 5G
introduces the concept of network slicing as a new paradigm that presents a
completely different view of the network configuration and optimization. A main
challenge of this scheme is to establish which specific resources would provide
the necessary quality of service for the users using the slice. To address
this, the present work presents a complete framework for this support of the
slice negotiation process through the estimation of the provided Video
Streaming Key Quality Indicators (KQIs), which are calculated from network
low-layer configuration parameters and metrics. The proposed estimator is then
evaluated in a real cellular scenario.
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