Publication | Closed Access
IBNSlicing: Intent-Based Network Slicing Framework for 5G Networks using Deep Learning
36
Citations
13
References
2020
Year
Unknown Venue
Core Network ArchitectureMobile Data Offloading5G Network SlicingEngineering5G SystemNetwork SlicingEdge ComputingSoftware-defined NetworkingComputer EngineeringNetwork AnalysisNetwork SliceComputer ScienceMobile ComputingInternet Of ThingsDeep LearningAdvanced NetworkingNetwork Operators
Network slicing is an important pillar of 5G networks that empowers the network operators to provide the different quality of services (QoS) to the users. It enables network operators to split the physical network into multiple logical networks to meet different QoS requirements. In this research paper, we have designed an intent-based network slicing framework that can slice and manage the core network and radio access network (RAN) resources efficiently. It is an automated system, where users just needs to provide higher-level information in the form of intents/contracts for a network slice, and in return our system deploys and configures the requested resources. Moreover, a deep learning model Generative Adversarial Neural Network (GAN) has been used for the management of network resources. Several tests have been performed by creating three slices with our system, which shows better performance in terms of bandwidth and latency.
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