Publication | Open Access
QoS-aware Traffic Classification Architecture Using Machine Learning and Deep Packet Inspection in SDNs
63
Citations
13
References
2018
Year
Network FlowsEngineeringMachine LearningInternet Traffic AnalysisSoftware-defined NetworkingEdge ComputingDeep Packet InspectionTraffic PredictionNetwork Traffic ControlComputer EngineeringNetwork Traffic MeasurementComputer ScienceInternet Of ThingsDeep LearningTraffic MonitoringSdn NetworksDeep Packet DetectionFickle Traffic Characteristics
The QoS-aware traffic classification techniques of SDN networks is the basis for network to provide fine-grained QoS traffic engineering. In this paper, we propose an architecture which combines deep packet detection and semi-supervised machine learning of multi-classifier in SDN. This architecture can classify flows into different QoS categories. Based on this, network can achieve fine-grained adaptive QoS traffic engineering. Moreover, through deep packet detection techniques, network can maintain a dynamic flow database. Classifier can adapt to the rapid emergence of network application and fickle traffic characteristics of current network by periodically re-training with the dynamic flow database. Experiments verify that our classification framework can achieve good classification accuracy.
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