Machine Learning with Service Classification for Detecting Control Plane Intrusions in Software Defined Optical Networks

Based on adaptive back-propagation algorithm with service classification, a control plane intrusion detection method is proposed for software defined optical networks. Results show that over 96% control plane intrusion can be accurately detected.

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