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Federated Learning-Based Security Attack Detection for Multi-Controller Software-Defined Networks

Abrar Omar Alkhamisi, Iyad Katib, Seyed M. Buhari

2024Algorithms12 citationsDOIOpen Access PDF

Abstract

A revolutionary concept of Multi-controller Software-Defined Networking (MC-SDN) is a promising structure for pursuing an evolving complex and expansive large-scale modern network environment. Despite the rich operational flexibility of MC-SDN, it is imperative to protect the network deployment against potential vulnerabilities that lead to misuse and malicious activities on data planes. The security holes in the MC-SDN significantly impact network survivability, and subsequently, the data plane is vulnerable to potential security threats and unintended consequences. Accordingly, this work intends to design a Federated learning-based Security (FedSec) strategy that detects the MC-SDN attack. The FedSec ensures packet routing services among the nodes by maintaining a flow table frequently updated according to the global model knowledge. By executing the FedSec algorithm only on the network-centric nodes selected based on importance measurements, the FedSec reduces the system complexity and enhances attack detection and classification accuracy. Finally, the experimental results illustrate the significance of the proposed FedSec strategy regarding various metrics.

Topics & Concepts

Computer scienceSoftware-defined networkingSoftware deploymentFlexibility (engineering)Forwarding planeTestbedTable (database)SurvivabilityComputer securityOpenFlowNetwork packetDenial-of-service attackNetwork securityController (irrigation)Computer networkDistributed computingData miningThe InternetSoftware engineeringAgronomyMathematicsBiologyWorld Wide WebStatisticsSoftware-Defined Networks and 5GNetwork Security and Intrusion DetectionAdvanced Memory and Neural Computing
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