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MERLINS – Moving Target Defense Enhanced with Deep-RL for NFV In-Depth Security

Wissem Soussi, Maria Christopoulou, Gürkan Gür, Burkhard Stiller

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Abstract

Moving to a multi-cloud environment and service-based architecture, 5G and future 6G networks require additional defensive mechanisms to protect virtualized network resources. This paper presents MERLINS, a novel architecture generating optimal Moving Target Defense (MTD) policies for proactive and reactive security of network slices. By formally modeling telecommunication networks compliant with Network Function Virtualization (NFV) into a multi-objective Markov Decision Process (MOMDP), MERLINS uses deep Reinforcement Learning (deep-RL) to optimize the MTD strategy that considers security, network performance, and service level requirements. Practical experiments on a 5G testbed showcase the feasibility as well as restrictions of MTD operations and the effectiveness in mitigating malware infections. It is observed that multi-objective RL (MORL) algorithms outperform state-of-the-art deep-RL algorithms that scalarize the reward vector of the MOMDP. This improvement by a factor of two leads to a better MTD policy than the baseline static counterpart used for the evaluation.

Topics & Concepts

TestbedComputer scienceReinforcement learningCloud computingMarkov decision processNetwork Functions VirtualizationVirtualizationArchitectureService (business)Security policyDistributed computingProcess (computing)Baseline (sea)Network securityArtificial intelligenceComputer networkMarkov processComputer securityOperating systemMathematicsVisual artsEconomicsArtGeologyEconomyOceanographyStatisticsSoftware-Defined Networks and 5GNetwork Security and Intrusion DetectionSmart Grid Security and Resilience