2021
DOI: 10.3390/s21144939
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Towards a Machine Learning Based Situational Awareness Framework for Cybersecurity: An SDN Implementation

Abstract: The ever-increasing number of internet-connected devices, along with the continuous evolution of cyber-attacks, in terms of volume and ingenuity, has led to a widened cyber-threat landscape, rendering infrastructures prone to malicious attacks. Towards addressing systems’ vulnerabilities and alleviating the impact of these threats, this paper presents a machine learning based situational awareness framework that detects existing and newly introduced network-enabled entities, utilizing the real-time awareness f… Show more

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Cited by 33 publications
(15 citation statements)
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References 29 publications
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“…The control layer is responsible for the generation and distribution of all forwarding logic. The author of [23] presented a machine learning powered SDN work. Therefore, this paper implements the model layer on the control plane of the software defined network.…”
Section: Sdn and Nfvmentioning
confidence: 99%
“…The control layer is responsible for the generation and distribution of all forwarding logic. The author of [23] presented a machine learning powered SDN work. Therefore, this paper implements the model layer on the control plane of the software defined network.…”
Section: Sdn and Nfvmentioning
confidence: 99%
“…Mengtian Liu [8] analyzed the security requirements of SDN networks and proposed an SDN staged network situational awareness model including six stages of information collection, information preprocessing, information storage, information fusion, situational assessment, and administrator feedback configuration by combining the characteristics of SDN network architecture. Yannis Nikoloudakis [9] used an SDN controller to assign the entity to the appropriate network connection piece, dynamically slice the network using flow rules, and test the underlying SDN architecture with Machine Learning(ML) based IDS, all of which improved the accuracy of the evaluation and prediction results. From a logical level, Yan Li [10] investigates the present framework of network security situational awareness, which is organized into five stages: data collecting, model abstraction, index establishment, solution analysis, and situation prediction.…”
Section: Related Workmentioning
confidence: 99%
“…Nikoloudakis et al [15] proposed a machine learning-based solution for an Intrusion Detection System using a Software Defined Networking (SDN). Their approach "detects existing and newly introduced network-enabled entities, utilizing the real-time awareness feature provided by the SDN paradigm, assesses them against known vulnerabilities, and assigns them to a connectivity-appropriate network slice" [15]. While this work is shown to work with Identify, Protect, and Detect vulnerabilities, they are for the individual entities, while our solution is for an entire system of entities or components.…”
Section: Related Workmentioning
confidence: 99%