2020
DOI: 10.1109/access.2020.2996214
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A Machine Learning Security Framework for Iot Systems

Abstract: Internet of Things security is attracting a growing attention from both academic and industry communities. Indeed, IoT devices are prone to various security attacks varying from Denial of Service (DoS) to network intrusion and data leakage. This paper presents a novel machine learning (ML) based security framework that automatically copes with the expanding security aspects related to IoT domain. This framework leverages both Software Defined Networking (SDN) and Network Function Virtualization (NFV) enablers … Show more

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Cited by 143 publications
(70 citation statements)
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References 46 publications
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“…When a network attack occurs in an SDN, ML can be introduced as a detection technology to dynamically control and route the communication flow. Recently, studies using ML to detect and automatically respond to DDoS attacks, abnormal patterns, and data leaks against IoT networks and devices have increased [60,[189][190][191][192][193][194][195][196][197][198][199].…”
Section: Identification Of Topics In Iot Securitymentioning
confidence: 99%
“…When a network attack occurs in an SDN, ML can be introduced as a detection technology to dynamically control and route the communication flow. Recently, studies using ML to detect and automatically respond to DDoS attacks, abnormal patterns, and data leaks against IoT networks and devices have increased [60,[189][190][191][192][193][194][195][196][197][198][199].…”
Section: Identification Of Topics In Iot Securitymentioning
confidence: 99%
“…Testing of various IoT devices such as smart home, wireless sensor networks (WSN), and smart wearables is done to identify the security holes. An integrated AI security framework which exploits machine learning approaches to detect new kind of cyber-attacks in IoT is implemented [38]. Tempo-spatial correlation between different sensor data is analyzed for threat identification.…”
Section: Vulnerability Mitigation Approaches and Security Testbedsmentioning
confidence: 99%
“…Security and network Orchestration [ 10 , 11 ] leveraging NFV/SDN in next-generation networks and IoT [ 12 , 13 ], is gaining more and more research attraction as key element to achieve truly efficient, reliable and resilient infrastructures. In this sense, novel zero-touch network security management architectures and frameworks [ 6 , 14 ] for IoT are emerging, which aims to optimize the deployment and (re-)configuration of virtualized and softwarized network security appliances, such as vFirewalls, vHoneynets, vAAA, vChannelProtection, vProxies or vIDS (Intrusion Detection Systems).…”
Section: Related Workmentioning
confidence: 99%