Smart City Gnosys

Smart city article details

Title A Ddos Attack Mitigation Framework For Iot Networks Using Fog Computing
ID_Doc 1267
Authors Lawall M.A.; Shaikh R.A.; Hassan S.R.
Year 2021
Published Procedia Computer Science, 182
DOI http://dx.doi.org/10.1016/j.procs.2021.02.003
Abstract Tlie advent of 5G which strives to connect more devices with high speed and low latencies has aided the growth IoT network. Despite the benefits of IoT, its applications in several facets of our lives such as smart health, smart homes, smart cities, etc. have raised several security concerns such as Distributed Denial of Service (DDoS) attacks. In this paper, we propose a DDoS mitigation framework for IoT using fog computing to ensure fast and accurate attack detection. The fog provides resources for effective deployment of the mitigation framework, this solves the deficits in resources of the resource-constramed IoT devices. The mitigation framework uses an anomaly-based intrusion detection method and a database. The database stores signatures of previously detected attacks while the anomaly-based detection scheme utilizes k-NN classification algorithm for detecting the DDoS attacks. By using a database containing the attack signatures, attacks can be detected faster when the same type of attack is executed again. The evaluations using a DDoS based dataset show that the k-NN classification algorithm proposed for our framework achieves a satisfactory accuracy in detecting DDoS attacks. B) 2021 The Authors. Published by Elsevier B.V.
Author Keywords Anomaly mitigation; Classification algorithm; Ddos; Fog computing; Internet of things (IoT)


Similar Articles


Id Similarity Authors Title Published
17578 View0.923Dave S.; Degadwala S.; Vyas D.Ddos Detection At Fog Layer In Internet Of ThingsInternational Conference on Edge Computing and Applications, ICECAA 2022 - Proceedings (2022)
5530 View0.91Dantas Silva F.S.; Silva E.; Neto E.P.; Lemos M.; Venancio Neto A.J.; Esposito F.A Taxonomy Of Ddos Attack Mitigation Approaches Featured By Sdn Technologies In Iot ScenariosSensors (Switzerland), 20, 11 (2020)
33934 View0.907Shukla P.; Krishna C.R.; Patil N.V.Iot Traffic-Based Ddos Attacks Detection Mechanisms: A Comprehensive ReviewJournal of Supercomputing, 80, 7 (2024)
20623 View0.899Akhtar M.M.; Alasmari S.A.; Haidar S.W.; Alzubaidi A.A.Distributed Denial Of Service Attack Detection And Mitigation Strategy In 5G-Enabled Internet Of Things Networks With Adaptive Cascaded Gated Recurrent UnitPeer-to-Peer Networking and Applications, 18, 2 (2025)
295 View0.892Sadhwani S.; Mathur A.; Muthalagu R.; Pawar P.M.5G-Siid: An Intelligent Hybrid Ddos Intrusion Detector For 5G Iot NetworksInternational Journal of Machine Learning and Cybernetics, 16, 2 (2025)
19238 View0.886Thiruppathi K.; Jaidhar C.D.Detection And Mitigation Of Iot Based Ddos Attack Using Extended Mud Enabled Device Profiling TechniquesCommunications in Computer and Information Science, 2333 CCIS (2025)
35103 View0.886Sharma H.; Gupta S.Leveraging Machine Learning And Sdn-Fog Infrastructure To Mitigate Flood Attacks2021 IEEE Globecom Workshops, GC Wkshps 2021 - Proceedings (2021)
17581 View0.884Rajan D.M.; Sathya Priya S.Ddos Mitigation Techniques In Iot: A Survey2022 International Conference on IoT and Blockchain Technology, ICIBT 2022 (2022)
15037 View0.884Abinaya M.; Prabakeran S.; Kalpana M.Comparative Evaluation On Various Machine Learning Strategies Based On Identification Of Ddos Attacks In Iot Environment2023 9th International Conference on Advanced Computing and Communication Systems, ICACCS 2023 (2023)
30623 View0.88Bamou A.; Khardioui M.; El Ouadghiri M.D.; Aghoutane B.Implementing And Evaluating An Intrusion Detection System For Denial Of Service Attacks In Iot EnvironmentsLecture Notes in Networks and Systems, 92 (2020)