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Title An Intelligent Mechanism For Sybil Attacks Detection In Vanets
ID_Doc 8525
Authors Quevedo C.H.O.O.; Quevedo A.M.B.C.; Campos G.A.; Gomes R.L.; Celestino J.; Serhrouchni A.
Year 2020
Published IEEE International Conference on Communications, 2020-June
DOI http://dx.doi.org/10.1109/ICC40277.2020.9149371
Abstract Vehicular Ad Hoc Networks (VANETs) have a strategic goal to achieve service delivery in roads and smart cities, considering the integration and communication between vehicles, sensors and fixed road-side components (routers, gateways and services). VANETs have singular characteristics such as fast mobile nodes, self-organization, distributed network and frequently changing topology. Despite the recent evolution of VANETs, security, data integrity and users privacy information are major concerns, since attacks prevention is still open issue. One of the most dangerous attacks in VANETs is the Sybil, which forges false identities in the network to disrupt compromise the communication between the network nodes. Sybil attacks affect the service delivery related to road safety, traffic congestion, multimedia entertainment and others. Thus, VANETs claim for security mechanism to prevent Sybil attacks. Within this context, this paper proposes a mechanism, called SyDVELM, to detect Sybil attacks in VANETs based on artificial intelligence techniques. The SyDVELM mechanism uses Extreme Learning Machine (ELM) with occasional features of vehicular nodes, minimizing the identification time, maximizing the detection accuracy and improving the scalability. The results suggest that the suitability of SyDVELM mechanism to mitigate Sybil attacks and to maintain the service delivery in VANETs. © 2020 IEEE.
Author Keywords Extreme Machine Learning; Security; Sybil Attacks.; VANET


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