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CEAP

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dc.contributor.author Abdel Wahab, Omar
dc.contributor.author Mourad, Azzam
dc.contributor.author Otrok, Hadi
dc.contributor.author Bentahar, Jamal
dc.date.accessioned 2017-02-06T07:35:25Z
dc.date.available 2017-02-06T07:35:25Z
dc.date.copyright 2016 en_US
dc.date.issued 2017-02-06
dc.identifier.issn 0957-4174 en_US
dc.identifier.uri http://hdl.handle.net/10725/5180
dc.description.abstract The infrastructureless and decentralized nature of Vehicular Ad Hoc Network (VANET) makes it quite vulnerable to different types of malicious attacks. Detecting such attacks has attracted several contributions in the past few years. Nonetheless, the applicability of the current detection mechanisms in the deployed vehicular networks is hindered by two main challenges imposed by the special characteristics of VANETs. The first challenge is related to the highly mobile nature of vehicles that complicates the processes of monitoring, buffering, and analyzing observations on these vehicles as they are continuously moving and changing their locations. The second challenge is concerned with the limited resources of the vehicles especially in terms of storage space that restricts the vehicles’ capacity of storing a huge amount of observations and applying complex detection mechanisms. To tackle these challenges, we propose a multi-decision intelligent detection model called CEAP that complies with the highly mobile nature of VANET with increased detection rate and minimal overhead. The basic idea is to launch cooperative monitoring between vehicles to build a training dataset that is analyzed by the Support Vector Machine (SVM) learning technique in online and incremental fashions to classify the smart vehicles either cooperative or malicious. To adapt the proposed model to the high mobility, we design it on top of the VANET QoS-OLSR protocol, which is a clustering protocol that maintains the stability of the clusters and prolongs the network’s lifetime by considering the mobility metrics of vehicles during clusters formation. To reduce the overhead of the proposed detection model and make it feasible for the resource-constrained nodes, we reduce the size of the training dataset by (1) restricting the data collection, storage, and analysis to concern only a set of specialized nodes (i.e., Multi-Point Relays) that are responsible for forwarding packets on behalf of their clusters; and (2) migrating only few tuples (i.e., support vectors) from one detection iteration to another. We propose as well a propagation algorithm that disseminates only the final decisions (instead of the whole dataset) among clusters with the aim of reducing the overhead of either exchanging results between each set of vehicles or repeating the detection steps for the already detected malicious vehicles. Simulation results show that our model is able to increase the accuracy of detections, enhance the attack detection rate, decrease the false positive rate, and improve the packet delivery ratio in the presence of high mobility compared to the classical SVM-based, Dempster–Shafer-based, and averaging-based detection techniques. en_US
dc.language.iso en en_US
dc.title CEAP en_US
dc.type Article en_US
dc.description.version Published en_US
dc.title.subtitle SVM-based intelligent detection model for clustered vehicular ad hoc networks en_US
dc.author.school SAS en_US
dc.author.idnumber 200904853 en_US
dc.author.department Computer Science and Mathematics en_US
dc.description.embargo N/A en_US
dc.relation.journal Expert Systems with Applications en_US
dc.journal.volume 50 en_US
dc.article.pages 40-54 en_US
dc.keywords Vehicular ad hoc network en_US
dc.keywords Intrusion detection en_US
dc.keywords High mobility en_US
dc.keywords Support vector machine (SVM) en_US
dc.keywords Malicious node en_US
dc.keywords Training set size reduction en_US
dc.identifier.doi http://dx.doi.org/10.1016/j.eswa.2015.12.006 en_US
dc.identifier.ctation Wahab, O. A., Mourad, A., Otrok, H., & Bentahar, J. (2016). CEAP: SVM-based intelligent detection model for clustered vehicular ad hoc networks. Expert Systems with Applications, 50, 40-54. en_US
dc.author.email azzam.mourad@lau.edu.lb en_US
dc.identifier.tou http://libraries.lau.edu.lb/research/laur/terms-of-use/articles.php en_US
dc.identifier.url http://www.sciencedirect.com/science/article/pii/S0957417415008088 en_US
dc.orcid.id https://orcid.org/0000-0001-9434-5322
dc.author.affiliation Lebanese American University en_US


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