RefIoV.pdf (583.8 kB)
ReFIoV: a novel reputation framework for information-centric vehicular applications
journal contribution
posted on 2023-06-09, 16:12 authored by Naercio Magaia, Zhengguo ShengZhengguo ShengIn this article, a novel reputation framework for information-centric vehicular applications leveraging on machine learning and the artificial immune system (AIS), also known as ReFIoV, is proposed. Specifically, Bayesian learning and classification allow each node to learn as newly observed data of the behavior of other nodes become available and hence classify these nodes, meanwhile, the K-Means clustering algorithm allows to integrate recommendations from other nodes even if they behave in an unpredictable manner. AIS is used to enhance misbehavior detection. The proposed ReFIoV can be implemented in a distributed manner as each node decides with whom to interact. It provides incentives for nodes to cache and forward others’ mobile data as well as achieves robustness against false accusations and praise. The performance evaluation shows that ReFIoV outperforms state-of-the-art reputation systems for the metrics considered. That is, it presents a very low number of misbehaving nodes incorrectly classified in comparison to another reputation scheme. The proposed AIS mechanism presents a low overhead. The incorporation of recommendations enabled the framework to reduce even further detection time.
Funding
Doing More with Less Wiring: Mission-Critical and Intelligent Communication Protocols for Future Vehicles Using Power Lines; G2132; EPSRC-ENGINEERING & PHYSICAL SCIENCES RESEARCH COUNCIL; EP/P025862/1
Bionic communications and networking for connected vehicles; G2114; ROYAL SOCIETY; IE160920
History
Publication status
- Published
File Version
- Accepted version
Journal
IEEE Transactions on Vehicular TechnologyISSN
0018-9545Publisher
Institute of Electrical and Electronics EngineersExternal DOI
Issue
2Volume
68Page range
1810-1823Department affiliated with
- Engineering and Design Publications
Research groups affiliated with
- Communications Research Group Publications
Full text available
- Yes
Peer reviewed?
- Yes