Detecting Sybil Attacks using Proofs of Work and Location in VANETs
April 11, 2019 Β· Declared Dead Β· π IEEE Transactions on Dependable and Secure Computing
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Authors
Mohamed Baza, Mahmoud Nabil, Niclas Bewermeier, Kemal Fidan, Mohamed Mahmoud, Mohamed Abdallah
arXiv ID
1904.05845
Category
cs.CR: Cryptography & Security
Citations
108
Venue
IEEE Transactions on Dependable and Secure Computing
Last Checked
4 months ago
Abstract
In this paper, we propose a Sybil attack detection scheme using proofs of work and location. The idea is that each road side unit (RSU) issues a signed time-stamped tag as a proof for the vehicle's anonymous location. Proofs sent from multiple consecutive RSUs is used to create vehicle trajectory which is used as vehicle anonymous identity. Also, one RSU is not able to issue trajectories for vehicles, rather the contributions of several RSUs are needed. By this way, attackers need to compromise an infeasible number of RSUs to create fake trajectories. Moreover, upon receiving the proof of location from an RSU, the vehicle should solve a computational puzzle by running proof of work (PoW) algorithm. So, it should provide a valid solution (proof of work) to the next RSU before it can obtain a proof of location. Using the PoW can prevent the vehicles from creating multiple trajectories in case of low-dense RSUs. Then, during any reported event, e.g., road congestion, the event manager uses a matching technique to identify the trajectories sent from Sybil vehicles. The scheme depends on the fact that the Sybil trajectories are bounded physically to one vehicle; therefore, their trajectories should overlap. Extensive experiments and simulations demonstrate that our scheme achieves high detection rate to Sybil attacks with low false negative and acceptable communication and computation overhead.
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