Skip to main content

Research Repository

Advanced Search

Resistance to Cybersecurity Attacks in a Novel Network for Autonomous Vehicles

Brocklehurst, Callum; Radenkovic, Milena

Authors

Callum Brocklehurst



Abstract

The increased interest in autonomous vehicles has led to the development of novel networking protocols in VANETs In such a widespread safety-critical application, security is paramount to the implementation of the networks. We view new autonomous vehicle edge networks as opportunistic networks that bridge the gap between fully distributed vehicular networks based on short-range vehicle-to-vehicle communication and cellular-based infrastructure for centralized solutions. Experiments are conducted using opportunistic networking protocols to provide data to autonomous trams and buses in a smart city. Attacking vehicles enter the city aiming to disrupt the network to cause harm to the general public. In the experiments the number of vehicles and the attack length is altered to investigate the impact on the network and vehicles. Considering different measures of success as well as computation expense, measurements are taken from all nodes in the network across different lengths of attack. The data gathered from each node allow exploration into how different attacks impact metrics including the delivery probability of a message, the time taken to deliver and the computation expense to each node. The novel multidimensional analysis including geospatial elements provides evidence that the state-of-the-art MaxProp algorithm outperforms the benchmark as well as other, more complex routing protocols in most of the categories. Upon the introduction of attacking nodes however, PRoPHET provides the most reliable delivery probability when under attack. Two different attack methods (black and grey holes) are used to disrupt the flow of messages throughout the network and the more basic protocols show that they are less consistent. In some metrics, the PRoPHET algorithm performs better when under attack due to the benefit of reduced network traffic.

Citation

Brocklehurst, C., & Radenkovic, M. (2022). Resistance to Cybersecurity Attacks in a Novel Network for Autonomous Vehicles. [Dataset]. https://doi.org/10.3390/jsan11030035

Acceptance Date Jul 11, 2022
Online Publication Date Jul 13, 2022
Publication Date Sep 1, 2022
Deposit Date Jul 12, 2022
Publicly Available Date Jul 21, 2022
DOI https://doi.org/10.3390/jsan11030035
Public URL https://nottingham-repository.worktribe.com/output/8950898
Collection Date Oct 5, 2021
Additional Information Dataset to accompany: Brocklehurst, C.; Radenkovic, M. Resistance to Cybersecurity Attacks in a Novel Network for Autonomous Vehicles. J. Sens. Actuator Netw. 2022, 11, 35. https://doi.org/10.3390/jsan11030035