IEEE Access (Jan 2023)

Toward Attack Modeling Technique Addressing Resilience in Self-Driving Car

  • Junaid M. Qurashi,
  • Kamal Mansur Jambi,
  • Fathy E. Eassa,
  • Maher Khemakhem,
  • Fawaz Alsolami,
  • Abdullah Ahmad Basuhail

DOI
https://doi.org/10.1109/ACCESS.2022.3233424
Journal volume & issue
Vol. 11
pp. 2652 – 2673

Abstract

Read online

Self-driving cars are going to be the main future mode of transportation. However, such systems like, any other cyber-physical system, are vulnerable to attack vectors and uncertainties. As a response, resilience-based approaches are being developed. However, the approaches lack a sound attack model that recognizes the attack vectors and vulnerabilities such a system would have and that does a proper severity analysis of such attacks. Moreover, the existing attack models are too generic. Currently, the domain lacks such specific work pertaining to self-driving cars. Given the technology and architecture of self-driving cars, the field requires a domain-specific attack model. This paper gives a review of the attack models and proposes a domain-specific attack model for self-driving cars. The proposed attack model, severity-based analytical attack model for resilience (SAAMR), provides attack analysis based on existing models. Also, a domain-based severity score for attacks is calculated. Further, the attacks are classified using the decision-tree method and predictions of the type of attacks are given using long short-term memory network.

Keywords