Paper
9 April 2024 Autonomous driving expected functional safety hazard identification method based on the Mealy state machine
Tianyi Zhu, Libin Zhu, Tingting Wu, Wenchen Xu
Author Affiliations +
Abstract
Aiming at the strong correlation between the hazards of the autonomous driving system of intelligent networked vehicles and the operating environment and control action, this paper proposes a method for identifying hazards of the expected functional safety of autonomous driving based on a mealy state machine. Firstly, the vehicle action rule base is determined by the operating environment of the vehicle and the available control action; secondly, the mapping between the mealy state machine and the vehicle operating state is established to simulate the vehicle state operation logic in the real scene; finally, by identifying the relationship between the vehicle state and the Conflicts between the operating environment and control actions identify potential hazards. In order to verify the effectiveness of the proposed method, this paper identifies 257 potential hazards through the identification of the expected functional safety hazards of the ACC system of a L2 vehicle, which is more efficient and convenient compared with the traditional STPA method.
(2024) Published by SPIE. Downloading of the abstract is permitted for personal use only.
Tianyi Zhu, Libin Zhu, Tingting Wu, and Wenchen Xu "Autonomous driving expected functional safety hazard identification method based on the Mealy state machine", Proc. SPIE 12989, Third International Conference on Intelligent Traffic Systems and Smart City (ITSSC 2023), 1298905 (9 April 2024); https://doi.org/10.1117/12.3023886
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KEYWORDS
Autonomous vehicles

Safety

Autonomous driving

Hazard analysis

Control systems

Logic

Roads

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