PAFOT: A Position-Based Approach for Finding Optimal Tests of Autonomous Vehicles
May 06, 2024 Β· Declared Dead Β· π International Conference/Workshop on Automation of Software Test
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Authors
Victor Crespo-Rodriguez, Neelofar, Aldeida Aleti
arXiv ID
2405.03326
Category
cs.SE: Software Engineering
Citations
5
Venue
International Conference/Workshop on Automation of Software Test
Last Checked
4 months ago
Abstract
Autonomous Vehicles (AVs) are prone to revolutionise the transportation industry. However, they must be thoroughly tested to avoid safety violations. Simulation testing plays a crucial role in finding safety violations of Automated Driving Systems (ADSs). This paper proposes PAFOT, a position-based approach testing framework, which generates adversarial driving scenarios to expose safety violations of ADSs. We introduce a 9-position grid which is virtually drawn around the Ego Vehicle (EV) and modify the driving behaviours of Non-Playable Characters (NPCs) to move within this grid. PAFOT utilises a single-objective genetic algorithm to search for adversarial test scenarios. We demonstrate PAFOT on a well-known high-fidelity simulator, CARLA. The experimental results show that PAFOT can effectively generate safety-critical scenarios to crash ADSs and is able to find collisions in a short simulation time. Furthermore, it outperforms other search-based testing techniques by finding more safety-critical scenarios under the same driving conditions within less effective simulation time.
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