Corner Scenario Generation Method Based on Feature-Optimized Combinations for Automated Driving Systems

2025-01-7317

12/31/2025

Authors
Abstract
Content
With the advancement of automated driving system levels, corner scenarios characterized by low probability and high risk have become critical for the safety validation of automated vehicles. However, due to the typical long-tail distribution of such scenarios, data-driven mining approaches face significant challenges in achieving efficient generation. To address this issue, this study proposes a feature-optimized combination-based method for generating corner scenarios in automated driving systems. Key scenario features related to functional failures are first identified using a combined approach of system theoretic process analysis (STPA) and hazard and operability analysis (HAZOP). Based on these features, an adaptive genetic algorithm is employed to optimize feature combinations and generate large numbers of corner scenario types that meet specified constraints. The proposed method is validated using cut-in and pedestrian-crossing scenarios as baseline cases. The results show that this method enables large-scale generation of corner scenario types grounded in regulatory scenarios and provides significant support for the development of comprehensive corner scenario libraries for automated vehicle testing.
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Pages
10
Citation
Zhou, Shiying et al., "Corner Scenario Generation Method Based on Feature-Optimized Combinations for Automated Driving Systems," SAE Technical Paper 2025-01-7317, 2025-, .
Additional Details
Publisher
Published
8 hours ago
Product Code
2025-01-7317
Content Type
Technical Paper
Language
English