Browse Publications Technical Papers 12-04-01-0010
2021-03-16

Identification of Test Scenarios for Autonomous Vehicles Using Fatal Accident Data 12-04-01-0010

This also appears in SAE International Journal of Connected and Automated Vehicles-V130-12EJ

The growing interest from automakers and ride-hailing companies has increased the investment for high automation levels in vehicles. An important challenge in introducing autonomous vehicle (AV) technology to the market is the effort required in the validation. The research shows that AVs have to be test-driven hundreds of millions of miles to demonstrate reliability, which could take hundreds of years. Therefore, the identification of critical test scenarios and reduction of scenario sample space are urgent requirements for providing safe and reliable AVs in a time- and cost-efficient manner.
This article proposes an AV test scenario generation system that creates abstract test scenarios using historical fatal accident data. The method processes and prunes the extensive fatal accident data to generate core test scenarios targeting the reasoning systems of AVs. First, the human-specific factors and the redundant scenario components are filtered out from the crash data so that the accidents can be grouped as core abstract scenarios. The pruned scenarios are then prioritized by severity levels according to the fatality ratio and a relative scaling factor. The functionality of the system is demonstrated by using accident data from the National Highway Transportation Safety Administration (NHTSA). The system reduces the sample space of the utilized dataset substantially, which improves the efficiency of the validation effort. This focused strategy will accelerate the identification of faults in AV systems by complementing the current testing methods.

SAE MOBILUS

Subscribers can view annotate, and download all of SAE's content. Learn More »

Members save up to 19% off list price.
Login to see discount.
We also recommend:
STANDARD

Pyrometry

AMS2750G

View Details

JOURNAL ARTICLE

Addressing Run Off Road Safety

2014-01-0554

View Details

TECHNICAL PAPER

Occupant-Based Injury Severity Prediction

2021-22-0002

View Details

X