Towards Full-Scenario Safety Evaluation of Automated Vehicles: A Volume-Based Method
Hang Zhou, Chengyuan Ma, Shiyu Shen, Zhaohui Liang, Xiaopeng Li

TL;DR
This paper introduces a volume-based framework for comprehensive safety evaluation of automated vehicles, overcoming data dependency and computational challenges of traditional methods, and enabling precise risk quantification in complex scenarios.
Contribution
It proposes a unified scenario modeling approach and a novel volume-based evaluation method that accurately measures risky scenarios without relying on probability estimates.
Findings
The volume-based method effectively quantifies risky scenarios.
Convexity of safe scenarios in car-following enables exact volume calculation.
Experimental validation shows the method's accuracy and applicability.
Abstract
With the rapid development of automated vehicles (AVs) in recent years, commercially available AVs are increasingly demonstrating high-level automation capabilities. However, most existing AV safety evaluation methods are primarily designed for simple maneuvers such as car-following and lane-changing. While suitable for basic tests, these methods are insufficient for assessing high-level automation functions deployed in more complex environments. First, these methods typically use crash rate as the evaluation metric, whose accuracy heavily depends on the quality and completeness of naturalistic driving environment data used to estimate scenario probabilities. Such data is often difficult and expensive to collect. Second, when applied to diverse scenarios, these methods suffer from the curse of dimensionality, making large-scale evaluation computationally intractable. To address these…
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Taxonomy
TopicsAutonomous Vehicle Technology and Safety · Traffic control and management · Robotic Path Planning Algorithms
