Integrated Scenario-based Analysis: A data-driven approach to support automated driving systems development and safety evaluation

Gibran Ali, Kaye Sullivan, Eileen Herbers, Vicki Williams, Dustin Holley, Jacobo Antona-Makoshi, Kevin Kefauver
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Abstract

Several scenario-based frameworks exist to aid in vehicle system development and safety assurance. However, there is a need for approaches that combine different types of datasets that offer varying levels of case severity, data richness, and representativeness. This study presents an integrated scenario-based analysis approach that encompasses scenario definition, fusion, parametrization, and test case generation. For this process, ten years of fatal and non-fatal national crash data from the United States are combined with over 34 million miles of naturalistic driving data. An illustrative example scenario, "turns at intersection", is chosen to demonstrate this approach. First, scenario definitions are established from both record-based and continuous time series data. Second, a frequency analysis is performed to understand how often events from the same scenario occur at different severities across datasets. Third, an analysis is performed to show the key factors relevant to the scenario and the distribution of various parameters. Finally, a method to combine both types of data into representative test case scenarios is presented. These techniques improve scenario representativeness in two major ways: first, they populate an entire spectrum of cases ranging from routine events to fatal crashes; and second, they provide context-rich, multi-year data by combining large-scale national and naturalistic datasets.
基于情景的综合分析:支持自动驾驶系统开发和安全评估的数据驱动方法
有几种基于情景的框架可以帮助车辆系统开发和安全保证。然而,目前还需要将不同类型的数据集结合起来的方法,这些数据集可提供不同程度的案例严重性、数据丰富度和代表性。本研究提出了一种基于情景的综合分析方法,包括情景定义、融合、参数化和测试用例生成。在此过程中,将美国十年的致命和非致命全国碰撞数据与超过 3400 万英里的自然驾驶数据相结合。首先,根据基于记录和连续时间序列的数据建立情景定义。其次,进行频率分析,以了解同一场景中的事件在不同数据集上以不同频率发生的频率。第三,进行分析以显示与情景相关的关键因素以及各种参数的分布情况。最后,介绍一种将两类数据合并为具有代表性的测试案例情景的方法。这些技术从两个主要方面提高了情景的代表性:首先,它们填充了从常规事件到致命车祸的所有案例;其次,它们通过结合大规模的国家数据集和自然数据集,提供了背景丰富的多年数据。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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