自动驾驶环境感知限制的系统建模方法

Ahmad Adee, Roman Gansch, P. Liggesmeyer
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引用次数: 5

摘要

高度自动驾驶(HAD)车辆是在开放环境下运行的复杂系统。这些系统的复杂性以及在感知和理解开放环境方面的局限性和不足可能导致不安全和不确定的行为。HAD车辆的安全关键性质要求对模型的限制、不足和触发条件进行论证,以证明安全行为。ISO/PAS 21448等标准化活动提供了有关预期功能(SOTIF)安全性的指导方针,并侧重于性能限制和触发条件。尽管SOTIF提供了一个不完全的场景因素列表,可以作为识别和分析性能限制和触发条件的起点,但是没有提供具体的方法来对这些因素进行建模。我们提出了一种新的方法来模拟场景中的触发条件和性能限制,以评估SOTIF。在这方面,我们使用贝叶斯网络(BN)。专家提供了BN结构,并使用极大似然估计器学习条件信念表。我们提供了给定场景的性能限制映射(plm)和条件性能限制映射(cplm)。作为一个案例研究,我们在使用真实世界数据的定义场景中提供了激光雷达的plm和cplm。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Systematic Modeling Approach for Environmental Perception Limitations in Automated Driving
Highly automated driving (HAD) vehicles are complex systems operating in an open context. Complexity of these systems as well as limitations and insufficiencies in sensing and understanding the open context may result in unsafe and uncertain behavior. The safety critical nature of the HAD vehicles demands to model limitations, insufficiencies and triggering conditions to argue safe behavior. Standardization activities such as ISO/PAS 21448 provide guidelines on the safety of the intended functionality (SOTIF) and focus on the performance limitations and triggering conditions. Although, SOTIF provides a non-exhaustive list of scenario factors that may serve as a starting point to identify and analyze performance limitations and triggering conditions, yet no concrete methodology is provided to model these factors. We propose a novel methodology to model triggering conditions and performance limitations in a scene to assess SOTIF. We utilize Bayesian network (BN) in this regard. The experts provide the BN structure and conditional belief tables are learned using the maximum likelihood estimator. We provide performance limitation maps (PLMs) and conditional performance limitation maps (CPLMs), given a scene. As a case study, we provide PLMs and CPLMs of LIDAR in a defined scene using real world data.
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