This paper describes Waymo's Collision Avoidance Testing (CAT) methodology: a scenario-based testing method that evaluates the safety of the Waymo Driver Automated Driving Systems' (ADS) intended functionality in conflict situations initiated by other road users that require urgent evasive maneuvers. Because SAE Level 4 ADS are responsible for the dynamic driving task (DDT), when engaged, without immediate human intervention, evaluating a Level 4 ADS using scenario-based testing is difficult due to the potentially infinite number of operational scenarios in which hazardous situations may unfold. To that end, in this paper we first describe the safety test objectives for the CAT methodology, including the collision and serious injury metrics and the reference behavior model representing a non-impaired eyes on conflict human driver used to form an acceptance criterion. Afterward, we introduce the process for identifying potentially hazardous situations from a combination of human data, ADS testing data, and expert knowledge about the product design and associated Operational Design Domain (ODD). The test allocation and execution strategy is presented next, which exclusively utilize simulations constructed from sensor data collected on a test track, real-world driving, or from simulated sensor data. The paper concludes with the presentation of results from applying CAT to the fully autonomous ride-hailing service that Waymo operates in San Francisco, California and Phoenix, Arizona. The iterative nature of scenario identification, combined with over ten years of experience of on-road testing, results in a scenario database that converges to a representative set of responder role scenarios for a given ODD. Using Waymo's virtual test platform, which is calibrated to data collected as part of many years of ADS development, the CAT methodology provides a robust and scalable safety evaluation.
翻译:本文描述了Waymo的Collegation Clove避免测试(CAT)方法:一种基于情景的测试方法,用于评估Waymo司机自动驾驶系统(ADS)在需要紧急回避操作的其他道路使用者发起的冲突局势中预期功能。由于SAE 4级ADS负责动态驱动任务(DDT),在没有立即的人类干预的情况下,使用基于情景的测试来评估4级ADS是困难的,因为可能出现危险情况的业务情景可能很多。为此,我们首先在本文中描述CAT方法的安全测试目标,包括碰撞和严重伤害测量标准,以及代表对冲突人类驱动者不失明的眼睛的参考行为模式,用于形成一个接受标准。之后,我们引入了从人类数据组合、ADS测试数据,以及产品设计和相关业务设计DODM(ODDD)的专家知识,这是在连续的操作设计中(ODDD),测试分配和执行战略的下一步是完全利用从在测试轨道上收集的传感器数据、实际驱动力和严重伤害情况测试轨道上采集的轨道数据,在运行的OCAT的轨道上,或者模拟机尾运行的测试模型数据,然后使用桑地数据。