The development of Autonomous Vehicles (AV) presents an opportunity to save and improve lives. However, achieving SAE Level 5 (full) autonomy will require overcoming many technical challenges. There is a gap in the literature regarding the measurement of safety for self-driving systems. Measuring safety and risk is paramount for the generation of useful simulation scenarios for training and validation of autonomous systems. The limitation of current approaches is the dependence on near-crash data. Although near-miss data can substantially increase scarce available accident data, the definition of a near-miss or near-crash is arbitrary. A promising alternative is the introduction of the Responsibility-Sensitive Safety (RSS) model by Shalev-Shwartz et al., which defines safe lateral and longitudinal distances that can guarantee impossibility of collision under reasonable assumptions for vehicle dynamics. We present a framework that extends the RSS model for cases when reasonable assumptions or safe distances are violated. The proposed framework introduces risk indices that quantify the likelihood of a collision by using vehicle dynamics and driver's risk aversion. The present study concludes with proposed experiments for tuning the parameters of the formulated risk indices.
翻译:然而,实现SAE 5级(充分)自治需要克服许多技术挑战。在衡量自驾驶系统的安全性方面,文献中存在着差距。测量安全和风险对于为培训和验证自驾驶系统创造有用的模拟情景至关重要。目前方法的局限性是依赖近坠毁数据。虽然近距离数据可以大大增加稀少的事故数据,但近离或近坠毁的定义是任意的。一个有希望的替代办法是Shalev-Shwartz等人采用责任敏感安全模型,该模型界定了安全横向和纵向距离,可以保证在车辆动态的合理假设下不可能发生碰撞。我们提出了一个框架,在合理假设或安全距离被破坏的情况下,扩展RSS模型。拟议框架提出了风险指数,用车辆动态和驾驶员的风险转换来量化碰撞的可能性。本项研究最后提出了调整所拟订的风险指数参数的实验。