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RSS Model Calibration and Evaluation for AV Driving Safety based on Naturalistic Driving Data

机译:基于自然主义驾驶数据的AV驾驶安全性RSS模型校准与评价

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The definition and evaluation of driving safety for automated vehicles (AVs) is a key element to enable safe and scalable AV applications. Although different distance-based and/or time-based safety metrics have been proposed, a unified standard has not yet been recognized as a baseline to assess the safety of AV behavior. Moreover, the relationship between existing AV safety metrics (models) and naturalistic driving data, which indicate driving safety and comfort defined by human drivers, is not well explored. Utilizing the responsibility-sensitive safety (RSS) model, a new methodology is proposed to calibrate the RSS model based on naturalistic driving data. Without significantly relying on (large) safety-critical or collision data, the proposed method defines an optimization framework to calibrate the RSS model parameters and describes AV driving safety through both safe and safety-critical data in a cross-checking manner. Evaluation of the calibrated RSS model is discussed based on naturalistic driving data in Los Angeles, USA.
机译:自动车辆(AVS)的驱动安全的定义和评估是能够实现安全和可缩放的AV应用的关键元件。虽然已经提出了不同的基于距离和/或基于时间的安全指标,但尚未被认为是评估AV行为安全的基线。此外,现有的AV安全指标(模型)与人类驱动器定义的驾驶安全性和舒适性的自然驾驶数据之间的关系并不熟悉。利用责任敏感的安全性(RSS)模型,提出了一种基于自然驾驶数据校准RSS模型的新方法。如果没有显着依赖(大)安全关键或碰撞数据,所提出的方法定义了优化框架以校准RSS模型参数,并通过以交叉检查方式通过安全和安全关键数据描述AV驱动安全性。基于美国洛杉矶的自然驾驶数据讨论了校准RSS模型的评估。

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