论文标题
SOTIF熵:在线SOTIF风险量化和缓解自动驾驶
SOTIF Entropy: Online SOTIF Risk Quantification and Mitigation for Autonomous Driving
论文作者
论文摘要
在复杂的交通情况下,自主驾驶面临着巨大的挑战,在这种情况下,动态操作环境和系统不足可以触发预期功能(SOTIF)安全性(SOTIF)的风险。 SOTIF风险不仅反映在与自动驾驶汽车外部物体(AV)的碰撞风险中,而且固有地反映出实施算法本身的性能限制风险。如何将自动驾驶的SOTIF风险降至最低是目前的一个关键,困难且尚未解决的问题。因此,本文提出了“自我监视和自适应系统”,作为一种系统的在线方法,以最大程度地减少SOTIF风险,该风险旨在为监视,量化和缓解固有和外部风险的系统解决方案。该系统的核心是对AV内实施的人工智能算法的风险监测。为了证明自我监视和自我适应系统,强调了感知算法的风险监测,即Yolov5。此外,固有的感知算法风险和外部碰撞风险通过SOTIF熵共同量化,然后将其下游传播到决策模块并减轻。最后,展示了几个具有挑战性的方案,并进行了硬件实验以验证系统的效率和有效性。结果表明,自我监视和自动适应系统可以在实时关键的交通环境中可靠的在线监视,量化和缓解SOTIF风险。
Autonomous driving confronts great challenges in complex traffic scenarios, where the risk of Safety of the Intended Functionality (SOTIF) can be triggered by the dynamic operational environment and system insufficiencies. The SOTIF risk is reflected not only intuitively in the collision risk with objects outside the autonomous vehicles (AVs), but also inherently in the performance limitation risk of the implemented algorithms themselves. How to minimize the SOTIF risk for autonomous driving is currently a critical, difficult, and unresolved issue. Therefore, this paper proposes the "Self-Surveillance and Self-Adaption System" as a systematic approach to online minimize the SOTIF risk, which aims to provide a systematic solution for monitoring, quantification, and mitigation of inherent and external risks. The core of this system is the risk monitoring of the implemented artificial intelligence algorithms within the AV. As a demonstration of the Self-Surveillance and Self-Adaption System, the risk monitoring of the perception algorithm, i.e., YOLOv5 is highlighted. Moreover, the inherent perception algorithm risk and external collision risk are jointly quantified via SOTIF entropy, which is then propagated downstream to the decision-making module and mitigated. Finally, several challenging scenarios are demonstrated, and the Hardware-in-the-Loop experiments are conducted to verify the efficiency and effectiveness of the system. The results demonstrate that the Self-Surveillance and Self-Adaption System enables dependable online monitoring, quantification, and mitigation of SOTIF risk in real-time critical traffic environments.