Despite the rapid improvement of autonomous driving technology in recent years, automotive manufacturers must resolve liability issues to commercialize autonomous passenger car of SAE J3016 Level 3 or higher. To cope with the product liability law, manufacturers develop autonomous driving systems in compliance with international standards for safety such as ISO 26262 and ISO 21448. Concerning the safety of the intended functionality (SOTIF) requirement in ISO 26262, the driving policy recommends providing an explicit rational basis for maneuver decisions. In this case, mathematical models such as Safety Force Field (SFF) and Responsibility-Sensitive Safety (RSS) which have interpretability on decision, may be suitable. In this work, we implement SFF from scratch to substitute the undisclosed NVIDIA's source code and integrate it with CARLA open-source simulator. Using SFF and CARLA, we present a predictor for claimed sets of vehicles, and based on the predictor, propose an integrated driving policy that consistently operates regardless of safety conditions it encounters while passing through dynamic traffic. The policy does not have a separate plan for each condition, but using safety potential, it aims human-like driving blended in with traffic flow.
翻译:尽管近年来自主驾驶技术迅速改善,汽车制造商必须解决责任问题,使SAE J3016三级或三级以上的自动客车商业化。为了应对产品责任法,制造商按照国际标准,如ISO 26262和ISO 21448. 关于ISO 262662和ISO 21448. 关于ISO 2626262中预期功能(SOTIF)要求的安全性,驾驶政策建议为机动决策提供明确合理的依据。在这种情况下,安全战场(SFF)和责任敏感安全(RSS)等对决定具有可解释性的数学模型可能是合适的。在这项工作中,我们从零开始执行SFF,以取代未披露的NVIDIA源码,并将其与CARLA开源模拟器合并。我们使用SFF和CARLA,为索赔的车辆各组提供预测器,根据预测器,提出一个综合驾驶政策,无论在通过动态交通时遇到的安全条件如何持续运行。该政策没有单独的计划,但使用安全潜力,其目标在于驾驶与交通混合。