考虑感知故障和事件暴露的不确定性感知数据驱动的自动驾驶系统预防性安全

Magnus Gyllenhammar, G. R. Campos, Fredrik Sandblom, Martin Törngren, H. Sivencrona
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引用次数: 0

摘要

在市场广泛采用自动驾驶系统(ads)之前,确保安全无疑是最大的挑战之一。一个核心方面是如何为安全索赔的实现提供证据,特别是如何在考虑到系统中存在或不存在故障的情况下产生可预测和可靠的安全案例。为了提供这样的证据,有必要描述和建模ADS及其操作环境的不同要素:事件暴露模型,传感和感知模型,以及驱动和闭环行为表征。本文探讨了这些统计模型的估计如何影响ADS的性能和操作,特别是如何通过整合在以前版本的ADS运行期间检索到的更多现场数据来不断改进这些模型。关注安全驾驶速度,这导致了更新驾驶策略的能力,从而最大化允许的安全速度,这仍然是安全声明。为了说明目的,分析了一个考虑不良事件暴露的统计模型以及与系统感知系统相关的故障的示例。利用统计置信限,利用这些模型的估计得出ADS的安全驾驶策略。结果强调了利用现场数据来提高系统的能力和性能,同时保持安全的重要性。所提出的方法,利用数据驱动的方法,还展示了如何监控和维护系统的安全性,同时允许对ADS进行增量扩展和改进。
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Uncertainty Aware Data Driven Precautionary Safety for Automated Driving Systems Considering Perception Failures and Event Exposure
Ensuring safety is arguably one of the largest remaining challenges before wide-spread market adoption of Automated Driving Systems (ADSs). One central aspect is how to provide evidence for the fulfilment of the safety claims and, in particular, how to produce a predictive and reliable safety case considering both the absence and the presence of faults in the system. In order to provide such evidence, there is a need for describing and modelling the different elements of the ADS and its operational context: models of event exposure, sensing and perception models, as well as actuation and closed-loop behaviour representations. This paper explores how estimates from such statistical models can impact the performance and operation of an ADS and, in particular, how such models can be continuously improved by incorporating more field data retrieved during the operation of (previous versions 00 the ADS. Focusing on the safe driving velocity, this results in the ability to update the driving policy so to maximise the allowed safe velocity, for which the safety claim still holds. For illustration purposes, an example considering statistical models of the exposure to an adverse event, as well as failures related to the system’s perception system, is analysed. Estimations from these models, using statistical confidence limits, are used to derive a safe driving policy of the ADS. The results highlight the importance of leveraging field data in order to improve the system’s abilities and performance, while remaining safe. The proposed methodology, leveraging a data-driven approach, also shows how the system’s safety can be monitored and maintained, while allowing for incremental expansion and improvements of the ADS.
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