A Quantitative Safety Verification Approach for the Decision-making Process of Autonomous Driving

Bingqing Xu, Qin Li, Tong Guo, Yi Ao, Dehui Du
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引用次数: 8

Abstract

Autonomous driving is a safety critical system whose performance mainly depends on the recognition of the environment through a large amount of spatio-temporal data and driving policy based on the complex traffic conditions. Thus, it is important and necessary to build the abstract model of environment data and set the safety assessment method for autonomous driving policy. To address the problem, we propose a quantitative safety verification approach for the abstract decision-making model of autonomous driving. We extract the essential spatio-temporal features from both observation and estimation, and preserve them in the abstract model of decision-making. In the estimation, we adopt the explicit description of the uncertain driving decisions of vehicles by means of probability distributions. Based on these time-dependent spatial features, specification, reasoning, and verification of safety property are enabled. To evaluate the safety of the driving policy, we propose an operational verification approach based on Stochastic Hybrid Automata (SHA). Given the environmental information and the corresponding driving decisions according to the planned route on the basis of certain traffic laws, the single-lane roundabout scenario is introduced to illustrate how to verify quantitative safety property in our verification approach by using UPPAAL SMC which can validate the stochastic real-time model.
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自动驾驶决策过程的定量安全验证方法
自动驾驶是一种安全关键系统,其性能主要依赖于基于复杂交通条件的大量时空数据和驾驶策略对环境的识别。因此,建立环境数据的抽象模型和制定自动驾驶策略的安全评估方法是非常重要和必要的。为了解决这个问题,我们提出了一种自动驾驶抽象决策模型的定量安全验证方法。我们从观测和估计中提取基本的时空特征,并将其保存在决策的抽象模型中。在估计中,采用概率分布对车辆的不确定驾驶决策进行显式描述。基于这些与时间相关的空间特征,启用安全属性的规范、推理和验证。为了评估驾驶策略的安全性,我们提出了一种基于随机混合自动机(SHA)的操作验证方法。在给定环境信息的情况下,根据一定的交通规则,按照规划的路线进行相应的驾驶决策,并以单车道环形交叉路口为例,说明了如何利用能够验证随机实时模型的UPPAAL SMC来验证我们的验证方法中的定量安全性。
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