A Novel and Pragmatic Scenario Modeling Framework with Verification-in-the-loop for Autonomous Driving Systems

Dehui Du, Bo Li, Chenghang Zheng, Xinyuan Zhang
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Abstract

Scenario modeling for Autonomous Driving Systems (ADS) enables scenario-based simulation and verification which are critical for the development of safe ADS. However, with the increasing complexity and uncertainty of ADS, it becomes increasingly challenging to manually model driving scenarios and conduct verification analysis. To tackle these challenges, we propose a novel and pragmatic framework for scenario modeling, simulation and verification. The novelty is that it’s a verification-in-the-loop scenario modeling framework. The scenario modeling language with formal semantics is proposed based on the domain knowledge of ADS. It facilitates scenario verification to analyze the safety of scenario models. Moreover, the scenario simulation is implemented based on the scenario executor. Compared with existing works, our framework can simplify the description of scenarios in a non-programming, user-friendly manner, model stochastic behavior of vehicles, support safe verification of scenario models with UPPAAL-SMC and generate executable scenario in some open-source simulators such as CARLA. To preliminarily demonstrate the effectiveness and feasibility of our approach, we build a prototype tool and apply our approach in several typical scenarios for ADS.
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一种新颖实用的自动驾驶系统环内验证场景建模框架
基于场景建模的自动驾驶系统(ADS)实现了基于场景的仿真和验证,这对开发安全的ADS至关重要。然而,随着自动驾驶系统复杂性和不确定性的不断增加,人工建模驾驶场景并进行验证分析变得越来越具有挑战性。为了应对这些挑战,我们提出了一个新颖实用的场景建模、仿真和验证框架。新颖之处在于它是一个循环验证场景建模框架。基于ADS领域知识,提出了具有形式化语义的场景建模语言,便于场景验证,分析场景模型的安全性。此外,基于场景执行器实现场景仿真。与现有的工作相比,我们的框架可以简化场景的描述,以一种非编程、用户友好的方式,模拟车辆的随机行为,支持UPPAAL-SMC对场景模型的安全验证,并在一些开源模拟器(如CARLA)中生成可执行的场景。为了初步验证我们的方法的有效性和可行性,我们构建了一个原型工具,并将我们的方法应用于几个典型的ADS场景。
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