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Experimental Resilience Assessment of an Open-Source Driving Agent

机译:开源驱动代理的实验弹性评估

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Autonomous vehicles (AV) depend on the sensors like RADAR and camera for the perception of the environment, path planning, and control. With the increasing autonomy and interactions with the complex environment, there have been growing concerns regarding the safety and reliability of AVs. This paper presents a Systems-Theoretic Process Analysis (STPA) based fault injection framework to assess the resilience of an open-source driving agent, called openpilot, under different environmental conditions and faults affecting sensor data. To increase the coverage of unsafe scenarios during testing, we use a strategic software fault-injection approach where the triggers for injecting the faults are derived from the unsafe scenarios identified during the high-level hazard analysis of the system. The experimental results show that the proposed strategic fault injection approach increases the hazard coverage compared to random fault injection and, thus, can help with more effective simulation of safety-critical faults and testing of AVs. In addition, the paper provides insights on the performance of openpilot safety mechanisms and its ability in timely detection and recovery from faulty inputs.
机译:自动驾驶汽车(AV)依靠雷达和摄像头等传感器来感知环境,规划路径并进行控制。随着自主权的增加以及与复杂环境的交互,人们对视音频设备的安全性和可靠性越来越关注。本文提出了一种基于系统理论过程分析(STPA)的故障注入框架,用于评估在不同环境条件和影响传感器数据的故障下,称为openpilot的开源驱动程序代理的弹性。为了增加测试过程中不安全场景的覆盖范围,我们使用了战略性软件故障注入方法,其中注入故障的触发器是从系统高级别危害分析过程中确定的不安全场景中得出的。实验结果表明,与随机故障注入相比,所提出的策略性故障注入方法可增加危险范围,从而有助于更有效地模拟安全关键性故障和对AV进行测试。此外,本文还提供了关于OpenPilot安全机制的性能及其从错误输入中及时检测和恢复的能力的见解。

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