Systematic False Positive Mitigation in Safe Automated Driving Systems

Ayhan Mehmed, W. Steiner, Aida Čaušević
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引用次数: 2

Abstract

Manufacturers of self-driving cars need to significantly improve the safety of their products before the series of such cars are deployed in everyday use. A large number of architecture proposals for Automated Driving Systems (ADS) are aiming at addressing the challenge of safety. These solutions typically define redundancy schemes and quite commonly include self-checking pair structures, e.g., commander/monitor approaches. In such structures, the problem of false positive failure detections arises, i.e., the monitor may falsely classify the output of the commander as being faulty. In this paper, we review an ADS architecture for fully automated driving and propose a concept to remove false positives in a systematic way. We formalize our proposal in an abstract model and prove the absence of false positives by-means of k-induction. A reference to a technical report is given that contains a detailed discussion of the proof procedure.
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安全自动驾驶系统中的系统误报缓解
自动驾驶汽车的制造商需要在这一系列汽车投入日常使用之前大幅提高产品的安全性。大量针对自动驾驶系统(ADS)的架构方案旨在解决安全挑战。这些解决方案通常定义冗余方案,并且通常包括自检对结构,例如指挥官/监视器方法。在这种结构中,出现了误报故障检测的问题,即监视器可能错误地将指挥员的输出分类为故障。在本文中,我们回顾了全自动驾驶的ADS架构,并提出了一种以系统的方式消除误报的概念。我们在一个抽象模型中形式化了我们的建议,并利用k归纳证明了假阳性的不存在。提供了一份技术报告的参考资料,其中包含对证明程序的详细讨论。
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