从道路测试中评估自动驾驶汽车的安全性和可靠性

Xingyu Zhao, V. Robu, D. Flynn, K. Salako, L. Strigini
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引用次数: 42

摘要

社会迫切需要评估自动驾驶汽车(av)是否足够安全。从已公布的自动驾驶汽车的定量安全性和可靠性评估中,我们知道,考虑到预测事故发生率极低的目标,单纯的道路测试需要的行驶里程数量是不可行的。然而,之前的分析并没有考虑到道路测试前的任何知识——如果自动驾驶汽车设计允许在道路测试前对安全性有强烈的期望,那么这些知识可能会带来实质性的优势。我们提出了一种新的变种保守贝叶斯推理(CBI)的优点,它在使用先验知识的同时避免了乐观偏差。然后,考虑到Waymo在测试期间的软件更新实践,我们通过将软件可靠性增长模型(srgm)应用于Waymo超过51个月的公共道路测试数据,研究了脱离驾驶(人类驾驶员接管)的趋势。我们的方法是不相信任何特定的SRGM,而是评估预测的准确性,然后改进预测。我们表明,结合精度评估和重新校准技术,srgm可以成为一个有价值的测试计划辅助工具。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Assessing the Safety and Reliability of Autonomous Vehicles from Road Testing
There is an urgent societal need to assess whether autonomous vehicles (AVs) are safe enough. From published quantitative safety and reliability assessments of AVs, we know that, given the goal of predicting very low rates of accidents, road testing alone requires infeasible numbers of miles to be driven. However, previous analyses do not consider any knowledge prior to road testing – knowledge which could bring substantial advantages if the AV design allows strong expectations of safety before road testing. We present the advantages of a new variant of Conservative Bayesian Inference (CBI), which uses prior knowledge while avoiding optimistic biases. We then study the trend of disengagements (take-overs by human drivers) by applying Software Reliability Growth Models (SRGMs) to data from Waymo's public road testing over 51 months, in view of the practice of software updates during this testing. Our approach is to not trust any specific SRGM, but to assess forecast accuracy and then improve forecasts. We show that, coupled with accuracy assessment and recalibration techniques, SRGMs could be a valuable test planning aid.
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