从改变之前的安全操作争论改进后的自动驾驶汽车的安全性:新结果

Robab Aghazadeh Chakherlou, K. Salako, L. Strigini
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引用次数: 1

摘要

自动驾驶汽车(AVs)正逐渐出现在道路上。然而,如何证明它们的安全性仍在争论中。虽然操作测试似乎对建立对自动驾驶安全的信心至关重要,但所需的测试数量可能过于昂贵。此外,目前的自动驾驶汽车不断发展,并在不断变化的环境中使用,对于每个新版本的自动驾驶汽车或自动驾驶汽车的新用途,重复大量的操作测试似乎是无法承受的。因此,将这种变化之前的操作经验应用于变化后的安全索赔的想法是有吸引力的。我们提出了新的结果,解决了在设计或分析假设中存在重大错误的情况下,新版本的AV可以被证明比以前的版本更安全的常见情况。从数学上讲,我们的新解决方案适用于新版本或环境的所有场景,在这些场景中,“无论旧版本或环境有多安全”,新版本或环境的安全性很可能不会低于旧版本或环境。我们称这种情况为“无条件改进”(UI)。以前的各种论文都讨论了相关的场景,在这些场景中,有一些信心认为这种变化提高了安全性,或者至少没有降低安全性,但它们在较弱的条件下解决了这个问题:我们的新结果大大提高了可以支持的安全性声明,特别是对于变化后不久的操作。
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Arguing safety of an improved autonomous vehicle from safe operation before the change: new results
Autonomous vehicles (AVs) are gradually appearing on the roads. However, how to demonstrate their safety is still under debate. While operational testing seems essential for building confidence in AV safety, the amount of testing required can be prohibitively expensive. Additionally, current AV s evolve continuously and are used in a changing set of environmentsRepeating substantial operational testing for each new AV version, or new use of an AV, seems unaffordable. Therefore, the idea of applying operational experience from before such a change towards claims of safety after the change is attractive. We present new results, addressing the frequent case in which a new version of the AV can be proved to be safer than a previous one, bar major errors in design or analysis assumptions. Mathematically, our new solution applies to all those scenarios in which the new version or environment is, with high probability, no less safe than the old one “no matter how safe the old one was”. We call this scenario “unconditional improvement” (UI). Various previous papers addressed related scenarios in which there is some confidence that the change has improved, or at least not degraded, safety, but they solved the problem under weaker conditions: our new results substantially improve the safety claims that can be supported, especially for operation soon after the change.
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