Monotonic Safety for Scalable and Data-Efficient Probabilistic Safety Analysis

Matthew Cleaveland, I. Ruchkin, O. Sokolsky, Insup Lee
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引用次数: 3

Abstract

Autonomous systems with machine learning-based perception can exhibit unpredictable behaviors that are difficult to quantify, let alone verify. Such behaviors are convenient to capture in proba-bilistic models, but probabilistic model checking of such models is difficult to scale - largely due to the non-determinism added to models as a prerequisite for provable conservatism. Statistical model checking (SMC) has been proposed to address the scalabil-ity issue. However it requires large amounts of data to account for the aforementioned non-determinism, which in turn limits its scalability. This work introduces a general technique for reduction of non-determinism based on assumptions of “monotonic safety”, which define a partial order between system states in terms of their probabilities of being safe. We exploit these assumptions to remove non-determinism from controller/plant models to drasti-cally speed up probabilistic model checking and statistical model checking while providing provably conservative estimates as long as the safety is indeed monotonic. Our experiments demonstrate model-checking speed-ups of an order of magnitude while main-taining acceptable accuracy and require much less data for accurate estimates when running SMC - even when monotonic safety does not perfectly hold and provable conservatism is not achieved.
可扩展数据高效概率安全分析的单调安全性
具有基于机器学习感知的自主系统可能会表现出难以量化的不可预测行为,更不用说验证了。这种行为在概率模型中很容易被捕获,但是这种模型的概率模型检查很难扩展——很大程度上是由于作为可证明保守性的先决条件而添加到模型中的非确定性。统计模型检查(SMC)被提出来解决可扩展性问题。然而,它需要大量的数据来解释前面提到的不确定性,这反过来又限制了它的可伸缩性。这项工作介绍了一种基于“单调安全”假设来减少非确定性的一般技术,它根据系统状态的安全概率定义了系统状态之间的偏序。我们利用这些假设来消除控制器/对象模型的不确定性,从而大大加快了概率模型检查和统计模型检查的速度,同时提供了可证明的保守估计,只要安全性确实是单调的。我们的实验表明,在保持可接受的精度的同时,模型检查的速度提高了一个数量级,并且在运行SMC时需要更少的数据进行准确估计-即使在单调安全性不能完全保持并且无法实现可证明的保守性时也是如此。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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