Probabilistic Reachability for Uncertain Stochastic Hybrid Systems via Gaussian Processes

M. Vasileva, F. Shmarov, P. Zuliani
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Abstract

Cyber-physical system models often feature stochastic behaviour that itself depends on uncertain parameters (e.g., transition rates). For these systems, verifying reachability amounts to computing a range of probabilities depending on how uncertainty is resolved. In general, this is a hard problem for which rigorous solutions suffer from the well-known curse of dimensionality. In this paper we focus on hybrid systems with random parameters whose distribution is subject to nondeterministic uncertainty. We show that for these systems the reachability probability is a smooth function of the nondeterministic parameters, and thus Gaussian processes can be used to approximate the reachability probability function itself very efficiently over its entire domain. Furthermore, we introduce a novel approach that exploits rigorous probability enclosures for training Gaussian processes. We apply our approaches to non-trivial hybrid systems case studies, and we empirically demonstrate their advantages with respect to standard statistical model checking.
基于高斯过程的不确定随机混合系统的概率可达性
网络物理系统模型通常具有随机行为,其本身取决于不确定的参数(例如,转换速率)。对于这些系统,验证可达性相当于计算一系列概率,这取决于如何解决不确定性。一般来说,这是一个困难的问题,其严格的解决方案受到众所周知的维度诅咒的影响。本文主要研究具有不确定性不确定分布的随机参数混合系统。我们证明了这些系统的可达性概率是不确定性参数的光滑函数,因此高斯过程可以在整个域上非常有效地逼近可达性概率函数本身。此外,我们引入了一种新的方法,利用严格的概率框来训练高斯过程。我们将我们的方法应用于非平凡的混合系统案例研究,并且我们经验地证明了它们在标准统计模型检查方面的优势。
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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