随机过程STL需求的保形定量预测监测

Francesca Cairoli, Nicola Paoletti, L. Bortolussi
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引用次数: 5

摘要

我们考虑预测监视(PM)的问题,即在运行时预测当前系统状态对期望属性的满足程度。由于PM方法与运行时安全保证和在线控制相关,因此PM方法需要高效地支持对预测的违规进行及时干预,同时提供正确性保证。我们介绍了定量预测监测(QPM),这是第一个支持随机过程的PM方法,并在信号时间逻辑(STL)中给出了丰富的规范。与大多数预测是否满足某些属性φ的现有PM技术不同,QPM通过预测φ的定量(又名鲁棒)STL语义提供了满意度的定量度量。QPM导出的预测区间计算效率很高,并且具有概率保证,因为该区间以任意概率覆盖相对于系统随机演化的STL鲁棒性值。为此,我们采用机器学习方法并利用分位数回归的保形推理的最新进展,从而避免在运行时进行昂贵的蒙特卡罗模拟来估计区间。我们还展示了如何以组合方式组合监视器来处理组合公式,而无需重新训练预测器或牺牲保证。我们在四个不同复杂程度的离散随机过程的基准上证明了QPM的有效性和可扩展性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Conformal Quantitative Predictive Monitoring of STL Requirements for Stochastic Processes
We consider the problem of predictive monitoring (PM), i.e., predicting at runtime the satisfaction of a desired property from the current system’s state. Due to its relevance for runtime safety assurance and online control, PM methods need to be efficient to enable timely interventions against predicted violations, while providing correctness guarantees. We introduce quantitative predictive monitoring (QPM), the first PM method to support stochastic processes and rich specifications given in Signal Temporal Logic (STL). Unlike most of the existing PM techniques that predict whether or not some property ϕ is satisfied, QPM provides a quantitative measure of satisfaction by predicting the quantitative (aka robust) STL semantics of ϕ. QPM derives prediction intervals that are highly efficient to compute and with probabilistic guarantees, in that the intervals cover with arbitrary probability the STL robustness values relative to the stochastic evolution of the system. To do so, we take a machine-learning approach and leverage recent advances in conformal inference for quantile regression, thereby avoiding expensive Monte Carlo simulations at runtime to estimate the intervals. We also show how our monitors can be combined in a compositional manner to handle composite formulas, without retraining the predictors or sacrificing the guarantees. We demonstrate the effectiveness and scalability of QPM over a benchmark of four discrete-time stochastic processes with varying degrees of complexity.
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