A Generic Framework for Monitoring Timing Constraints over Uncertain Events

Honguk Woo, A. Mok, Chan-Gun Lee
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引用次数: 8

Abstract

This paper provides a comprehensive approach to the problem of monitoring timing constraints over event streams for which the timestamp values are inherently uncertain. We first propose a generic framework for capturing the early detection of the violation of timing constraints, based on the notion of probabilistic violation time. In doing so, we provide a systemic approach for deriving a set of necessary constraints at compilation time. Our work is innovative in that the framework is formulated to be "modular" with respect to the probability distributions on timestamp values. We demonstrate the applicability of the framework for two different timestamp models, Gaussian and histogram. The Gaussian model is appropriate for representing event timing from a wide variety of sensors with well-modelled physical noise characteristics; we show how we can efficiently derive the probabilistic violation time of timing constraints by exploiting the relation between the Gaussian distribution parameters. The histogram model can be used where the timestamps of events are available from measurements only as arbitrary probability distributions: we show how to derive an efficient timing constraint monitoring method for the histogram model
不确定事件时序约束监测的通用框架
本文提供了一种全面的方法来监控时间戳值本身不确定的事件流上的时间约束问题。我们首先提出了一个基于概率违反时间概念的通用框架,用于捕获对违反时间约束的早期检测。在此过程中,我们提供了一种在编译时导出一组必要约束的系统方法。我们的工作是创新的,因为框架是按照时间戳值的概率分布“模块化”来制定的。我们演示了该框架对高斯和直方图两种不同时间戳模型的适用性。高斯模型适用于表示具有良好建模的物理噪声特性的各种传感器的事件时序;我们展示了如何利用高斯分布参数之间的关系,有效地推导出时间约束的概率违反时间。直方图模型可以用于事件的时间戳只能作为任意概率分布从测量中获得的情况:我们展示了如何为直方图模型导出有效的时间约束监控方法
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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