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Monitoring uncertain data for sensor-based real-time systems.

机译:监视基于传感器的实时系统的不确定数据。

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摘要

Monitoring of user-defined constraints on time-varying data is a fundamental functionality in various sensor-based real-time applications such as environmental monitoring, process control, location-based surveillance, etc. In general, these applications track real-world objects and constantly evaluate the constraints over the object trace to take a timely reaction upon their violation or satisfaction. While it is ideal that all the constraints are evaluated accurately in real-time, data streams often contain incomplete and delayed information, rendering the evaluation results of the constraints uncertain to some degree. In this dissertation, we provide a comprehensive approach to the problem of monitoring constraint-based queries over data streams for which the data or timestamp values are inherently uncertain.;First, we propose a generic framework, namely PTMON, for monitoring timing constraints and detecting their violation early, based on the notion of probabilistic violation time. In doing so, we provide a systemic approach for deriving a set of necessary timing 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 different timestamp models.;Second, we present a probabilistic timing join operator, namely P TJOIN, as an extended functionality of PTMON, which performs stream join operations based on temporal proximity as well as temporal uncertainty. To efficiently check the PTJOIN condition upon event arrivals, we introduce the stream-partitioning technique that delimits the probing range tightly.;Third, we address the problem of monitoring value-based constraints that are in the form of range predicates on uncertain data values with confidence thresholds. A new monitoring scheme SPMON that can reduce the amount of data transmission and thus expedite the processing of uncertain data streams is introduced. The similarity concept that was originally intended for real-time databases is extended for our probabilistic data stream model where each data value is given by a probability distribution. In particular, for uniform and gaussian distributions, we show how we derive a set of constraints on distribution parameters as a metric of similarity distances, exploiting the semantics of probabilistic queries being monitored. The derived constraints enable us to formulate the probabilistic similarity region that suppresses unnecessary data transmission in a monitoring system.
机译:在各种基于传感器的实时应用程序(例如环境监控,过程控制,基于位置的监视等)中,监视用户定义的随时间变化的约束是一项基本功能。不断评估对象跟踪上的约束,以对违反或满意的对象及时做出反应。尽管理想的是实时准确地评估所有约束,但数据流通常包含不完整和延迟的信息,这使得约束的评估结果在某种程度上不确定。本文为监视数据流或时间戳值固有不确定性的数据流上基于约束的查询提供了一种综合方法。首先,我们提出了一种通用框架,即PTMON,用于监视时序约束和检测。根据概率违反时间的概念,尽早违反它们。通过这样做,我们提供了一种系统的方法来在编译时导出一组必要的时序约束。我们的工作具有创新性,因为该框架针对时间戳值的概率分布制定为模块化。其次,我们提出了概率定时联接算子P TJOIN,作为PTMON的扩展功能,它基于时间邻近性和时间不确定性执行流联接操作。为了在事件到达时有效地检查PTJOIN条件,我们引入了严格划分探测范围的流划分技术;第三,我们解决了监视基于值的约束的问题,该约束以不确定性数据值的范围谓词形式具有置信度阈值。介绍了一种新的监控方案SPMON,它可以减少数据传输量,从而加快不确定数据流的处理速度。最初用于实时数据库的相似性概念已扩展到我们的概率数据流模型,其中每个数据值均由概率分布给出。特别是,对于均匀分布和高斯分布,我们展示了如何利用受监视的概率查询的语义,得出一组分布参数上的约束作为相似距离的度量。导出的约束条件使我们能够制定概率相似性区域,以抑制监视系统中不必要的数据传输。

著录项

  • 作者

    Woo, Honguk.;

  • 作者单位

    The University of Texas at Austin.;

  • 授予单位 The University of Texas at Austin.;
  • 学科 Agriculture Agronomy.;Computer Science.
  • 学位 Ph.D.
  • 年度 2008
  • 页码 162 p.
  • 总页数 162
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 农学(农艺学);自动化技术、计算机技术;
  • 关键词

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