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Sensor Networks for Geospatial Event Detection --- Theory and Applications.

机译:用于地理空间事件检测的传感器网络-理论与应用。

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摘要

This thesis presents theories, analyses, and algorithms for detecting and estimating parameters of geospatial events with today's large, noisy sensor networks. A geospatial event is initiated by a significant change in the state of points in a region in a 3-D space over an interval of time. After the event is initiated it may change the state of points over larger regions and longer periods of time.;Networked sensing is a typical approach for geospatial event detection. In contrast to traditional sensor networks comprised of a small number of high quality (and expensive) sensors, trends in personal computing devices and consumer electronics have made it possible to build large, dense networks at a low cost. The changes in sensor capability, network composition, and system constraints call for new models and algorithms suited to the opportunities and challenges of the new generation of sensor networks.;This thesis offers a single unifying model and a Bayesian framework for analyzing different types of geospatial events in such noisy sensor networks. It presents algorithms and theories for estimating the speed and accuracy of detecting geospatial events as a function of parameters from both the underlying geospatial system and the sensor network. Furthermore, the thesis addresses network scalability issues by presenting rigorous scalable algorithms for data aggregation for detection. These studies provide insights to the design of networked sensing systems for detecting geospatial events.;In addition to providing an overarching framework, this thesis presents theories and experimental results for two very different geospatial problems: detecting earthquakes and hazardous radiation. The general framework is applied to these specific problems, and predictions based on the theories are validated against measurements of systems in the laboratory and in the field.
机译:本文介绍了用于利用当今大型,嘈杂的传感器网络检测和估算地理空间事件参数的理论,分析和算法。地理空间事件是由3D空间中某个区域内的点的状态在一段时间内发生重大变化而引发的。事件启动后,它可能会在更大的区域和更长的时间段内更改点的状态。网络传感是地理空间事件检测的一种典型方法。与由少量高质量(和昂贵)传感器组成的传统传感器网络相反,个人计算设备和消费类电子产品的趋势使以低成本构建大型密集网络成为可能。传感器功能,网络组成和系统约束的变化要求新的模型和算法,以适应新一代传感器网络的机遇和挑战。本文为分析不同类型的地理空间提供了一个统一的模型和贝叶斯框架。此类噪声传感器网络中发生的事件。它提出了算法和理论,用于估计作为基础地理空间系统和传感器网络参数的函数的地理空间事件检测的速度和准确性。此外,本文通过提出严格的可伸缩算法来检测数据,解决了网络可伸缩性问题。这些研究为检测地球空间事件的网络传感系统的设计提供了见识。除了提供总体框架之外,本论文还介绍了两个非常不同的地理空间问题的理论和实验结果:检测地震和危险辐射。将通用框架应用于这些特定问题,并根据理论对基于实验室和现场系统测量的预测进行验证。

著录项

  • 作者

    Liu, Annie Hsin-Wen.;

  • 作者单位

    California Institute of Technology.;

  • 授予单位 California Institute of Technology.;
  • 学科 Statistics.;Computer Science.
  • 学位 Ph.D.
  • 年度 2013
  • 页码 157 p.
  • 总页数 157
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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