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New Radio Frequency Sensor Network Measurement Models and Methods for Tracking Applications

机译:新的射频传感器网络测量模型和跟踪应用方法

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摘要

Device-free localization (DFL) and tracking services are important components in security, emergency response, home and building automation, and assisted living applications where an action is taken based on a person's location. In this dissertation, we develop new methods and models to enable and improve DFL in a variety of radio frequency sensor network configurations.;In the first contribution of this work, we develop a linear regression and line stabbing method which use a history of line crossing measurements to estimate the track of a person walking through a wireless network. Our methods provide an alternative approach to DFL in wireless networks where the number of nodes that can communicate with each other in a wireless network is limited and traditional DFL methods are ill-suited.;We then present new methods that enable through-wall DFL when nodes in the network are in motion. We demonstrate that we can detect when a person crosses between ultra-wideband radios in motion based on changes in the energy contained in the first few nanoseconds of a measured channel impulse response. Through experimental testing, we show how our methods can localize a person through walls with transceivers in motion.;Next, we develop new algorithms to localize boundary crossings when a person crosses between multiple nodes simultaneously. We experimentally evaluate our algorithms with received signal strength (RSS) measurements collected from a row of radio frequency (RF) nodes placed along a boundary and show that our algorithms achieve orders of magnitude better localization classification than baseline DFL methods.;We then present a way to improve the models used in through-wall radio tomographic imaging with E-shaped patch antennas we develop and fabricate which remain tuned even when placed against a dielectric. Through experimentation, we demonstrate the E-shaped patch antennas lower localization error by 44% compared with omnidirectional and microstrip patch antennas.;In our final contribution, we develop a new mixture model that relates a link's RSS as a function of a person's location in a wireless network. We develop new localization methods that compute the probabilities of a person occupying a location based on our mixture model. Our methods continuously recalibrate the model to achieve a low localization error even in changing environments.
机译:无设备定位(DFL)和跟踪服务是安全,紧急响应,家庭和楼宇自动化以及辅助生活应用程序中的重要组件,其中,根据人的位置采取行动。在本文中,我们开发了新的方法和模型来实现和改进各种射频传感器网络配置中的DFL。在这项工作的第一部分中,我们开发了一种线性回归和线刺方法,该方法使用了线交叉的历史进行测量以估计通过无线网络行走的人的轨迹。我们的方法为无线网络中的DFL提供了一种替代方法,该方法中无线网络中可以相互通信的节点数量有限并且传统的DFL方法不适合;然后我们提出了在以下情况下启用穿墙DFL的新方法:网络中的节点处于运动状态。我们证明了我们可以根据所测量的信道脉冲响应的前几纳秒中所包含的能量变化,来检测人何时穿越运动中的超宽带无线电。通过实验测试,我们展示了我们的方法如何在移动收发器的情况下通过墙壁对人进行定位。接下来,我们开发了新的算法来在人同时穿越多个节点时对边界穿越进行定位。我们通过沿边界放置的一排射频(RF)节点收集的接收信号强度(RSS)测量值,对实验中的算法进行了实验评估,结果表明,与基线DFL方法相比,我们的算法实现了更好的本地化分类。我们开发和制造改进E形贴片天线穿墙无线电层析成像中使用的模型的方法,即使将它们放在电介质上也可以保持调谐。通过实验,我们证明了E型贴片天线与全向和微带贴片天线相比,定位误差降低了44%。;在我们的最终贡献中,我们开发了一种新的混合模型,该模型将链接的RSS与人的位置相关联无线网络。我们开发了新的本地化方法,可以根据我们的混合模型来计算一个人占据一个位置的概率。我们的方法不断地重新校准模型,即使在变化的环境中也可以实现较低的定位误差。

著录项

  • 作者

    Hillyard, Peter Thomas.;

  • 作者单位

    The University of Utah.;

  • 授予单位 The University of Utah.;
  • 学科 Electrical engineering.;Engineering.
  • 学位 Ph.D.
  • 年度 2017
  • 页码 192 p.
  • 总页数 192
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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