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Target detection and cognitive radio capacity analysis based on sensor networks.

机译:基于传感器网络的目标检测和认知无线电容量分析。

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摘要

In this dissertation we studied two topics which are focused on target detection through foliage and capacity analysis of cognitive radio. We propose a multi-step information theory based scheme for target detection through foliage, using ultra wide-band (UWB) radar sensor network (RSN). This method is motivated by the fact that echoes from the stationary target, obscured by foliage, are more random than the region without the target. This is resolved by three steps of information fusion. Information fusion and integration is the process of combining data from several radar sensors and can achieve results that are not possible by individual radar operating independently. For first step of information fusion, we propose to use Kullback-Leibler (K-L) divergence based weighting. By using the information theoretic criterion known as method of types, we proved that false alarm can be inversely proportional to the relative entropy or KL distance. In the second step, we propose to use Maximum Entropy Method (MEM) and mutual information based detection. Finally, we use Dempster and Shafer (D-S) theory of evidence for decision. We further investigated and applied another information theoretic criterion known as Chernoff information to select the best radar sensor. We modified the algorithm we developed for RSN for single radar case and applied for human detection through wall. We successfully detected human behind a gypsum wall using single UWB radar. This proved that our method is not adhoc and applicable to various scenarios.;Cognitive radio is an intelligent wireless device that can exploit the side information and maximize the spectral utilization. Efficient spectrum sensing along with transmit power control can achieve the conflicting goal of increasing the capacity while keeping the interference under limit. In this dissertation, we propose a sensor network aided cognitive radio system which will reduce the missed detection and reduce the interference. The non-convex optimization problem is divided in two separate sub problems and solved to get a suboptimal solution. Mathematical analysis shows that interference between primary and secondary depends on spectral distance, when the parallel channels are orthogonal like an OFDM based system.
机译:在本文中,我们研究了两个主题,即通过叶子的目标检测和认知无线电的容量分析。我们提出了一种基于多步信息论的方案,用于使用超宽带(UWB)雷达传感器网络(RSN)通过树叶进行目标检测。这种方法的动机是这样的事实,即固定目标的回声被树叶遮挡,比没有目标的区域随机得多。这可以通过信息融合的三个步骤来解决。信息融合和集成是组合来自多个雷达传感器的数据的过程,并且可以获得单独的独立雷达无法实现的结果。对于信息融合的第一步,我们建议使用基于Kullback-Leibler(K-L)散度的加权。通过使用称为类型方法的信息理论标准,我们证明了虚警可以与相对熵或KL距离成反比。在第二步中,我们建议使用最大熵方法(MEM)和基于互信息的检测。最后,我们使用Dempster和Shafer(D-S)证据理论进行决策。我们进一步研究并应用了另一种称为Chernoff信息的信息理论标准,以选择最佳的雷达传感器。我们针对单雷达情况修改了针对RSN开发的算法,并将其应用于通过墙进行人体检测。我们使用单个UWB雷达成功地检测了石膏墙后的人。这证明了我们的方法不是特别的,并且适用于各种场景。认知无线电是一种可以利用辅助信息并最大限度地利用频谱的智能无线设备。高效的频谱检测以及发射功率控制可以达到增加容量的矛盾目标,同时将干扰保持在极限之下。本文提出了一种传感器网络辅助的认知无线电系统,该系统将减少漏检和干扰。将非凸优化问题分为两个单独的子问题,并将其求解以获得次优解。数学分析表明,当并行通道像基于OFDM的系统一样正交时,主级和次级级之间的干扰取决于频谱距离。

著录项

  • 作者

    Maherin, Ishrat.;

  • 作者单位

    The University of Texas at Arlington.;

  • 授予单位 The University of Texas at Arlington.;
  • 学科 Engineering Electronics and Electrical.
  • 学位 Ph.D.
  • 年度 2014
  • 页码 154 p.
  • 总页数 154
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

  • 入库时间 2022-08-17 11:53:52

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