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Stochastic modeling of routing protocols for cognitive radio networks.

机译:认知无线电网络路由协议的随机建模。

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摘要

Cognitive radios are expected to revolutionize wireless networking because of their ability to sense, manage and share the mobile available spectrum. Efficient utilization of the available spectrum could be significantly improved by incorporating different cognitive radio based networks. Challenges are involved in utilizing the cognitive radios in a network, most of which rise from the dynamic nature of available spectrum that is not present in traditional wireless networks. The set of available spectrum blocks (channels) changes randomly with the arrival and departure of the users licensed to a specific spectrum band. These users are known as primary users. If a band is used by a primary user, the cognitive radio alters its transmission power level or modulation scheme to change its transmission range and switches to another channel. In traditional wireless networks, a link is stable if it is less prone to interference. In cognitive radio networks, however, a link that is interference free might break due to the arrival of its primary user. Therefore, links' stability forms a stochastic process with OFF and ON states; ON, if the primary user is absent. Evidently, traditional network protocols fail in this environment. New sets of protocols are needed in each layer to cope with the stochastic dynamics of cognitive radio networks. In this dissertation we present a comprehensive stochastic framework and a decision theory based model for the problem of routing packets from a source to a destination in a cognitive radio network. We begin by introducing two probability distributions called ArgMax and ArgMin for probabilistic channel selection mechanisms, routing, and MAC protocols. The ArgMax probability distribution locates the most stable link from a set of available links. Conversely, ArgMin identifies the least stable link. ArgMax and ArgMin together provide valuable information on the diversity of the stability of available links in a spectrum band. Next, considering the stochastic arrival of primary users, we model the transition of packets from one hop to the other by a Semi-Markov process and develop a Primary Spread Aware Routing Protocol (PSARP) that learns the dynamics of the environment and adapts its routing decision accordingly. Further, we use a decision theory framework. A utility function is designed to capture the effect of spectrum measurement, fluctuation of bandwidth availability and path quality. A node cognitively decides its best candidate among its neighbors by utilizing a decision tree. Each branch of the tree is quantified by the utility function and a posterior probability distribution, constructed using ArgMax probability distribution, which predicts the suitability of available neighbors. In DTCR (Decision Tree Cognitive Routing), nodes learn their operational environment and adapt their decision making accordingly. We extend the Decision tree modeling to translate video routing in a dynamic cognitive radio network into a decision theory problem. Then terminal analysis backward induction is used to produce our routing scheme that improves the peak signal-to-noise ratio of the received video. We show through this dissertation that by acknowledging the stochastic property of the cognitive radio networks' environment and constructing strategies using the statistical and mathematical tools that deal with such uncertainties, the utilization of these networks will greatly improve.
机译:认知无线电因其感知,管理和共享移动可用频谱的能力而有望彻底改变无线网络。通过合并不同的基于认知无线电的网络,可以显着提高对可用频谱的有效利用。在网络中利用认知无线电涉及挑战,其中大多数来自传统无线网络中不存在的可用频谱的动态特性。可用频谱块(信道)的集合随许可使用特定频谱带的用户的到达和离开而随机变化。这些用户称为主要用户。如果主要用户使用某个频段,则认知无线电会更改其传输功率级别或调制方案,以更改其传输范围并切换到另一个信道。在传统的无线网络中,如果链路不太容易受到干扰,则它是稳定的。但是,在认知无线电网络中,无干扰的链路可能会由于其主要用户的到来而中断。因此,链路的稳定性形成了具有OFF和ON状态的随机过程。如果没有主要用户,则为ON。显然,传统的网络协议在这种环境下会失败。每层都需要新的协议集来应对认知无线电网络的随机动态。本文针对认知无线电网络中数据包从源路由到目的地的问题,提出了一种综合的随机框架和基于决策理论的模型。我们首先为概率信道选择机制,路由和MAC协议引入两个称为ArgMax和ArgMin的概率分布。 ArgMax概率分布从一组可用链接中找到最稳定的链接。相反,ArgMin标识最不稳定的链接。 ArgMax和ArgMin一起提供了有关频带中可用链路稳定性多样性的宝贵信息。接下来,考虑到主要用户的随机到达,我们通过Semi-Markov过程对数据包从一跳到另一跳的过渡进行建模,并开发了一种学习环境动态并适应其路由的主要传播感知路由协议(PSARP)。做出相应的决定。此外,我们使用决策理论框架。实用程序功能旨在捕获频谱测量,带宽可用性和路径质量波动的影响。节点通过利用决策树来认知地确定其邻居中的最佳候选者。通过效用函数和使用ArgMax概率分布构造的后验概率分布来量化树的每个分支,该概率分布预测了可用邻居的适用性。在DTCR(决策树认知路由)中,节点学习其操作环境并相应地调整其决策。我们扩展了决策树模型,将动态认知无线电网络中的视频路由转换为决策理论问题。然后使用终端分析后向归纳法来产生我们的路由方案,该方案可提高接收视频的峰值信噪比。通过本论文,我们表明,通过承认认知无线电网络环境的随机特性,并使用能够处理此类不确定性的统计和数学工具构建策略,这些网络的利用率将大大提高。

著录项

  • 作者

    Soltani, Soroor.;

  • 作者单位

    Michigan State University.;

  • 授予单位 Michigan State University.;
  • 学科 Engineering Electronics and Electrical.;Engineering Computer.
  • 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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