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Optimal resource allocation and cross-layer control in cognitive and cooperative wireless networks.

机译:认知和协作无线网络中的最佳资源分配和跨层控制。

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摘要

We investigate four problems on optimal resource allocation and cross-layer control in cognitive and cooperative wireless networks with time-varying channels. The first three problems consider different models and capabilities associated with cognition and cooperation in such networks. Specifically, the first problem focuses on the dynamic spectrum access model for cognitive radio networks and assumes no cooperation between the licensed (or "primary") and unlicensed (or "secondary") users. Here, the secondary users try to avoid interfering with the primary users while seeking transmission opportunities on vacant primary channels in frequency, time, or space. The second problem considers a relay-based fully cooperative wireless network. Here, cooperative communication techniques at the physical layer are used to improve the reliability and energy cost of data transmissions. The third problem considers a cooperative cognitive radio network where the secondary users can cooperatively transmit with the primary users to improve the latter's effective transmission rate. In return, the secondary users get more opportunities for transmitting their own data when the primary users are idle.;In all of these scenarios, our goal is to design optimal control algorithms that maximize time-average network utilities (such as throughput) subject to time-average constraints (such as power, reliability, etc.). To this end, we make use of the technique of Lyapunov optimization to design online control algorithms that can operate without requiring any knowledge of the statistical description of network dynamics (such as fading channels, node mobility, and random packet arrivals) and are provably optimal. The algorithms for the first two problems use greedy decisions over one slot and two-slot frames, whereas the algorithm for the third problem involves a stochastic shortest path decision over a variable length frame, and this is explicitly solved, remarkably without requiring knowledge of the network arrival rates.;Finally, in the fourth problem, we investigate optimal routing and scheduling in static wireless networks with rateless codes. Rateless codes allow each node of the network to accumulate mutual information with every packet transmission. This enables a significant performance gain over conventional shortest path routing. Further, it also outperforms cooperative communication techniques that are based on energy accumulation. However, it requires complex and combinatorial networking decisions concerning which nodes participate in transmission, and which decode ordering to use. We formulate the general problems as combinatorial optimization problems and identify several structural properties of the optimal solutions. This enables us to derive optimal greedy algorithms to solve these problems. This work uses a different set of tools and can be read independently of the other chapters.
机译:我们研究了具有时变信道的认知和协作无线网络中关于最佳资源分配和跨层控制的四个问题。前三个问题考虑了与此类网络中的认知与合作相关的不同模型和功能。特别地,第一个问题集中在认知无线电网络的动态频谱访问模型上,并假定在许可用户(或“主要用户”)和非许可用户(或“次级用户”)之间没有合作。在此,次要用户在寻找空闲的主要频道在频率,时间或空间上的传输机会时,试图避免干扰主要用户。第二个问题考虑了基于中继的完全协作无线网络。此处,物理层的协作通信技术用于提高数据传输的可靠性和能源成本。第三个问题考虑了协作认知无线电网络,在该网络中,次要用户可以与主要用户进行协作传输,以提高后者的有效传输速率。作为回报,在主要用户空闲时,次要用户有更多机会传输自己的数据。在所有这些情况下,我们的目标是设计最佳控制算法,以最大程度地延长时间平均网络效用(例如吞吐量),时间平均约束(例如功率,可靠性等)。为此,我们利用Lyapunov优化技术来设计在线控制算法,该算法无需任何网络动态统计描述(例如衰落信道,节点移动性和随机分组到达)就可以运行,并且证明是最优的。前两个问题的算法在一个时隙和两个时隙的帧上使用贪婪决策,而第三个问题的算法涉及在可变长度帧上的随机最短路径决策,并且显式地解决了这一问题,而无需知识最后,在第四个问题中,我们研究了使用无速率码的静态无线网络中的最佳路由和调度。无速率代码允许网络的每个节点在每次数据包传输时积累相互信息。与传统的最短路径路由相比,这可以显着提高性能。此外,它也优于基于能量累积的协作通信技术。但是,这需要复杂和组合的网络决策,涉及哪些节点参与传输以及使用哪些解码顺序。我们将一般问题表述为组合优化问题,并确定了最优解的几种结构性质。这使我们能够导出最优贪婪算法来解决这些问题。这项工作使用了不同的工具集,可以独立于其他章节进行阅读。

著录项

  • 作者

    Urgaonkar, Rahul.;

  • 作者单位

    University of Southern California.;

  • 授予单位 University of Southern California.;
  • 学科 Engineering Electronics and Electrical.;Computer Science.
  • 学位 Ph.D.
  • 年度 2011
  • 页码 211 p.
  • 总页数 211
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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