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Pareto Optimality in Multiuser Relay Networks

机译:多用户中继网络中的帕累托最优

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摘要

Pareto optimality is a desired property in multiuser communication networks. In this thesis, we study the multiuser amplify-and-forward (AF) relay network and assume each node is equipped with multiple antennas. The objective is to optimize the power and the beamforming vectors at the transmitters, the processing matrices at the relays and the beamforming vectors at the receivers for Pareto optimality in maximizing users' signal-to-interference-plus-noise ratio (SINR) tuple.;We first study Pareto optimality with respect to the power of the transmitters by making use of SINR balancing analysis. For the SINR balancing problem considered, we propose efficient algorithms to obtain the optimal power vector. We give necessary and sufficient conditions for an SINR tuple to be Pareto optimal with respect to the power of the transmitters under various types of power constraints. These conditions lay the foundation for the study of Pareto optimality with respect to the beamforming vectors and the relay processing matrices in later chapters.;In Chapter 3, Pareto optimality is first studied with respect to the transmit and receive beamforming vectors with channel state information (CSI) of all local links, based on the SINR balancing analysis and the Collatz-Wielandt formula. By suitable reformulation, the beamforming vectors can be optimized locally at each transmitter and receiver in a distributed way. We present the algorithm to achieve the necessary and sufficient condition for Pareto optimality. Numerical results show that significant improvement in performance is achieved, compared with the random scheme. With CSI of the desired link only, we give a sufficient condition for the transmit covariance matrix to be Pareto optimal and present a transmission scheme achieving this condition.;In Chapter 4, we unify the study of Pareto optimality with respect to the relay processing matrices under different power constraints into one framework, by formulating different relay power constraints into a common form. Then optimization of the relay processing matrices is studied by two approaches. The first one is to use the rate profile method and the semidefinite relaxation (SDR) method. The second one is based on the SINR balancing analysis. The two optimization approaches are compared via numerical results.
机译:帕累托最优是多用户通信网络中的期望属性。在本文中,我们研究了多用户放大转发(AF)中继网络,并假设每个节点都配备了多个天线。目的是为了使用户的信噪比加噪声比(SINR)元组最大化,以优化帕累托最优性来优化发射机处的功率和波束形成向量,中继站处的处理矩阵以及接收机处的波束形成向量。 ;我们首先通过利用SINR平衡分析研究关于发射机功率的Pareto最优性。对于所考虑的SINR平衡问题,我们提出了有效的算法来获得最佳功率矢量。我们给出了在各种类型的功率约束下,SINR元组相对于发射机功率而言,帕累托最优的必要和充分条件。这些条件为以后的章节中关于波束形成向量和中继处理矩阵的帕累托最优研究奠定了基础。;在第3章中,首先研究了具有信道状态信息的发射和接收波束成形向量的帕累托最优(基于SINR平衡分析和Collat​​z-Wielandt公式的所有本地链接的CSI)。通过适当的重新设计,可以在每个发射机和接收机处以分布式方式局部优化波束形成矢量。我们提出该算法以实现帕累托最优的充要条件。数值结果表明,与随机方案相比,性能得到了显着改善。仅使用所需链路的CSI,我们为传输协方差矩阵提供了一个充分的条件,使其成为Pareto最优的,并提出了实现该条件的传输方案。在第4章中,我们统一了关于中继处理矩阵的Pareto最优性研究。通过将不同的中继功率约束公式化为一种通用形式,将不同功率约束条件整合到一个框架中。然后通过两种方法研究中继处理矩阵的优化。第一种是使用速率分布方法和半定松弛(SDR)方法。第二个是基于SINR平衡分析的。通过数值结果比较了两种优化方法。

著录项

  • 作者

    Hu, Ruixue.;

  • 作者单位

    The Chinese University of Hong Kong (Hong Kong).;

  • 授予单位 The Chinese University of Hong Kong (Hong Kong).;
  • 学科 Electrical engineering.
  • 学位 Ph.D.
  • 年度 2017
  • 页码 158 p.
  • 总页数 158
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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