首页> 外文学位 >Self organizing networks: Building traffic and environment aware wireless systems.
【24h】

Self organizing networks: Building traffic and environment aware wireless systems.

机译:自组织网络:建立具有流量和环境意识的无线系统。

获取原文
获取原文并翻译 | 示例

摘要

This dissertation investigates how to optimize flow-level performance in interference dominated wireless networks serving dynamic traffic loads. The schemes presented in this dissertation adapt to long-term (hours) spatial load variations, and the main metrics of interest are the file transfer delay or average flow throughput and the mean power expended by the transmitters.;The first part presents a system level approach to interference management in an infrastructure based wireless network with full frequency reuse. The key idea is to use loose base station coordination that is tailored to the spatial load distribution and the propagation environment to exploit the diversity in a user population's sensitivity to interference. System architecture and abstractions to enable such coordination are developed for both the downlink and the uplink cases, which present differing interference characteristics. The basis for the approach is clustering and aggregation of traffic loads into classes of users with similar interference sensitivities that enable coarse grained information exchange among base stations with greatly reduced communication overheads. The dissertation explores ways to model and optimize the system under dynamic traffic loads where users come and go resulting in interference induced performance coupling across base stations. Based on extensive system-level simulations, I demonstrate load-dependent reductions in file transfer delay ranging from 20-80% as compared to a simple baseline not unlike systems used in the field today, while simultaneously providing more uniform coverage. Average savings in user power consumption of up to 75% are achieved. Performance results under heterogeneous spatial loads illustrate the importance of being traffic and environment aware.;The second part studies the impact of policies to associate users with base stations/access points on flow-level performance in interference limited wireless networks. Most research in this area has used static interference models (i.e., neighboring base stations are always active) and resorted to intuitive objectives such as load balancing. In this dissertation, it is shown that this can be counter productive, and that asymmetries in load can lead to significantly better performance in the presence of dynamic interference which couples the transmission rates experienced by users at various base stations. A methodology that can be used to optimize the performance of a class of coupled systems is proposed, and applied to study the user association problem. It is demonstrated that by properly inducing load asymmetries, substantial performance gains can be achieved relative to a load balancing policy (e.g., 15 times reduction in mean delay). A novel measurement based, interference-aware association policy is presented that infers the degree of interference induced coupling and adapts to it. Systematic simulations establish that both the optimized static and interference-sensitive, adaptive association policies substantially outperform various proposed dynamic policies and that these results are robust to changes in file size distributions, channel parameters, and spatial load distributions.
机译:本文研究了如何在服务于动态流量负载的干扰为主的无线网络中优化流量级性能。本文提出的方案适用于长期(小时)的空间负载变化,主要关注指标是文件传输延迟或平均流吞吐量以及发射机消耗的平均功率。第一部分介绍了系统级别具有全频率复用的基于基础架构的无线网络中的干扰管理方法。关键思想是使用针对空间负载分布和传播环境量身定制的宽松基站协调,以利用用户群体对干扰的敏感性方面的多样性。针对下行链路和上行链路情况都开发了实现这种协调的系统架构和抽象,它们表现出不同的干扰特性。该方法的基础是将业务负载聚类和聚合到具有类似干扰敏感度的用户类别中,从而可以在基站之间以较低的通信开销进行粗粒度的信息交换。本文探讨了在动态流量负载下用户来来往往导致基站间性能耦合的性能耦合的系统建模和优化方法。基于广泛的系统级仿真,我证明了与简单基准相比,文件传输延迟在20-80%范围内与负载相关的减少,与当今的现场系统不同,同时提供了更统一的覆盖范围。平均节省了多达75%的用户功耗。异构空间负载下的性能结果说明了了解流量和环境的重要性。第二部分研究了在受限干扰的无线网络中,将用户与基站/接入点相关联的策略对流量级性能的影响。该领域的大多数研究都使用了静态干扰模型(即,相邻基站始终处于活动状态),并诉诸于诸如负载平衡之类的直观目标。在本文中,表明这可能适得其反,并且在存在动态干扰的情况下,负载的不对称会导致明显更好的性能,动态干扰耦合了用户在各个基站所经历的传输速率。提出了一种可用于优化一类耦合系统性能的方法,并将其应用于研究用户关联问题。已经证明,通过适当地引起负载不对称,相对于负载平衡策略(例如,平均延迟减少15倍)可以实现相当大的性能增益。提出了一种新颖的基于测量的干扰感知关联策略,该策略可以推断干扰引起的耦合程度并对其进行适应。系统仿真表明,优化的静态和干扰敏感的自适应关联策略均远胜于各种建议的动态策略,并且这些结果对于文件大小分布,通道参数和空间负载分布的变化具有鲁棒性。

著录项

  • 作者

    Rengarajan, Balaji.;

  • 作者单位

    The University of Texas at Austin.;

  • 授予单位 The University of Texas at Austin.;
  • 学科 Engineering Electronics and Electrical.
  • 学位 Ph.D.
  • 年度 2009
  • 页码 185 p.
  • 总页数 185
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号