首页> 外文OA文献 >A low complexity method of resource allocation in up-link macrodiversity systems using long-term power.
【2h】

A low complexity method of resource allocation in up-link macrodiversity systems using long-term power.

机译:使用长期功率的上行链路宏分集系统中资源分配的一种低复杂度方法。

摘要

Macrodiversity system is a communication architecture where base stations (BS) act as distributed nodes of a multiple-input multiple-output (MIMO) antennas. It has many promising features that can improve system performance from a network perspective, such as improving the weak signals of users affected by shadow fading, or users at the cell-edge. They also allow multiple users to share the same resource in time and frequency, improving the overall user capacity.Traditionally, evaluating the link quality of resource-sharing users requires instantaneous channel state information (CSI). However, finding compatible users to share resource inmacrodiversity systems is a challenging task. For macrodiversity systems, instantaneous CSI could be passed to the backhaul processing unit (BPU) through the network backhaul. This creates a delay in the signal, and makes instantaneous CSI a less accurate reflection of the channel environment at the time. Passing instantaneous CSI of all users also creates a significant amount of network overheads, reducing the overall efficiency of the network. Compared to MIMO systems with co-located antennas, macrodiversity systems cover a larger geographical area and more users. For this reason, the number of user selection combinations can become extremely large, making scheduling decisions in real time an even more challenging task. These problems limit the realisation of the user capacity potential of macrodiversity systems.This thesis presents a low complexity method of resource allocation for up-link macrodiversity systems. In particular, it uses long-term power to estimate the link quality of resource-sharing users. Using long-term power bypasses the issue of channel estimation error introduced by the network delay, and it also reduces the communication overhead on the network backhaul. In this thesis, we use Symbol-Error Rate (SER) as the measure for link quality. Using the method developed by Basnayaka [1], we are able to estimate SER of resource-sharing users using long-term power. Using the SER estimation method, we further proposed a user compatibility check (UCC), which evaluates the compatibility of users sharing the same resource. Users are only considered compatible with each other if all of them meet a pre-defined SER threshold.We attempt to reduce the complexity of user selection by using heuristic solution-finding methods. In our research, we found that greedy algorithms have the least complexity. Wepropose four low-complexity user selection algorithms based on a greedy algorithm. These algorithms are simulated under different environment parameters. We evaluate the systemperformance in terms of utilisation and complexity. Utilisation refers to the percentage of allocated users compared to the theoretical user capacity. Complexity refers to the numberof SER calculations required to find a resource allocation solution. From the simulation results, we observed that with the proposed user selection algorithms, we can achievemoderately high utilisation with much lower complexity, compared to finding user selections via an exhaustive search method. Out of the proposed user selection algorithms, thePriority Order with Sequential Removal (PO+SR) and the First-Fit (FF) algorithm have the best overall performance, in terms of the trade-off between utilisation performance, andcomplexity performance. The final choice of the algorithm will depend on the processing power and the system performance requirement of the macrodiversity system.
机译:宏分集系统是一种通信体系结构,其中基站(BS)充当多输入多输出(MIMO)天线的分布式节点。它具有许多有前途的功能,可以从网络角度改善系统性能,例如改善受阴影衰落影响的用户或小区边缘用户的微弱信号。它们还允许多个用户在时间和频率上共享同一资源,从而提高了整体用户容量。传统上,评估资源共享用户的链路质量需要瞬时信道状态信息(CSI)。但是,找到兼容的用户共享资源匮乏的系统是一项艰巨的任务。对于宏分集系统,可以通过网络回程将瞬时CSI传递到回程处理单元(BPU)。这会在信号中产生延迟,并使瞬时CSI在当时对通道环境的反射不太准确。传递所有用户的瞬时CSI还会产生大量的网络开销,从而降低网络的整体效率。与具有共置天线的MIMO系统相比,宏分集系统覆盖更大的地理区域和更多的用户。因此,用户选择组合的数量可能变得非常大,从而使实时调度决策成为一项更具挑战性的任务。这些问题限制了宏分集系统用户容量潜力的实现。本文提出了一种低复杂度的上行宏分集系统资源分配方法。特别是,它使用长期能力来估计资源共享用户的链路质量。使用长期功率绕过了网络延迟带来的信道估计误差问题,并且还减少了网络回程上的通信开销。在本文中,我们使用符号错误率(SER)作为链路质量的度量。使用Basnayaka [1]开发的方法,我们能够使用长期能力估算资源共享用户的SER。使用SER估计方法,我们进一步提出了用户兼容性检查(UCC),用于评估共享相同资源的用户的兼容性。仅当所有用户都满足预定义的SER阈值时,才认为它们彼此兼容。我们尝试使用启发式解决方案查找方法来降低用户选择的复杂性。在我们的研究中,我们发现贪婪算法的复杂度最低。我们提出了一种基于贪婪算法的四种低复杂度的用户选择算法。这些算法是在不同的环境参数下进行仿真的。我们根据利用率和复杂性评估系统性能。利用率是指分配的用户相对于理论用户容量的百分比。复杂度是指找到资源分配解决方案所需的SER计算数量。从仿真结果中,我们观察到,与通过穷举搜索方法找到用户选择相比,通过提出的用户选择算法,我们可以以较低的复杂度实现中等利用率。在所提出的用户选择算法中,就利用性能和复杂性之间的权衡而言,顺序删除优先级顺序(PO + SR)和优先选择(FF)算法具有最佳的总体性能。该算法的最终选择将取决于宏分集系统的处理能力和系统性能要求。

著录项

  • 作者

    Chen Yu-An;

  • 作者单位
  • 年度 2013
  • 总页数
  • 原文格式 PDF
  • 正文语种 en
  • 中图分类

相似文献

  • 外文文献
  • 中文文献
  • 专利

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