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Resource allocation scheme for 5G C-RAN: a Swarm Intelligence based approach

机译:5G C-RAN的资源分配方案:基于群智能的方法

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摘要

The recent fifth generation (5G) system enabled a highly promising evolution of Cloud Radio Access Network (C-RAN). Unlike the conventional Radio Access Network (RAN), the C-RAN decouples the baseband processing unit (BBU) from the remote radio head (RRH) by allowing BBUs from multiple Base Stations (BSs) to operate into a centralized BBU pool on a remote cloud-based infrastructure and a scalable deployment of light-weight RRHs. In this paper, we propose an efficient resource allocation scheme for 5G C-RAN called Bee-Ant-CRAN. The challenge addressed is to design a logical joint mapping between User Equipment (UE) and RRHs as well as between RRHs and BBUs. This is done adaptively to network load conditions, in a way to reduce the overall network costs while maintaining the user QoS and QoE. The network load has been formulated as a mixed integer nonlinear problem with a number of constraints. Then, the formulated optimization problem is decomposed into two stage resource allocation problem: UE-RRH association and RRH-BBU mapping. Therefore, a modified Artificial Bee Colony is developed as a swarm intelligence based approach to build the UE-RRH mapping (resource allocation). Moreover, an ameliorated Ant Colony Optimization algorithm is proposed to solve the RRH-BBU mapping (clustering) problem. Computational results demonstrate that our proposed Bee-Ant-CRAN scheme reduces the resource wastage and significantly improves the spectral efficiency as well as the throughput. (C) 2019 Elsevier B.V. All rights reserved.
机译:最近的第五代(5G)系统实现了云无线电接入网(C-RAN)的高度发展前景。与传统的无线电访问网络(RAN)不同,C-RAN通过允许来自多个基站(BS)的BBU在远程的集中式BBU池中运行,将基带处理单元(BBU)与远程无线电头(RRH)分离。基于云的基础架构和轻量级RRH的可扩展部署。在本文中,我们提出了一种有效的5G C-RAN资源分配方案,即Bee-Ant-CRAN。解决的挑战是设计用户设备(UE)与RRH之间以及RRH与BBU之间的逻辑联合映射。这是针对网络负载条件而自适应完成的,以降低总体网络成本的方式同时保持用户QoS和QoE。网络负载已公式化为具有多个约束的混合整数非线性问题。然后,将制定的优化问题分解为两阶段的资源分配问题:UE-RRH关联和RRH-BBU映射。因此,改进的人工蜂群被开发为基于群体智能的方法来构建UE-RRH映射(资源分配)。此外,提出了一种改进的蚁群优化算法来解决RRH-BBU映射(聚类)问题。计算结果表明,我们提出的Bee-Ant-CRAN方案减少了资源浪费,并显着提高了频谱效率以及吞吐量。 (C)2019 Elsevier B.V.保留所有权利。

著录项

  • 来源
    《Computer networks》 |2019年第24期|106957.1-106957.15|共15页
  • 作者单位

    Univ Paris Saclay Univ Versailles St Quentin En Yvelines LI PaRAD Lab 45 Ave Etats Unis F-78035 Versailles France|Univ Maroua LaRI Lab POB 814 Maroua Cameroon;

    Univ Paris Saclay Univ Versailles St Quentin En Yvelines LI PaRAD Lab 45 Ave Etats Unis F-78035 Versailles France;

    Univ Paris 05 LIPADE Lab 45 Rue St Peres F-75006 Paris France;

    Gaston Berger Univ Dept Comp Sci POB 234 St Louis Senegal;

    Univ Ferhat Abbes Setif 1 LRSD Lab El Bez 19000 Setif Algeria;

  • 收录信息
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    C-RAN; Clustering; Swarm Intelligence; RRH; BBU; Resource allocation; 5G;

    机译:C-RAN;集群;群智能;RRH;BBU;资源分配;5G;

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