...
首页> 外文期刊>IEEE Transactions on Vehicular Technology >Gibbs-Sampling-Based CRE Bias Optimization Algorithm for Ultradense Networks
【24h】

Gibbs-Sampling-Based CRE Bias Optimization Algorithm for Ultradense Networks

机译:基于吉布斯采样的超密集网络CRE偏差优化算法

获取原文
获取原文并翻译 | 示例
           

摘要

Cell range expansion (CRE) is an effective technique in the ultradense network (UDN) to enlarge small cells' ranges and promote network utility such as system throughput, number of users lower than a rate threshold, and proportional fairness. Due to the coupled relationship of user association and scheduling in rate-related utility optimization, optimal cell-specific CRE bias is difficult to achieve. This paper first proposes a centralized CRE bias adjusting algorithm based on Gibbs sampling to achieve the optimal solution of cell-specific CRE bias based on global information. After that, a decentralized Gibbs-sampling-based CRE bias adjusting algorithm without the need for the entire knowledge of global channel gains is designed to deal with the computational complexity and message exchange overhead problem caused by scale expansion of UDN. Finally, to further reduce the increasing computational complexity, message exchange overhead, and time complexity caused by scale expansion of UDN, this paper constructs a neighbor graph based on the mutual bias influence among cells, develops a graph-coloring-based clustering algorithm to classify cells into groups, and proposes a central-aided distributed CRE bias adjusting algorithm to obtain the optimal solution to the rate-related utility optimization problem based on local information. In the central-aided distributed CRE bias adjusting algorithm, a central macrocell is used to collect the information from the small cells, and the small cells distributively determine their CRE bias based on shared central information. The optimality and complexity of the proposed algorithms are proven and analyzed. Numerical results show that, compared with existing schemes, the proposed Gibbs-sampling-based algorithms can achieve a larger utility function with less iteration time.
机译:小区范围扩展(CRE)是超密集网络(UDN)中的一种有效技术,可以扩大小型小区的范围并提高网络利用率,例如系统吞吐量,低于速率阈值的用户数量以及比例公平性。由于速率相关效用优化中用户关联和调度的耦合关系,因此难以实现最佳的特定于小区的CRE偏差。本文首先提出一种基于Gibbs采样的集中式CRE偏差调整算法,以实现基于全局信息的小区特定CRE偏差的最优解。此后,设计了一种基于分散的基于Gibbs采样的CRE偏差调整算法,该算法无需了解全局信道增益的全部知识,即可解决UDN规模扩展引起的计算复杂性和消息交换开销问题。最后,为进一步降低UDN规模扩展带来的计算复杂度,消息交换开销和时间复杂度的不足,本文基于单元间的相互偏差影响构造了一个邻居图,并开发了一种基于图着色的聚类算法进行分类。将电池分为几类,并提出了一种中央辅助的分布式CRE偏差调整算法,以基于局部信息获得与费率相关的效用优化问题的最优解。在中央辅助分布式CRE偏差调整算法中,中央宏小区用于从小型小区收集信息,小型小区根据共享的中央信息来分布式确定其CRE偏差。证明并分析了所提算法的最优性和复杂性。数值结果表明,与现有方案相比,所提出的基于吉布斯采样的算法能够以较小的迭代时间实现更大的效用函数。

著录项

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