首页> 外文会议>International Conference on Communications in Computing >The Impact of Clustering in Distributed Topology Control
【24h】

The Impact of Clustering in Distributed Topology Control

机译:分布式拓扑控制聚类的影响

获取原文

摘要

Topology control is the problem of assigning power levels to the nodes of an ad hoc network so as to maintain a specified network topology while minimizing energy consumption (either minimizing the maximum power used by any node or minimizing the total (i.e. average) power used by the nodes). In [18], a hybrid framework for distributed topology control based on clustering was proposed. That framework, called CLTC, specifies algorithms for both 1-connected and 2-connected topologies, and works with any clustering algorithm. CLTC utilizes centralized topology control within each cluster, but is otherwise fully distributed, hence the characterization of the method as hybrid. This paper studies the effect of six representative clustering methods on the quality of the topology control solutions provided by CLTC. The results establish that the most important factors in determining the performance of CLTC are the average cluster size and the closeness of nodes in clusters. This leads to a tradeoff between the energy consumption, the complexity of cluster formation, and the scope to which the operations of CLTC are fully distributed. The paper also shows that, in general, there is a considerable increase in power usage (in the vicinity of 150%) by requiring a 2-connected network versus a 1-connected network.
机译:拓扑控制是将功率电平分配给ad hoc网络的节点的问题,以便在最小化能量消耗的同时维护指定的网络拓扑(最小化任何节点使用的最大功率或最小化由所使用的总使用(即平均)功率节点)。在[18]中,提出了一种基于聚类的分布式拓扑控制的混合框架。该框架称为CLTC,指定了用于1连接和2连接的拓扑的算法,并与任何聚类算法一起使用。 CLTC利用每个群集中的集中拓扑控制,而是完全分布,因此该方法的表征为混合动力。本文研究了六种代表性聚类方法对CLTC提供的拓扑控制解决方案质量的影响。结果确定确定CLTC性能的最重要因素是群集中节点的平均簇大小和近的闭合性。这导致能耗之间的权衡,集群形成的复杂性以及CLTC的操作完全分布的范围。本文还示出了,通常,通过需要2连接的网络与1连接的网络,电力使用量(在150%附近)相当大的增加。

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