首页> 外文会议>International Conference on Mobile Ad-hoc and Sensor Networks(MSN 2007); 20071212-14; Beijing(CN) >Distributed Computation of Maximum Lifetime Spanning Subgraphs in Sensor Networks
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Distributed Computation of Maximum Lifetime Spanning Subgraphs in Sensor Networks

机译:传感器网络中最大寿命跨度子图的分布式计算

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We present a simple and efficient distributed method for determining the transmission power assignment that maximises the lifetime of a data-gathering wireless sensor network with stationary nodes and static power assignments. Our algorithm determines the transmission power level inducing the maximum-lifetime spanning subgraph of a network by means of a distributed breadth-first search for minmax-power communication paths, i.e. paths that connect a given reference node to each of the other nodes so that the maximum transmission power required on any link of the path is minimised. The performance of the resulting Maximum Lifetime Spanner (MLS) protocol is validated in a number of simulated networking scenarios. In particular, we study the performance of the protocol in terms of the number of required control messages, and compare it to the performance of a recently proposed Distributed Min-Max Tree (DMMT) algorithm. For all network scenarios we consider, MLS outperforms DMMT significantly. We also discuss bringing down the message complexity of our algorithm by initialising it with the Relative Neighbourhood Graph (RNG) of a transmission graph rather than the full graph, and present an efficient distributed method for reducing a given transmission graph to its RNG.
机译:我们提出一种确定传输功率分配的简单有效的分布式方法,该方法可最大化具有固定节点和静态功率分配的数据收集无线传感器网络的寿命。我们的算法通过对minmax-power通信路径(即将给定参考节点连接到其他每个节点的路径)进行分布式广度优​​先搜索来确定引起网络最大寿命跨度子图的传输功率水平。将路径的任何链路上所需的最大传输功率降至最低。在许多模拟的网络场景中,都可以验证所生成的最大寿命扳手(MLS)协议的性能。特别是,我们根据所需控制消息的数量来研究协议的性能,并将其与最近提出的分布式最小-最大树(DMMT)算法的性能进行比较。对于我们考虑的所有网络场景,MLS的性能均明显优于DMMT。我们还讨论了通过使用传输图而不是完整图的相对邻域图(RNG)初始化算法来降低算法的消息复杂性,并提出了一种有效的分布式方法,用于将给定的传输图简化为RNG。

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