功率约束下加速共识算法的网络拓扑优化

C. Asensio-Marco, B. Beferull-Lozano
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引用次数: 6

摘要

平均共识算法是一个众所周知的分布式过程,其中节点迭代地与通信范围内的节点进行通信,以获得对全局平均值的估计。当在均匀随机部署的网络(如无线传感器网络)中执行这些重复通信时,会导致几个节点比其他节点消耗更多的功率,从而缩短整个网络的生命周期。本文提出了一种完全分布式的方法,允许网络节点在共识过程中适当地决定哪个通信子集在收敛时间和功率效率方面提供最佳性能。该方法既提高了共识算法的收敛性,又提高了整个网络的生存期。此外,作为一个基准,我们提出了一个凸优化问题,其结果可以与我们的分布式方法得到的结果进行比较。仿真结果显示了我们的方法的有效性,并将我们的两种方法与相关文献中的现有方法进行了比较。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Network Topology Optimization for Accelerating Consensus Algorithms under Power Constraints
The average consensus algorithm is a well known distributed process in which the nodes iteratively communicate with the nodes within their communication range in order to obtain an estimation of the global average. These repeated communications, when performed in a uniformly randomly deployed network, such as a Wireless Sensor Network, lead to several nodes consuming much more power than others, thus reducing the lifetime of the whole network. This paper proposes a fully distributed method that allows the network nodes to suitably decide which subset of communications provides the best performance during the consensus process in terms of convergence time and power efficiency. Our method simultaneously improves both the convergence of the consensus algorithm and the lifetime of the whole network. Moreover, as a benchmark, we propose a convex optimization problem whose results can be compared with those obtained by our distributed approach. Simulation results are presented to show the efficiency of our proposal, comparing our two methods with existing approaches in the related literature.
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