作者
Boris N Oreshkin, Mark J Coates, Michael G Rabbat
发表日期
2010/2/17
期刊
IEEE Transactions on Signal Processing
卷号
58
期号
5
页码范围
2850-2865
出版商
IEEE
简介
Distributed averaging describes a class of network algorithms for the decentralized computation of aggregate statistics. Initially, each node has a scalar data value, and the goal is to compute the average of these values at every node (the so-called average consensus problem). Nodes iteratively exchange information with their neighbors and perform local updates until the value at every node converges to the initial network average. Much previous work has focused on algorithms where each node maintains and updates a single value; every time an update is performed, the previous value is forgotten. Convergence to the average consensus is achieved asymptotically. The convergence rate is fundamentally limited by network connectivity, and it can be prohibitively slow on topologies such as grids and random geometric graphs, even if the update rules are optimized. In this paper, we provide the first theoretical …
引用总数
2009201020112012201320142015201620172018201920202021202220232024131210161113714121099332
学术搜索中的文章
BN Oreshkin, MJ Coates, MG Rabbat - IEEE Transactions on Signal Processing, 2010