DocumentCode :
68189
Title :
Broadcast Gossip Algorithms for Consensus on Strongly Connected Digraphs
Author :
Shaochuan Wu ; Rabbat, Michael G.
Author_Institution :
McGill Univ., Montreal, QC, Canada
Volume :
61
Issue :
16
fYear :
2013
fDate :
Aug.15, 2013
Firstpage :
3959
Lastpage :
3971
Abstract :
We study a general framework for broadcast gossip algorithms which use companion variables to solve the average consensus problem. Each node maintains an initial state and a companion variable. Iterative updates are performed asynchronously whereby one random node broadcasts its current state and companion variables and all other nodes receiving the broadcast update their state and companion variables. We provide conditions under which this scheme is guaranteed to converge to a consensus solution, where all nodes have the same limiting values, on any strongly connected directed graph. Under stronger conditions, which are reasonable when the underlying communication graph is undirected, we guarantee that the consensus value is equal to the average, both in expectation and in the mean-squared sense. Our analysis uses tools from non-negative matrix theory and perturbation theory. The perturbation results rely on a parameter being sufficiently small. We characterize the allowable upper bound as well as the optimal setting for the perturbation parameter as a function of the network topology, and this allows us to characterize the worst-case rate of convergence. Simulations illustrate that, in comparison to existing broadcast gossip algorithms, the approaches proposed in this paper have the advantage that they simultaneously can be guaranteed to converge to the average consensus and they converge in a small number of broadcasts.
Keywords :
directed graphs; iterative methods; matrix algebra; signal processing; broadcast gossip algorithms; communication graph; companion variables; connected directed graph; consensus problem; iterative updates; network topology; nonnegative matrix theory; perturbation theory; random node broadcasts; strongly connected digraphs; Distributed averaging; distributed signal processing; wireless sensor networks;
fLanguage :
English
Journal_Title :
Signal Processing, IEEE Transactions on
Publisher :
ieee
ISSN :
1053-587X
Type :
jour
DOI :
10.1109/TSP.2013.2264056
Filename :
6517485
Link To Document :
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