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Please use this identifier to cite or link to this item: http://hdl.handle.net/1903/9693

Title: Convergence results for the linear consensus problem under Markovian random graphs
Authors: Ion, Matei
John, Baras
Advisors: John, Baras
Type: Article
Keywords: Consensus, random graphs
Issue Date: 2009
Series/Report no.: TR_2009-18
Abstract: This note discusses the linear discrete and continuous time consensus problem for a network of dynamic agents with directed information flows and random switching topologies. The switching is determined by a Markov chain, each topology corresponding to a state of the Markov chain. We show that, under doubly stochastic assumption on the matrices involved in the linear consensus scheme, average consensus is achieved in the mean square sense and almost surely if and only if the graph resulted from the union of graphs corresponding to the states of the Markov chain is strongly connected. The aim of this note is to show how techniques from Markovian jump linear systems theory, in conjunction with results inspired by matrix and graph theory, can be used to prove convergence results for stochastic consensus problems. I
URI: http://hdl.handle.net/1903/9693
Appears in Collections:Institute for Systems Research Technical Reports

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