DocumentCode
3849009
Title
Decentralized Parameter Estimation by Consensus Based Stochastic Approximation
Author
Srdjan S. Stankovic;Miloš S. Stankovic;Dušan M. Stipanovic
Author_Institution
Faculty of Electrical Engineering, University of Belgrade, Belgrade, Serbia
Volume
56
Issue
3
fYear
2011
Firstpage
531
Lastpage
543
Abstract
In this paper, an algorithm for decentralized multi-agent estimation of parameters in linear discrete-time regression models is proposed in the form of a combination of local stochastic approximation algorithms and a global consensus strategy. An analysis of the asymptotic properties of the proposed algorithm is presented, taking into account both the multi-agent network structure and the probabilities of getting local measurements and implementing exchange of inter-agent messages. In the case of non-vanishing gains in the stochastic approximation algorithms, an asymptotic estimation error covariance matrix bound is defined as the solution of a Lyapunov-like matrix equation. In the case of asymptotically vanishing gains, the mean-square convergence is proved and the rate of convergence estimated. In the discussion, the problem of additive communication noise is treated in a methodologically consistent way. It is also demonstrated how the consensus scheme in the algorithm can contribute to the overall reduction of measurement noise influence. Some simulation results illustrate the obtained theoretical results.
Keywords
"Convergence","Estimation","Approximation algorithms","Noise measurement","Noise","Approximation methods","Stochastic processes"
Journal_Title
IEEE Transactions on Automatic Control
Publisher
ieee
ISSN
0018-9286
Type
jour
DOI
10.1109/TAC.2010.2076530
Filename
5580011
Link To Document