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Abstract We consider a network of distributed sensors, where each sensor takes a linear measurement of some unknown param-eters, corrupted by independent Gaussian noises. We propose a simple distributed iterative scheme, based on distributed average consensus in the network, to compute the maximum-likelihood estimate of the parameters. This scheme doesn’t involve explicit point-to-point message passing or routing; instead, it diffuses information across the network by updating each node’s data with a weighted average of its neighbors ’ data (they maintain the same data structure). At each step, every node can compute a local weighted least-squares estimate, which converges to the global maximum-likelihood solution. This scheme is robust to unreliable communication links. We show that it works in a network with dynamically changing topology, provided that the innitely occurring communication graphs are jointly connected. I.
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Lin Xiao
Hunan Normal University
Stephen Boyd
University of Technology Sydney
Sanjay Lall
Google (United States)
Stanford University
California Institute of Technology
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Xiao et al. (Sun,) studied this question.
synapsesocial.com/papers/6a1c3a6600ee29383e9da63e — DOI: https://doi.org/10.5555/1147685.1147698