Authors
Tuncer Can Aysal, Mark J Coates, Michael G Rabbat
Publication date
2008/6/13
Journal
IEEE transactions on Signal Processing
Volume
56
Issue
10
Pages
4905-4918
Publisher
IEEE
Description
In this paper, we develop algorithms for distributed computation of averages of the node data over networks with bandwidth/power constraints or large volumes of data. Distributed averaging algorithms fail to achieve consensus when deterministic uniform quantization is adopted. We propose a distributed algorithm in which the nodes utilize probabilistically quantized information, i.e., dithered quantization, to communicate with each other. The algorithm we develop is a dynamical system that generates sequences achieving a consensus at one of the quantization values almost surely. In addition, we show that the expected value of the consensus is equal to the average of the original sensor data. We derive an upper bound on the mean-square-error performance of the probabilistically quantized distributed averaging (PQDA). Moreover, we show that the convergence of the PQDA is monotonic by studying the …
Total citations
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Scholar articles
TC Aysal, MJ Coates, MG Rabbat - IEEE transactions on Signal Processing, 2008