Progressive quantization in distributed average consensus
Abstract
We consider the problem of distributed average consensus in a sensor network where sensors exchange quantized information with their neighbors. We propose a novel quantization scheme that exploits the increasing correlation between the values exchanged by the sensors throughout the iterations of the consensus algorithm. A low complexity, uniform quantizer is implemented in each sensor, and refined quantization is achieved by progressively reducing the quantization intervals during the convergence of the consensus algorithm. We propose a recurrence relation for computing the quantization parameters that depend on the network topology and the communication rate. We further show that the recurrence relation can lead to a simple exponential model for the size of the quantization step size over the iterations, whose parameters can be computed a priori. Finally, simulation results demonstrate the effectiveness of the progressive quantization scheme that leads to the consensus solution even at low communication rate.
Cite
@article{arxiv.1105.1074,
title = {Progressive quantization in distributed average consensus},
author = {Dorina Thanou and Effrosyni Kokiopoulou and Pascal Frossard},
journal= {arXiv preprint arXiv:1105.1074},
year = {2012}
}