Title :
Distributed Detection via Gaussian Running Consensus: Large Deviations Asymptotic Analysis
Author :
Dragana Bajovic;Dus˘an Jakovetic;João Xavier;Bruno Sinopoli;José M. F. Moura
Author_Institution :
Institute for Systems and Robotics (ISR), Instituto Superior Té
Abstract :
We study, by large deviations analysis, the asymptotic performance of Gaussian running consensus distributed detection over random networks; in other words, we determine the exponential decay rate of the detection error probability. With running consensus, at each time step, each sensor averages its decision variable with the neighbors´ decision variables and accounts on-the-fly for its new observation. We show that: 1) when the rate of network information flow (the speed of averaging) is above a threshold, then Gaussian running consensus is asymptotically equivalent to the optimal centralized detector, i.e., the exponential decay rate of the error probability for running consensus equals the Chernoff information; and 2) when the rate of information flow is below a threshold, running consensus achieves only a fraction of the Chernoff information rate. We quantify this achievable rate as a function of the network rate of information flow. Simulation examples demonstrate our theoretical findings on the behavior of running consensus detection over random networks.
Keywords :
"Error probability","Robot sensing systems","Estimation","Noise","Detectors","Testing"
Journal_Title :
IEEE Transactions on Signal Processing
DOI :
10.1109/TSP.2011.2157147