DocumentCode :
1037792
Title :
Robust Distributed Estimation Using the Embedded Subgraphs Algorithm
Author :
Delouille, Véronique ; Neelamani, Ramesh Neelsh ; Baraniuk, Richard G.
Author_Institution :
R. Obs. of Belgium, Bruxelles
Volume :
54
Issue :
8
fYear :
2006
Firstpage :
2998
Lastpage :
3010
Abstract :
We propose a new iterative, distributed approach for linear minimum mean-square-error (LMMSE) estimation in graphical models with cycles. The embedded subgraphs algorithm (ESA) decomposes a loopy graphical model into a number of linked embedded subgraphs and applies the classical parallel block Jacobi iteration comprising local LMMSE estimation in each subgraph (involving inversion of a small matrix) followed by an information exchange between neighboring nodes and subgraphs. Our primary application is sensor networks, where the model encodes the correlation structure of the sensor measurements, which are assumed to be Gaussian. The resulting LMMSE estimation problem involves a large matrix inverse, which must be solved in-network with distributed computation and minimal intersensor communication. By invoking the theory of asynchronous iterations, we prove that ESA is robust to temporary communication faults such as failing links and sleeping nodes, and enjoys guaranteed convergence under relatively mild conditions. Simulation studies demonstrate that ESA compares favorably with other recently proposed algorithms for distributed estimation. Simulations also indicate that energy consumption for iterative estimation increases substantially as more links fail or nodes sleep. Thus, somewhat surprisingly, sensor network energy conservation strategies such as low-powered transmission and aggressive sleep schedules could actually prove counterproductive. Our results can be replicated using MATLAB code from www.dsp.rice.edu/software
Keywords :
Gaussian processes; graph theory; iterative methods; least mean squares methods; matrix inversion; wireless sensor networks; Gaussian correlation structure; MATLAB code; aggressive sleep schedules; asynchronous iterations; distributed computation; embedded subgraphs algorithm; energy consumption; guaranteed convergence; iterative distributed estimation; linear minimum mean-square-error estimation; loopy graphical model; low-powered transmission; matrix inversion; minimal intersensor communication; parallel block Jacobi iteration; robust distributed estimation; sensor measurements; sensor network energy conservation strategies; Computational modeling; Convergence; Distributed computing; Graphical models; Iterative algorithms; Iterative methods; Jacobian matrices; Mathematical model; Matrix decomposition; Robustness; Asynchronous iterations; Wiener filter; distributed estimation; graphical models; matrix splitting; sensor networks;
fLanguage :
English
Journal_Title :
Signal Processing, IEEE Transactions on
Publisher :
ieee
ISSN :
1053-587X
Type :
jour
DOI :
10.1109/TSP.2006.874839
Filename :
1658255
Link To Document :
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