Abstract

The problem of distributed Kalman filtering (DKF) for sensor networks is one of the most fundamental distributed estimation problems for scalable sensor fusion. This paper addresses the DKF problem by reducing it to two separate dynamic consensus problems in terms of weighted measurements and inverse-covariance matrices. These to data fusion problems are solved is a distributed way using low-pass and band-pass consensus filters. Consensus filters are distributed algorithms that allow calculation of average-consensus of time-varying signals. The stability properties of consensus filters is discussed in a companion CDC '05 paper [24]. We show that a central Kalman filter for sensor networks can be decomposed into n micro-Kalman filters with inputs that are provided by two types of consensus filters. This network of micro-Kalman filters collectively are capable to provide an estimate of the state of the process (under observation) that is identical to the estimate obtained by a central Kalman filter given that all nodes agree on two central sums. Later, we demonstrate that our consensus filters can approximate these sums and that gives an approximate distributed Kalman filtering algorithm. A detailed account of the computational and communication architecture of the algorithm is provided. Simulation results are presented for a sensor network with 200 nodes and more than 1000 links.

Keywords

Kalman filterFast Kalman filterComputer scienceInvariant extended Kalman filterCovariance intersectionSensor fusionConsensusAlpha beta filterExtended Kalman filterEnsemble Kalman filterControl theory (sociology)Wireless sensor networkDistributed algorithmAlgorithmConsensus algorithmDistributed computingMulti-agent systemArtificial intelligenceComputer networkMoving horizon estimation

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Year
2006
Type
article
Pages
8179-8184
Citations
1004
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Closed

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R. Olfati-Saber (2006). Distributed Kalman Filter with Embedded Consensus Filters. , 8179-8184. https://doi.org/10.1109/cdc.2005.1583486

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DOI
10.1109/cdc.2005.1583486