Title :
A distributed Kalman filter with global covariance
Author :
Sijs, J. ; Lazar, M.
Author_Institution :
TNO Sci. & Ind., Delft, Netherlands
fDate :
June 29 2011-July 1 2011
Abstract :
Most distributed Kalman filtering (DKF) algorithms for sensor networks calculate a local estimate of the global state-vector in each node. An important challenge within distributed estimation is that all sensors in the network contribute to the local estimate in each node. In this paper, a novel DKF algorithm is proposed with the goal of attaining the above property, which is denoted as global covariance. In the considered DKF set-up each node performs two steps iteratively, i.e., it runs a standard Kalman Alter using local measurements and then fuses the resulting estimates with the ones received from its neighboring nodes. The distinguishing aspect of this set-up is a novel state-fusion method, i.e., ellipsoidal intersection (EI). The main contribution consists of a proof that the proposed DKF algorithm, in combination with EI for state-fusion, enjoys the desired property under similar conditions that should hold for observability of standard Kalman filters. The advantages of developed DKF with respect to alternative DKF algorithms are illustrated for a benchmark example of cooperative adaptive cruise control.
Keywords :
Kalman filters; adaptive control; distributed control; observability; wireless sensor networks; cooperative adaptive cruise control; distributed Kalman filter; distributed estimation; ellipsoidal intersection; global covariance; global state vector; observability; sensor networks; state-fusion method; Benchmark testing; Correlation; Estimation; Fuses; Kalman filters; Mutual information; Vehicles; Asymptotic analysis; Distributed estimation; Fusion; Kalman filter;
Conference_Titel :
American Control Conference (ACC), 2011
Conference_Location :
San Francisco, CA
Print_ISBN :
978-1-4577-0080-4
DOI :
10.1109/ACC.2011.5990802