DocumentCode
2819328
Title
Distributed Kalman filtering for sensor networks
Author
Olfati-Saber, R.
Author_Institution
Dartmouth Coll., Hanover
fYear
2007
fDate
12-14 Dec. 2007
Firstpage
5492
Lastpage
5498
Abstract
In this paper, we introduce three novel distributed Kalman filtering (DKF) algorithms for sensor networks. The first algorithm is a modification of a previous DKF algorithm presented by the author in CDC-ECC ´05. The previous algorithm was only applicable to sensors with identical observation matrices which meant the process had to be observable by every sensor. The modified DKF algorithm uses two identical consensus filters for fusion of the sensor data and covariance information and is applicable to sensor networks with different observation matrices. This enables the sensor network to act as a collective observer for the processes occurring in an environment. Then, we introduce a continuous-time distributed Kalman filter that uses local aggregation of the sensor data but attempts to reach a consensus on estimates with other nodes in the network. This peer-to-peer distributed estimation method gives rise to two iterative distributed Kalman filtering algorithms with different consensus strategies on estimates. Communication complexity and packet-loss issues are discussed. The performance and effectiveness of these distributed Kalman filtering algorithms are compared and demonstrated on a target tracking task.
Keywords
Kalman filters; communication complexity; continuous time filters; covariance matrices; distributed algorithms; distributed tracking; iterative methods; sensor fusion; wireless sensor networks; collective observer; communication complexity; consensus filter strategy; continuous-time distributed Kalman filter; covariance matrix; iterative distributed Kalman filtering algorithm; packet-loss issue; peer-to-peer distributed estimation method; sensor data fusion; target tracking task; wireless sensor network; Complexity theory; Covariance matrix; Filtering algorithms; Information filtering; Information filters; Iterative methods; Kalman filters; Peer to peer computing; Sensor fusion; Target tracking; consensus filtering; distributed Kalman filtering; sensor fusion; sensor networks;
fLanguage
English
Publisher
ieee
Conference_Titel
Decision and Control, 2007 46th IEEE Conference on
Conference_Location
New Orleans, LA
ISSN
0191-2216
Print_ISBN
978-1-4244-1497-0
Electronic_ISBN
0191-2216
Type
conf
DOI
10.1109/CDC.2007.4434303
Filename
4434303
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