Published October 2007 | Version Published
Book Section - Chapter Open

Kalman Filtering with Uncertain Process and Measurement Noise Covariances with Application to State Estimation in Sensor Networks

Abstract

Distributed state estimation under uncertain process and measurement noise covariances is considered. An algorithm based on sensor fusion using Kalman filtering is investigated. It is shown that if the covariances are decomposed into a known nominal covariance plus an uncertainty term, then the uncertainty of the actual estimation error covariance for the Kalman filter grows linearly with the size of the uncertainty term. This result is extended to the sensor fusion scheme to give an upper bound on the actual error covariance for the fused state estimate. Examples are provided to illustrate how the theory can be applied in practice.

Additional Information

© 2007 IEEE. Issue Date: 1-3 Oct. 2007; Date of Current Version: 27 November 2007. The work by L. Shi and R. M. Murray is supported in part by AFOSR grant FA9550-04-1-0169. The work by K. H. Johansson is supported by the Swedish Research Council and the Swedish Foundation for Strategic Research through an Individual Grant for the Advancement of Research Leaders.

Attached Files

Published - Shi2007p8512Proceedings_Of_The_2007_Ieee_Conference_On_Control_Applications_Vols_1-3.pdf

Files

Shi2007p8512Proceedings_Of_The_2007_Ieee_Conference_On_Control_Applications_Vols_1-3.pdf

Additional details

Identifiers

Eprint ID
20440
Resolver ID
CaltechAUTHORS:20101015-111038468

Funding

Air Force Office of Scientific Research (AFOSR)
FA9550-04-1-0169
Swedish Research Council
Swedish Foundation for Strategic Research

Dates

Created
2010-10-27
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Updated
2021-11-08
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