DocumentCode
697617
Title
Subspace system identification of the Kalman filter gain
Author
Di Ruscio, David
Author_Institution
Telemark Inst. of Technol., Porsgrunn, Norway
fYear
2001
fDate
4-7 Sept. 2001
Firstpage
3592
Lastpage
3604
Abstract
Some proofs concerning a subspace identification algorithm are presented. It is proved that the Kalman filter gain and the noise innovations process can be identified directly from known input and output data without explicitly solving the Riccati equation. Furthermore, it is in general and for colored inputs, proved that the subspace identification of the states only is possible if the deterministic part of the system is known or identified beforehand. However, if the inputs are white, then, it is proved that the states can be identified directly. Some alternative projection matrices which can be used to compute the extended observability matrix directly from the data are presented. Furthermore, an efficient method for computing the deterministic part of the system is presented.
Keywords
Kalman filters; Riccati equations; matrix algebra; observability; state estimation; stochastic systems; Kalman filter gain; Riccati equation; alternative projection matrices; colored input; extended observability matrix; noise innovation process; state subspace identification; stochastic systems; subspace system identification; Equations; Europe; Kalman filters; Mathematical model; Noise; Technological innovation; Vectors; Identification methods; Linear systems; Sampled data systems; Stochastic systems; Subspace methods;
fLanguage
English
Publisher
ieee
Conference_Titel
Control Conference (ECC), 2001 European
Conference_Location
Porto
Print_ISBN
978-3-9524173-6-2
Type
conf
Filename
7076492
Link To Document