Abstract

Several recursive algorithms for online, combined state and parameter estimation in nonlinear state-space models are discussed in this paper. Well-known algorithms such as the extended Kalman filter and alternative formulations of the recursive prediction error method are included, as well as a new method based on a line-search strategy. A comparison of the algorithms illustrates that they are very similar although the differences can be important for the online tracking capabilities and robustness. Simulation experiments on a simple nonlinear process show that the performance under certain conditions can be improved by including a line-search strategy.

Details

Title
Recursive prediction error methods for online estimation in nonlinear state-space models
Author
Ljungquist, Dag; Balchen, Jens G
First page
109
Publication year
1994
Publication date
1994
Publisher
Norsk Forening for Automatisering (NFA)
ISSN
03327353
e-ISSN
18901328
Source type
Scholarly Journal
Language of publication
English
ProQuest document ID
1024691970
Copyright
Copyright Norsk Forening for Automatisering (NFA) 1994