DocumentCode :
3686293
Title :
Online parameter and process covariance estimation using adaptive EKF and SRCuKF approaches
Author :
Mauro Hernán Riva;Daniel Beckmann;Matthias Dagen;Tobias Ortmaier
Author_Institution :
Institute of Mechatronic Systems, Leibniz Universitä
fYear :
2015
Firstpage :
1203
Lastpage :
1210
Abstract :
Two observers for joint parameter and state estimation are presented in this paper. The observers are based on the Extended Kalman Filter (EKF) or the Square Root Cubature Kalman Filter (SRCuKF) and a Recursive Predictive Error (RPE) method for state and parameter estimation, respectively. Sensitivity models are introduced to compute and minimize a cost functional and then recursively estimate parameter and process covariance values online. The algorithm performance is tested using simulation models of two test benches. Simulation results show that the novel method based on SRCuKF is more accurate than the adaptive EKF and gives improved results with stiff and highly nonlinear systems. A projection algorithm and an adaptive gain for the RPE are introduced to make the complete observer more stable.
Keywords :
"Covariance matrices","Sensitivity","Observers","Kalman filters","Permanent magnet motors","Adaptation models"
Publisher :
ieee
Conference_Titel :
Control Applications (CCA), 2015 IEEE Conference on
Type :
conf
DOI :
10.1109/CCA.2015.7320776
Filename :
7320776
Link To Document :
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