Title
Robust Recursive State Estimation with Random Measurement Droppings
Abstract
A recursive state estimation procedure is derived for a linear time varying system with both parametric uncertainties and stochastic measurement droppings. This estimator has a similar form as that of Kalman filter with intermittent observations, but its parameters should be adjusted when a plant output measurement arrives. A new recursive form is derived for the pseudo-covariance matrix of estimation errors. Based on a Riemannian metric for positive definite matrices, some necessary and sufficient conditions have been obtained for the strict contractiveness of this recursion. It has also been proved that under some controllability and observability conditions, as well as some weak requirements on measurement arrival probability, the update gain of this recursive robust state estimator and the mean of its squared estimation errors converge in probability one respectively to a corresponding stationary distribution. Numerical simulation results show that estimation accuracy of the suggested procedure is more robust against parametric modelling errors than Kalman filter.
Year
DOI
Venue
2016
10.1109/TAC.2015.2437524
IEEE Transactions on Automatic Control
Keywords
Field
DocType
Covariance matrices,Kalman filters,Robustness,State estimation,Cost function,Estimation error,Measurement uncertainty
Convergence of random variables,Extended Kalman filter,Mathematical optimization,Observability,Control theory,Recursive Bayesian estimation,Kalman filter,Parametric statistics,Invariant extended Kalman filter,Mathematics,Estimator
Journal
Volume
Issue
ISSN
PP
99
0018-9286
Citations 
PageRank 
References 
3
0.40
14
Authors
1
Name
Order
Citations
PageRank
Tong Zhou144876.83