A generalized autocovariance least-squares method for Kalman filter tuning |
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Authors: | Bernt M. kesson, John Bagterp J rgensen, Niels Kj lstad Poulsen,Sten Bay J rgensen |
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Affiliation: | aCAPEC, Department of Chemical Engineering, Technical University of Denmark, DK-2800 Lyngby, Denmark;bInformatics and Mathematical Modelling, Technical University of Denmark, DK-2800 Lyngby, Denmark |
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Abstract: | This paper discusses a method for estimating noise covariances from process data. In linear stochastic state-space representations the true noise covariances are generally unknown in practical applications. Using estimated covariances a Kalman filter can be tuned in order to increase the accuracy of the state estimates. There is a linear relationship between covariances and autocovariance. Therefore, the covariance estimation problem can be stated as a least-squares problem, which can be solved as a symmetric semidefinite least-squares problem. This problem is convex and can be solved efficiently by interior-point methods. A numerical algorithm for solving the symmetric is able to handle systems with mutually correlated process noise and measurement noise. |
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Keywords: | Kalman filtering Covariance estimation Optimal estimation State estimation Semidefinite programming |
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