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Robust proportional-integral Kalman filter design using a convex optimization method Kunsoo Huh
The Journal of Mechanical Science and Technology, vol. 22, no. 5, pp.879-886, 2008
Abstract : This paper proposes a design approach to the robust proportional-integral Kalman filter for stochastic linear systems
under convex bounded parametric uncertainty, in which the filter has a proportional loop and an integral loop of the
estimation error, providing a guaranteed minimum bound on the estimation error variance for all admissible uncertainties.
The integral action is believed to increase steady-state estimation accuracy, improving robustness against uncertainties
such as disturbances and modeling errors. In this study, the minimization problem of the upper bound of estimation
error variance is converted into a convex optimization problem subject to linear matrix inequalities, and the
proportional and the integral Kalman gains are optimally chosen by solving the problem. The estimation performance
of the proposed filter is demonstrated through numerical examples and shows robustness against uncertainties, addressing
the guaranteed performance in the mean square error sense.
Keyword :
Proportional-integral observer; Kalman filter; Convex optimization; Robustness
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