Academic Editor: M. D. S. Aliyu
Copyright © 2012 Bokyu Kwon and Soohee Han. This is an open access article distributed under the Creative Commons Attribution License, which permits unrestricted use, distribution, and reproduction in any medium, provided the original work is properly cited.
Abstract
We propose a least-mean-square (LMS) receding horizon (RH) estimator for state estimation. The proposed LMS RH estimator is obtained from the
conditional expectation of the estimated state given a finite number of inputs and outputs over the recent finite horizon. Any a priori state information is not required,
and existing artificial constraints for easy derivation are not imposed. For a general
stochastic discrete-time state space model with both system and measurement noise,
the LMS RH estimator is explicitly represented in a closed form. For numerical reliability, the iterative form is presented with forward and backward computations. It is shown through a numerical example that the proposed LMS RH estimator has better
robust performance than conventional Kalman estimators when uncertainties exist.