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Publication:
Cao, L. and Schwartz, H.M., "Analysis of the Kalman Filter Based
Estimation Algorithm: An Orthogonal Decomposition Approach" |
Abstract:
In this paper we shall provide new analysis on some fundamental
properties of the Kalman filter based parameter estimation algorithms
using an orthogonal decomposition approach based on the excited
subspace. A theoretical analytical framework is established based on the
decomposition of the covariance matrix, which appears to be very useful
and effective in the analysis of a parameter estimation algorithm with
the existence of an unexcited subspace. The sufficient and necessary
condition for the boundedness of the covariance matrix in the Kalman
filter is established. The idea of directional tracking is proposed to
develop a new class of algorithms to overcome the windup problem. Based
on the orthogonal decomposition approach two kinds of directional
tracking algorithms are proposed. These algorithms utilize a
time-varying covariance matrix and can keep stable even in the case of
unsufficient and/or unbounded excitation. PDF
Key Words: Kalman filter, recursive parameter estimation, least squares algorithm, windup, directional tracking. |