Title :
Design aspects of a continuous-time tracking filter
Abstract :
Continuous-time tracking filters based on the two-state exponentially correlated velocity (ECV) model are discussed, in which a correlation parameter is used to give the velocity an exponential correlation. It is shown that the correlation parameter in the model causes additional deterministic steady-state filter errors. For a given bandwidth, the performance declines with the correlation parameter even in the Kalman algorithm covariance sense. The covariance obtained from measurement noise only is also given and compared with the Kalman algorithm covariance. The paper illustrates, in a simple case, that a reasonable model extension from the Kalman filtering point of view could give a worse filter performance. The results are obtained by using filter transfer functions.
Keywords :
Kalman filters; continuous time filters; control system synthesis; correlation methods; filtering theory; transfer functions; ECV; Kalman algorithm covariance; Kalman filtering; bandwidth; continuous time tracking filter; correlation parameter; exponential correlation; exponentially correlated velocity; filter transfer functions; measurement noise; steady state filter errors;
Journal_Title :
Control Theory and Applications, IEE Proceedings -
DOI :
10.1049/ip-cta:20040006