DocumentCode
1139979
Title
Optimum Steady-State Position and Velocity Estimation Using Noisy Sampled Position Data
Author
Friedland, Bernard
Author_Institution
The Singer Company Kearfott Research Center Little Falls, N.J. 07424
Issue
6
fYear
1973
Firstpage
906
Lastpage
911
Abstract
The Kalman filtering technique is used to obtain analytical expressions for the optimum position and velocity accuracy that can be achieved in a navigation system that measures position at uniform sampling intervals of T seconds through random noise with an rms value of ¿x. A one-dimensional dynamic model, with piecewise-constant acceleration assumed, is used in the analysis, in which analytic expressions for position and velocity accuracy (mean square), before and after observations, are obtained. The errors are maximum immediately before position measurements are made. The maximum position error, however, can be bounded by the inherent sensor error by use of a sufficiently high sampling rate, which depends on the sensor accuracy and acceleration level. The steady-state Kalman filter for realizing the optimum estimates consists of a double integrator, the initial conditions of which are reset at each observation.
Keywords
Acceleration; Filtering; Kalman filters; Position measurement; Sampling methods; State estimation; Steady-state; Vehicle dynamics; Velocity measurement; Zinc;
fLanguage
English
Journal_Title
Aerospace and Electronic Systems, IEEE Transactions on
Publisher
ieee
ISSN
0018-9251
Type
jour
DOI
10.1109/TAES.1973.309666
Filename
4103237
Link To Document