DocumentCode
1139905
Title
Stability of Parameter Estimates for a Gaussian Process
Author
Scharf, Louis L. ; Lytle, Dean W.
Author_Institution
Colorado State University Fort Collins, Colo. 80521
Issue
6
fYear
1973
Firstpage
847
Lastpage
851
Abstract
Maximum-likelihood estimates for the levels of the mean value function and the covariance function of a Gaussian random process are investigated. The stability of these estimates is examined as the actual covariance function of the process deviates from the form assumed in the estimators. It is found that the time-bandwidth product for stationary processes represents an upper bound on the number of estimator terms that can be safely used when estimating with uncertainty about the process covariance function. This result is consistent with other interpretations of the time-bandwidth product and tempers the conclusion that, in principle, an infinite number of estimator terms can be used to obtain a perfect estimate of the covariance level. In practice, the estimate of the level can never be perfect, and the accuracy of the estimate depends on the observation interval. Finally, conditions are established to ensure asymptotic stability of the estimates and physical interpretations are presented.
Keywords
Detectors; Gaussian processes; Maximum likelihood detection; Maximum likelihood estimation; Parameter estimation; Random processes; Stability; State estimation; Uncertainty; Upper bound;
fLanguage
English
Journal_Title
Aerospace and Electronic Systems, IEEE Transactions on
Publisher
ieee
ISSN
0018-9251
Type
jour
DOI
10.1109/TAES.1973.309658
Filename
4103229
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