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Performance of kalman filter with missing measurements

โœ Scribed by Hamid M. Faridani


Publisher
Elsevier Science
Year
1986
Tongue
English
Weight
325 KB
Volume
22
Category
Article
ISSN
0005-1098

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โœฆ Synopsis


Al~traet--The purpose of this Brief Paper is to study the performance of a discrete time Kalman filter when a non-zero probability exists that some of the measurements will not be available, i.e. missing, with the probability of occurrence of such cases being available to the estimator a priori. For the situation described, the time history of the error covariance matrix will be different for each possible measurement sequence. A useful measure for the filters performance is the expected value of the error covariance, which is found to be not self-propagating. However, equations for upper and lower bounds for the error covariance expected value, which are self-propagating, have been developed.


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