Identification of measurement and maneuver noise in α-β target tracking systems
Abstract
This paper addresses the problem of estimating the variances of maneuver and masurement noise in α-β Target Tracking Systems. A switching modeling process augments the original tracking states with the maneuver and measurement noise states which leads to noise tracks generated by the α-β target tracker. It is shown that noise variance estimates can be obtained by using noise track estimate variances and the corresponding error covariance terms. Since the optimal state and its error are orthogonal, it is easily shown that the noise track error covariance and the estimated noise track variance may be algebraically combined to provide estimates of the unkmown variance of the maneuver and measurement input noise processes. Closed form, steady state performances, i.e., the noise states error covariance terms, as well as solutions for the estimated state variances for an α-β tracker are obtained. Using these solutions, the concept of Noise Variance Observability is introduced. For the α-β tracker, it is possible to show the conditions under which the time sequence measurement or maneuver noise states can be directly estimated.
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