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Model-set adaptation using a fuzzy Kalman filter

✍ Scribed by Zhen Ding; Henry Leung; Keith Chan; Zhiwen Zhu


Publisher
Elsevier Science
Year
2001
Tongue
English
Weight
868 KB
Volume
34
Category
Article
ISSN
0895-7177

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✦ Synopsis


In

this paper, a fuzzy Kalman filter (KF) is proposed to combat the model-set adaptation problem of multiple model estimation. The fuzzy KF is found to be able to more exactly extract dynamic information of target maneuvers. It uses a set of fuzzy rules to adaptively control the process noise covariance of the KF and that makes it more suitable for real radar tracking. The proposed fuzzy;Kalman filter is then incorporated into an interacting multiple model (IMM) algorithm, hence, a fuzzy IMM (FIMM) algorithm is obtained. The performance of the FIMM algorithm is compared with that of an adaptive IMM (AIMM) algorithm using real radar data. Simulation result shows that the FIMM algorithm greatly outperforms the AIMM algorithm in terms of both the root mean square prediction error and the number of track loss.


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## Abstract When an adaptive antenna is used for a mobile station in a vehicle, it is necessary to quickly adapt the weight coefficients for a changing electromagnetic environment. In this paper, for a nonstationary state in which the signal arrival direction changes as the vehicle moves, the dynam