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IMM algorithm based on $H_{infty}$ filter for maneuvering target tracking
LIU Mei-Qin, WANG Xie
College of Electrical Engineering, Zhejiang University, Hangzhou 310027
*Correspondence author
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Funding: Specialized Research Fund for the Doctoral Program of Higher Education of China (No.No. 20120101110115)
Opened online:19 May 2016
Accepted by: none
Citation: LIU Mei-Qin, WANG Xie.IMM algorithm based on $H_{infty}$ filter for maneuvering target tracking[OL]. [19 May 2016] http://en.paper.edu.cn/en_releasepaper/content/4689341
 
 
Correct knowledge of noise statistics is essential for an effective estimator in maneuvering target tracking. In practice, however, the noise statistics are usually unknown or not perfectly known. To deal with the estimation problem in linear discrete-time systems with Markov jump parameters, where the measurement noise covariance is unknown, a novel approach is presented in this paper. This approach is based on the interacting multiple model (IMM) framework. An $H_{infty}$ filter is employed to construct a noise statistics estimator to obtain the information which is necessary for the IMM algorithm. In our approach, even the priori knowledge of noise statistics is not needed. The noise statistics loss problem is solved while the merits of IMM algorithm is reserved. The effectiveness of the proposed approach is demonstrated in comparison with single-model $H_{infty}$ filter through Monte Carlo simulation for maneuvering target tracking.
Keywords:State estimation, Maneuvering target tracking, $H_{infty}$ filter, Interacting multiple model
 
 
 

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