4.6 Article

Adaptive Markov IMM Based Multiple Fading Factors Strong Tracking CKF for Maneuvering Hypersonic-Target Tracking

期刊

APPLIED SCIENCES-BASEL
卷 12, 期 20, 页码 -

出版社

MDPI
DOI: 10.3390/app122010395

关键词

hypersonic target; cubature Kalman filter; strong tracking filtering; fading factor; adaptive interactive multiple model

资金

  1. National Natural Science Foundation of China [61805283]

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This paper proposes a strong tracking cubature Kalman filter adaptive interactive multi-model algorithm for the tracking of hypersonic targets. By introducing fading factors and singular value decomposition, the algorithm improves tracking accuracy and convergence speed.
Hypersonic targets have complex motion states and high maneuverability. The traditional interactive multi-model (IMM) has low tracking accuracy and a slow convergence speed. Therefore, this paper proposes a strong tracking cubature Kalman filter (CKF) adaptive interactive multi-model (AIMM) based on multiple fading factors. Firstly, this paper analyzes the structure of the CKF algorithm, introduces the fading factor of the strong tracking algorithm into the covariance matrix of the time update and measurement update, and adjusts the filter gain online and in real time, which can reduce the decline infilter accuracy caused by model mismatch. Secondly, Singer model, current statistical (CS) model, and Jerk model are selected in the model set of IMM and introduced singular value decomposition (SVD) decomposition to solve the problem that Cholesky decomposition cannot be performed in the CKF due to the model dimension expansion. Last, an adaptive algorithm for the Markov matrix in the IMM is proposed. The transition probability was adaptively modified by the value of the model likelihood function to enhance the proportion of matching models. The simulation results show that the proposed algorithm enhanced the proportion of matching models in the IMM and improved the tracking accuracy by 16.51% and the convergence speed by 37.5%.

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