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A new maneuvering target tracking method using adaptive cubature Kalman filter

机译:自适应库曼卡尔曼滤波的机动目标跟踪新方法

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The cubature Kalman filter algorithm needs to know the statistical characteristic. When tracking a target, the algorithm may result in a divergence because of an unknown noise. This paper proposes an adaptive cubature Kalman filter based on cubature Kalman filter and Sage-Husa estimator. The proposed algorithm brings a Sage-Husa estimator in the cubature Kalman filter algorithm, so it can estimates the statistical parameters of unknown system and observation noise in real time, refrain the algorithm from divergence. The proposed algorithm can also decrease the tracking error due to unknown noise, and increase the accuracy and numerical stability effectively. According to the simulation result, the ACKF algorithm has a satisfactory performance, and has better accuracy and numerical stability comparing with UKF algorithm and CKF algorithm.
机译:孵化器卡尔曼滤波算法需要了解统计特征。跟踪目标时,由于未知噪声,该算法可能会导致发散。提出了一种基于库尔曼卡尔曼滤波器和Sage-Husa估计的自适应库尔曼卡尔曼滤波器。该算法在库尔曼滤波算法中引入了Sage-Husa估计,可以实时估计未知系统的统计参数和观测噪声,避免了算法的发散。所提出的算法还可以减少由于未知噪声引起的跟踪误差,并有效地提高了精度和数值稳定性。根据仿真结果,与UKF算法和CKF算法相比,ACKF算法具有令人满意的性能,并且具有更好的精度和数值稳定性。

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