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Robust filtering with randomly delayed measurements and its application to ballistic target tracking in boost phase

机译:随机延迟测量的强大滤波及其在升压阶段中的弹道目标跟踪中的应用

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摘要

Motivated by the performance degradation of High-degree Cubature Kalman Filtering (HCKF) in coping with randomly delayed measurements in non-Gaussian system, a novel robust filtering named as Randomly Delayed High-degree Cubature Huber-based Filtering (RD-HCHF) is proposed in this paper. At first, the system model is re-written by the Bernoulli random variables to describe the randomly delayed measurements. Then, the Randomly Delayed HCKF (RD-HCKF) is derived based on the rewritten system model and 5th-degree spherical-radial cubature (SRC) rule. In order to enhance the robustness of the filter in glint noise case, the measurement update of RD-HCKF is modified by the Huber technique, which is essentially an M-estimator. Therefore, the proposed RD-HCHF is not only robust to the randomly delayed measurements, but also robust to the glint noise. In addition, the RD-HCHF is applied to the ballistic target tracking in boost phase, and the Gravity-Turn (GT) model is taken as the target model. Finally, the simulation is conducted and the tracking performance of RD-HCHF is compared with that of HCKF, RD-HCKF and High-degree Cubature Huber-based Filtering (HCHF). The results clearly confirm the superiority of the RD-HCHF.
机译:通过高度Cubature Kalman滤波(HCKF)在应对非高斯系统中的随机延迟测量中的性能下降的动机,提出了一种名为随机延迟的高度Cubature Huber的过滤(RD-HCHF)的新型鲁棒滤波在本文中。首先,通过伯努利随机变量重写系统模型来描述随机延迟的测量。然后,基于重写的系统模型和第五级球辐射级别(SRC)规则来导出随机延迟的HCKF(RD-HCKF)。为了增强闪光噪声情况下过滤器的稳健性,Huber技术修改了RD-HCKF的测量更新,这基本上是M估计器。因此,所提出的RD-HCHF不仅对随机延迟的测量而鲁棒,而且对闪光噪声稳健。另外,将RD-HCHF应用于升压阶段的弹道目标跟踪,并将重力转(GT)模型作为目标模型。最后,进行了模拟,并将RD-HCHF的跟踪性能与HCKF,RD-HCKF和高级级Huber的滤波(HCHF)进行了比较。结果清楚地证实了RD-HCHF的优越性。

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