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Feature aided Monte Carlo probabilistic data association filter for ballistic missile tracking

机译:特征辅助蒙特卡洛概率数据关联过滤器,用于弹道导弹跟踪

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The problem of ballistic missile tracking in the presence of clutter is investigated. Probabilistic data association filter (PDAF) is utilized as the basic filtering algorithm. We propose to use sequential Monte Carlo methods, i.e., particle filters, aided with amplitude information (AI) in order to improve the tracking performance of a single target in clutter when severe nonlinearities exist in the system. We call this approach "Monte Carlo probabilistic data association filter with amplitude information (MCPDAF-AI)." Furthermore, we formulate a realistic problem in the sense that we use simulated radar cross section (RCS) data for a missile warhead and a cylinder chaff using Lucernhammer1, a state of the art electromagnetic signature prediction software, to model target and clutter amplitude returns as additional amplitude features which help to improve data association and tracking performance. A performance comparison is carried out between the extended Kalman filter (EKF) and the particle filter under various scenarios using single and multiple sensors. The results show that, when only one sensor is used, the MCPDAF performs significantly better than the EKF in terms of tracking accuracy under severe nonlinear conditions for ballistic missile tracking applications. However, when the number of sensors is increased, even under severe nonlinear conditions, the EKF performs as well as the MCPDAF.
机译:研究了在杂波情况下弹道导弹的跟踪问题。概率数据关联过滤器(PDAF)被用作基本过滤算法。我们建议使用顺序蒙特卡罗方法,即带有幅度信息(AI)的粒子滤波器,以在系统中存在严重非线性时改善杂波中单个目标的跟踪性能。我们称这种方法为“带振幅信息的蒙特卡洛概率数据关联滤波器(MCPDAF-AI)”。此外,在某种意义上,我们提出了一个现实问题,即我们使用最先进的电磁特征预测软件Lucernhammer1将模拟雷达横截面(RCS)数据用于导弹战斗部和圆柱壳,以对目标和杂波振幅返回进行建模其他幅度功能,有助于改善数据关联和跟踪性能。使用单个和多个传感器,在各种情况下,在扩展卡尔曼滤波器(EKF)和粒子滤波器之间进行了性能比较。结果表明,当仅使用一个传感器时,在弹道导弹跟踪应用中,在严重的非线性条件下,MCPDAF的跟踪精度明显优于EKF。但是,当传感器数量增加时,即使在严酷的非线性条件下,EKF的性能也与MCPDAF相同。

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