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A variable neighborhood search particle filter for bearings-only target tracking

机译:可变邻域搜索粒子滤波器,仅用于目标跟踪

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In this paper a novel filtering procedure that uses a variant of the variable neighborhood search (VNS) algorithm for solving nonlinear global optimization problems is presented. The base of the new estimator is a particle filter enhanced by the VNS algorithm in resampling step. The VNS is used to mitigate degeneracy by iteratively moving weighted samples from starting positions into the parts of the state space where peaks and ridges of a posterior distribution are situated. For testing purposes, bearings-only tracking problem is used, with two static observers and two types of targets: non-maneuvering and maneuvering. Through numerous Monte Carlo simulations, we compared performance of the proposed filtering procedure with the performance of several standard estimation algorithms. The simulation results show that the algorithm mostly performed better than the other estimators used for comparison; it is robust and has fast initial convergence rate. Robustness to modeling errors of this filtering procedure is demonstrated through tracking of the maneuvering target. Moreover, in the paper it is shown that it is possible to combine the proposed algorithm with an interacted multiple model framework.
机译:本文提出了一种新颖的过滤程序,该程序使用变量邻域搜索(VNS)算法的变体来解决非线性全局优化问题。新估算器的基础是通过VNS算法在重采样步骤中增强的粒子滤波器。 VNS用于通过将加权样本从起始位置迭代移动到状态空间中后部分布的峰和脊所在的部分来减轻退化。出于测试目的,使用了仅有轴承的跟踪问题,该问题具有两个静态观察者和两种类型的目标:非机动和机动。通过大量的蒙特卡洛模拟,我们将建议的过滤过程的性能与几种标准估计算法的性能进行了比较。仿真结果表明,该算法的性能优于其他用于比较的估计器。它功能强大且初始收敛速度快。通过跟踪机动目标,证明了该滤波过程建模误差的鲁棒性。而且,在本文中表明,可以将所提出的算法与交互的多模型框架相结合。

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