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Hybrid grid multiple-model estimation with application to maneuvering target tracking

机译:混合网格多模型估计及其在机动目标跟踪中的应用

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摘要

Estimation for discrete-time stochastic systems with parameters varying in a continuous space is considered in this paper. Justified by an analysis of model approximation, a novel approach, called hybrid grid multiple model (HGMM), is proposed for state estimation. The model set used by HGMM is a combination of a fixed coarse grid and an adaptive fine grid to cover the mode space with a relatively small number of models. Next, two fundamental problems of the HGMM approach???model-set sequence-conditioned estimation and design of adaptive fine models???are addressed. Then, based on two model-set designs by moment matching, HGMM estimation algorithms are presented. Finally, performance of the developed HGMM estimation algorithms is evaluated on benchmark tracking scenarios, and simulation results demonstrate their superiority to the state-of-the-art MM estimation algorithms in terms of accuracy and computational complexity.
机译:本文考虑了参数在连续空间中变化的离散时间随机系统的估计。通过模型近似分析的合理性,提出了一种称为混合网格多模型(HGMM)的状态估计新方法。 HGMM使用的模型集是固定的粗网格和自适应的精细网格的组合,以相对较少的模型覆盖模式空间。接下来,解决了HGMM方法的两个基本问题,即模型集序列条件估计和自适应精细模型的设计。然后,基于矩矩匹配的两个模型集设计,提出了HGMM估计算法。最后,在基准跟踪场景下评估了开发的HGMM估计算法的性能,仿真结果证明了它们在准确性和计算复杂性方面优于最新的MM估计算法。

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