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首页> 外文期刊>IEEE Transactions on Aerospace and Electronic Systems >Equivalent-Model Augmentation for Variable-Structure Multiple-Model Estimation
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Equivalent-Model Augmentation for Variable-Structure Multiple-Model Estimation

机译:可变结构多模型估计的等效模型增强

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摘要

A variable-structure multiple-model (VSMM) approach, named equivalent-model augmentation (EqMA), is proposed. Here the model set is augmented by a variable model intended to best match the unknown true mode. To fully utilize the information provided by model sequences (model histories), this variable model depends on the true mode at the previous time. Thus different previous models correspond to different augmenting models. To make the estimation process computationally feasible, the unknown variable model at the previous time is approximated by an equivalent model (EqM) which provides the closest estimation results in the sense of minimum Kullback-Leibler (KL) divergence. EqM also contains the online information provided by the measurements. Performance of the proposed EqMA approach is evaluated via two scenarios of maneuvering target tracking. Simulation results demonstrate the effectiveness of EqMA compared with the interacting multiple-model (IMM) algorithm and the expected-mode augmentation (EMA) algorithm.
机译:提出了一种变结构多模型(VSMM)方法,称为等效模型增强(EqMA)。在此,模型集由旨在最匹配未知真实模式的变量模型增强。为了充分利用模型序列(模型历史)提供的信息,此变量模型取决于上一次的真实模式。因此,不同的先前模型对应于不同的扩充模型。为了使估算过程在计算上可行,前一时间的未知变量模型由等效模型(EqM)近似,该模型在最小Kullback-Leibler(KL)散度的意义上提供了最接近的估算结果。 EqM还包含测量提供的在线信息。通过两种机动目标跟踪方案评估了所提出的EqMA方法的性能。仿真结果表明,与交互多模型(IMM)算法和预期模式增强(EMA)算法相比,EqMA的有效性。

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