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An integrated weights particle filter algorithm based on correlation particle estimation and sequential importance re-sampling

机译:基于相关粒子估计和顺序重要性重采样的集成权重粒子滤波算法

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In this paper, a new integrated weight particle filter (IWPF) algorithm is proposed based on the combination of correlation particle estimation (CPE) weight and sequential importance re-sampling (SIR) weight. This method can reduce degeneracy phenomenon and re-sampling times of traditional particle filter. By choosing the typical nonlinear system model, the simulation results show that IWPF performs better than CPE and SIR. In our simulation case, this method can provide a 15% increase of accuracy in state estimation and a 30% decrease of re-sampling times.
机译:本文结合相关粒子估计权重和顺序重要性重采样权重,提出了一种新的综合权重粒子滤波算法。该方法可以减少传统粒子滤波器的简并现象和重采样次数。通过选择典型的非线性系统模型,仿真结果表明,IWPF的性能优于CPE和SIR。在我们的仿真情况下,这种方法可以使状态估计的准确度提高15%,使重采样时间减少30%。

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