非线性状态估计的交叉外推粒子滤波

Taku Sasaki, I. Ono
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引用次数: 1

摘要

本文提出了一种新的粒子滤波器,称为交叉外推粒子滤波器(PF- xc),用于估计动力系统的状态向量。动态系统的状态向量估计是机器人、统计学和海洋气象学等工程领域中经常出现的重要问题之一。交叉插值粒子滤波器(PF- ic)是一种很有前途的滤波器,它克服了原有滤波器存在的问题,通过对粒子进行插值,在真态周围获得高密度的系综。特别是在粒子数量较少的情况下,PF- ic表现出比PF更好的性能。但是,PF-IC存在一个严重的问题,即当整体不能覆盖真实状态时,PF-IC的性能会下降。我们认为这是因为当聚合体没有覆盖真态时,PF-IC不能在真态周围产生粒子。为了解决PF-IC的问题,PF-XC外推粒子以各向同性的方式获得覆盖真实状态的扩展系综。为了研究PF- xc在不覆盖真态的情况下是否有效,我们在两个具有非线性动力学模型的基准问题上比较了PF- xc与PF- ic、PF和PF最著名的扩展之一合并粒子滤波器(MPF)的性能。因此,我们确认PF- xc优于PF- ic, PF和MPF。在中位数均方根误差方面,PF-XC的性能比PF-IC高出约8倍。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Particle filter with extrapolation by crossover for nonlinear state estimation
This paper proposes a new particle filter (PF) named the particle filter with extrapolation by crossover (PF-XC) for estimating state vectors of dynamical systems. Estimating state vectors of dynamical systems is one of the most important problems that often appears in the wide area of engineering such as robotics, statistics and marine meteorology. The particle filter with interpolation by crossover (PF-IC) is one of the most promising PFs that overcomes a problem of the original PF. PF-IC interpolates particles to obtain an ensemble with high density around the true state. PF-IC shows better performance than PF especially when the number of particles in an ensemble is small. However, PF-IC has a serious problem in that the performance of PF-IC deteriorates when the ensemble does not cover the true state. We believe that this is because PF-IC cannot create particles around the true state when the ensemble does not cover the true state. In order to remedy the problem of PF-IC, PF-XC extrapolates particles to obtain an expanded ensemble in an isotropic manner that covers the true state. In order to investigate that PF-XC effectively works even if ensembles do not cover true states, we compared the performance of PF-XC and that of PF-IC, PF and the merging particle filter (MPF) which is one of the most famous extensions of PF on two benchmark problems that have nonlinear dynamics models. As the result, we confirmed that PF-XC outperformed PF-IC, PF and MPF. PF-XC showed up to about eight times better performance than that of PF-IC in terms of the median root mean squared error.
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