一种用于状态估计的加权粒子滤波器

Chengyuan Sun, Xinrui Shen, Jian Hou, Zhiyong She
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引用次数: 0

摘要

粒子滤波是一种有效的非线性非高斯系统状态估计技术。然而,PF的一个严重问题是重采样。本文从遗传算法的选择算子的启发出发,提出了一种加权粒子滤波器(WPF)来解决粒子滤波器中常见的粒子贫困化问题。WPF的权值分为两部分,用大权值代替小权值。在此策略中,重采样过程后,更多的粒子能够参与后验分布的近似。从而使状态估计的结果更加准确。同时,WPF具有相当低的计算负担。最后,通过两个仿真算例验证了该方法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A weights particle filter for state estimation
The particle filter (PF) is an effective technique for state estimation in the nonlinear and non-Gaussian systems. However, one serious problem of PF is resampling. In this study, a weights PF (WPF) is proposed to mitigate the particle impoverishment problem common in PF. The WPF is inspired by the selection operator of genetic algorithm (GA). The weights of WPF are divided into two parts, and the large weights are used to replace the small ones. In this strategy, more particles are able to participate in the approximation of the posterior distribution after the procedure of resampling. Consequently, the results of state estimation can be more accurate. Meanwhile, the WPF has fairly low computational burden. Finally, the effectiveness of the proposed technique is verified by two simulation examples.
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