基于人工鱼算法的局部环粒子滤波

Jian Yu, Xinyu Li, Guilan Luo
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引用次数: 0

摘要

针对非线性动态系统,提出了一种新的滤波方法——基于人工鱼算法的局部环粒子滤波。粒子滤波算法已广泛应用于求解非线性/非高斯滤波问题。提议的分布是粒子滤波的关键问题,对算法的性能有很大的影响。在本文提出的LPF-AF算法中,利用AF的局部搜索来再生样本粒子,使提案分布更接近海报分布。该滤波器主要分为两个步骤。在LPFAF的第一步,采用扩展卡尔曼滤波作为建议分布生成粒子,然后计算建议分布的均值和方差。在第二步中,一些粒子向具有最大质量的粒子移动。将所提出的LPF-AF算法与其他几种滤波算法进行了比较,实验结果表明,LPF-AF算法的均值和方差均低于其他滤波算法。关键词滤波算法,粒子滤波,扩展卡尔曼滤波,人工鱼算法
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A New Local-Loop Particle Filter Based on the Artificial Fish Algorithm
In this paper, we proposed a novel filtering method – Local-loop Particle Filter Based on the Artificial Fish Algorithm (LPF-AF) for nonlinear dynamic systems. Particle filtering algorithm has been widely used in solving nonlinear/non Gaussian filtering problems. The proposal distribution is the key issue of the particle filtering, which will greatly influence the performance of algorithm. In the proposed LPF-AF, the local searching of AF is used to regenerate sample particles, which can make the proposal distribution more closed to the poster distribution. There are mainly two steps in the proposed filter. In the first step of LPFAF, extended kalman filter was used as proposal distribution to generate particles, then means and variances of the proposal distribution can be calculated. In the second step, some particles move to toward the particle with the biggest weights. The proposed LPF-AF algorithm was compared with other several filtering algorithms and the experimental results show that means and variances of LPF-AF are lower than other filtering algorithms. Keywordsfiltering algorithm, particle filtering, extended Kalman filter, artificial fish alorgithm
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