SLAM of Mobile Robot for Wireless Communication Based on Improved Particle Filter

Daixian Zhu, Mingbo Wang, Mengyao Su, Shulin Liu, Ping Guo
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引用次数: 1

Abstract

The mobile robot is moved by receiving instructions through wireless communication, and the particle filter is used to simultaneous localization and mapping. Aiming at the problem of the degradation of particle filter weights and loss of particle diversity, which leads to the decrease of filter accuracy, this paper uses the plant cell swarm algorithm to optimize the particle filter. First of all, combining the characteristics of plant cells that affect the growth rate of cells when the auxin content changes due to light stimulation realizes the optimization of the particles after importance sampling, so that they are concentrated in the high-likelihood area, and the problem of particle weight degradation is solved. Secondly, in the process of optimizing particle distribution, the auxin content of each particle is different, which makes the optimization effect on each particle different, so it effectively solves the problem of particle diversity loss. Finally, a simulation experiment is carried out. During the experiment, the robot moves by receiving control commands through wireless communication. The experimental results show that the algorithm effectively solves the problem of particle weight degradation and particle diversity loss and improves the filtering accuracy. The improved algorithm is verified in the simultaneous localization and mapping of the robot, which effectively improves the robot’s performance at the same time positioning accuracy. Compared with the classic algorithm, the robot positioning accuracy is increased by 49.2%. Moreover, the operational stability of the algorithm has also been improved after the improvement.
基于改进粒子滤波的移动机器人无线通信SLAM
移动机器人通过无线通信接收指令进行移动,并利用粒子滤波进行同步定位和映射。针对粒子滤波器权值下降和粒子多样性丧失导致滤波精度下降的问题,采用植物细胞群算法对粒子滤波器进行优化。首先,结合植物细胞因光照刺激生长素含量发生变化时影响细胞生长速度的特点,实现重要采样后的颗粒优化,使其集中在高似然区域,解决颗粒重量降解问题。其次,在优化颗粒分布的过程中,每个颗粒的生长素含量不同,使得对每个颗粒的优化效果不同,因此有效地解决了颗粒多样性损失的问题。最后,进行了仿真实验。在实验过程中,机器人通过无线通信接收控制命令来移动。实验结果表明,该算法有效地解决了粒子权重退化和粒子多样性损失问题,提高了滤波精度。在机器人的同步定位和映射中验证了改进算法,有效地提高了机器人的性能同时定位精度。与经典算法相比,机器人定位精度提高了49.2%。此外,改进后的算法的运行稳定性也得到了提高。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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