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A localization algorithm for autonomous mobile robots via a fuzzy tuned extended Kalman filter

机译:基于模糊调谐扩展卡尔曼滤波器的自主移动机器人定位算法

摘要

The capability to acquire the position and orientation of an autonomous mobile robot is an important element for achieving specific tasks requiring autonomous exploration of the workplace. In this paper, we present a localization method that is based on a fuzzy tuned extended Kalman filter (FT-EKF) without a priori knowledge of the state noise model. The proposed algorithm is employed in a mobile robot equipped with 16 Polaroid sonar sensors and tested in a structured indoor environment. The state noise model is estimated and adapted by a fuzzy rule-based scheme. The proposed algorithm is compared with other EKF localization methods through simulations and experiments. The simulation and experimental studies demonstrate the improved performance of the proposed FT-EKF localization method over those using the conventional EKF algorithm.
机译:获得自主移动机器人的位置和方向的能力是完成需要对工作场所进行自主探索的特定任务的重要要素。在本文中,我们提出了一种基于模糊调谐扩展卡尔曼滤波器(FT-EKF)的定位方法,而无需事先了解状态噪声模型。所提出的算法在配备16个宝丽来声纳传感器的移动机器人中采用,并在结构化室内环境中进行了测试。状态噪声模型通过基于模糊规则的方案进行估计和调整。通过仿真和实验,将该算法与其他EKF定位方法进行了比较。仿真和实验研究证明了所提出的FT-EKF本地化方法的性能优于使用传统EKF算法的方法。

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