Extended Kalman Filter based fusion of reliable sensors using fuzzy logic

Tanmoy Das, P. A. D. Harischandra, A. Abeykoon
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引用次数: 4

Abstract

Precise localization for autonomous robots is necessary for advancement in the world of unmanned robotics. Probabilistic algorithms are used to fuse multiple position sensors in order to locate a robot. But failure of any sensor in this process drastically lowers the performance of these algorithms. Here comes the need to facilitate these probabilistic models with intelligence. This paper presents an intelligent localization technique for autonomous maneuvering of robots. Localization of the robot is done by fusing three different types of position sensors using an Extended Kalman Filter (EKF) and a Kalman Filter (KF). The fusing method is made intelligent by keeping track of the relative error among the sensors and deciding a reliability factor on each sensor accordingly. A Fuzzy inference model has been adopted to predict the reliability factor for each sensor. According to the predicted reliability of each sensor, an error covariance matrix is set up, which is fed into the traditional KF and EKF algorithms. This helps the fusion algorithms to fuse the sensors intelligently and the final output is more accurate. A high precision localization is achieved by this intelligent method of fusing. A simulation is carried out in MATLAB considering three position sensors. The simulation is validated by making one of the sensors erroneous and comparing the output results of the new fusion algorithm with the traditional algorithm.
基于扩展卡尔曼滤波的模糊逻辑可靠传感器融合
自主机器人的精确定位是无人机器人领域发展的必要条件。利用概率算法融合多个位置传感器,实现对机器人的定位。但在此过程中任何传感器的故障都会大大降低这些算法的性能。这就需要用智能来促进这些概率模型。提出了一种用于机器人自主机动的智能定位技术。机器人的定位是通过使用扩展卡尔曼滤波器(EKF)和卡尔曼滤波器(KF)融合三种不同类型的位置传感器来完成的。通过跟踪传感器之间的相对误差,确定每个传感器的可靠性系数,使融合方法智能化。采用模糊推理模型对各传感器的可靠性系数进行预测。根据各传感器的预测可靠性,建立误差协方差矩阵,并将其输入到传统的KF和EKF算法中。这有助于融合算法对传感器进行智能融合,使最终输出更加准确。这种智能融合方法可实现高精度定位。在MATLAB中对三个位置传感器进行了仿真。通过对其中一个传感器的误差进行仿真验证,并将新融合算法的输出结果与传统算法的输出结果进行比较。
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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