基于扩展卡尔曼滤波的间歇测量移动机器人定位

H. Ahmad, T. Namerikawa
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引用次数: 78

摘要

本文通过分析测量创新特性,对基于扩展卡尔曼滤波(EKF)的间歇测量移动机器人定位进行了理论研究。在移动机器人观测过程中,即使无法获得测量数据和存在不确定性,移动机器人也可以有效地估计其在环境中的位置。本文通过对测量创新的分析,给出了估计的不确定度界,以保证在某些测量数据丢失的情况下保持较好的估计。通过对EKF的理论分析,论证了问题发生的条件。通过对测量创新的分析,发现雅可比变换是影响估计性能的主要因素之一。此外,初始状态协方差、过程噪声和测量噪声必须保持较小,才能获得较好的估计结果。仿真和实验结果与本文所提出的一致。
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Extended Kalman filter-based mobile robot localization with intermittent measurements
In this paper, a theoretical study on extended Kalman filter (EKF)-based mobile robot localization with intermittent measurements is examined by analysing the measurement innovation characteristics. Even if measurement data are unavailable and existence of uncertainties during mobile robot observations, it is suggested that the mobile robot can effectively estimate its location in an environment. This paper presents the uncertainties bounds of estimation by analysing the measurement innovation to preserve good estimations although some measurements data are sometimes missing. Theoretical analysis of the EKF is proposed to demonstrate the conditions when the problem occurred. From the analysis of measurement innovation, Jacobian transformation has been found as one of the main factors that affects the estimation performance. Besides that, the initial state covariance, process and measurement noises must be kept smaller to achieve better estimation results. The simulation and experimental results obtained are showing consistent behaviour as proposed in this paper.
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