面向机器人全局定位的姿态估计器数据融合

B. B. Salmeron-Quiroz, G. Villegas-Medina, J. Guerrero-Castellanos, R. Villalobos-Martinez, M. A. Mendoza-Nunez
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引用次数: 0

摘要

介绍了一种基于惯性测量单元(AHRS)数据融合的估计器的设计和测试结果。因此,为了提高姿态估计的质量,根据从差分测量中获得的信息实时估计测量噪声的协方差矩阵,使估计器尽可能地持续“调谐”。不需要先验地知道惯性系中重力矢量的方向,因为这些参数也可以由KF识别,从而减轻了校准的需要。使用这种方法,只需要测量至少两个非共线方向传感器。由于控制律非常简单,不需要基于观测器的模型进行角速度重建,因此该策略非常适合嵌入式实现。实验结果表明,综合AHRS在估计移动机器人在不平坦地形上的姿态方面具有良好的性能。证明了估计技术的全局收敛性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Data fusion of an attitude estimator for global localization of a robot
This paper focuses on the design and test results of an estimator based on fusing data from Inertial Measurement Unit (AHRS). Therefore in order to improve the quality of the attitude estimates, the covariance matrix of measurement noise is estimated in real time upon information obtained from the differential measurements, so that the estimator continually is “tuned” as well as possible. No a priori knowledge on the direction of the gravity vector in the inertial frame is required as these parameters can be also identified by the KF, relieving any need for calibration. With this approach, only the measurements of at least two non-collinear directional sensors are needed. Since the control laws are highly simple and a model based in an observer for angular velocity reconstruction is not needed, the proposed new strategy is very suitable for embedded implementations. Test results are presented showing the performance of the integrated AHRS to estimate the attitude of a mobile robot moving across uneven terrain. The global convergence of the estimation techniques is proved.
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