Skewed-redundant Hall-effect Magnetic Sensor Fusion for Perturbation-free Indoor Heading Estimation

M. Karimi, Edwin Babaians, Martin Oelsch, Tamay Aykut, E. Steinbach
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引用次数: 3

Abstract

Robust attitude and heading estimation with respect to a known reference is an essential component for indoor localization in robotic applications. Affordable Attitude and Heading Reference Systems (AHRS) are typically using 9-axis solid-state MEMS-based sensors. The accuracy of heading estimation on such a system depends on the Earth's magnetic field measurement accuracy. The measurement of the Earth's magnetic field using MEMS-based magnetometer sensors in an indoor environment, however, is strongly affected by external magnetic perturbations. This paper presents a novel approach for robust indoor heading estimation based on skewed-redundant magnetometer fusion. A tetrahedron platform based on Hall-effect magnetic sensors is designed to determine the Earth's magnetic field with the ability to compensate for external magnetic field anomalies. Additionally, a correlation-based fusion technique is introduced for perturbation mitigation using the proposed skewed-redundant configuration. The proposed fusion technique uses a correlation coefficient analysis for determining the distorted axis and extracts the perturbation-free Earth's magnetic field vector from the redundant magnetic measurement. Our experimental results show that the proposed scheme is able to successfully mitigate the anomalies in the magnetic field measurement and estimates the Earth's true magnetic field. Using the proposed platform, we achieve a Root Mean Square Error of 12.74° for indoor heading estimation without using an additional gyroscope.
倾斜冗余霍尔效应磁传感器融合无摄动室内航向估计
基于已知参考点的鲁棒姿态和航向估计是机器人室内定位的重要组成部分。经济实惠的姿态和航向参考系统(AHRS)通常使用9轴固态mems传感器。这种系统的航向估计精度取决于地球磁场测量精度。然而,在室内环境中使用基于mems的磁力计传感器测量地球磁场会受到外部磁场扰动的强烈影响。提出了一种基于倾斜冗余磁强计融合的鲁棒室内航向估计方法。设计了一个基于霍尔效应磁传感器的四面体平台,以确定地球磁场,并具有补偿外部磁场异常的能力。此外,引入了一种基于相关的融合技术,利用所提出的倾斜冗余配置来缓解微扰。该融合技术采用相关系数分析确定畸变轴,并从冗余磁测量中提取无摄动的地磁场矢量。实验结果表明,该方案能够有效地缓解磁场测量中的异常现象,并估计出地球的真实磁场。使用该平台,我们在不使用额外陀螺仪的情况下实现了室内航向估计的均方根误差为12.74°。
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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