A Heading Gyro Bias Online Calibration Method for Autonomous Navigation System

Yunqiang Xiong, Dongmei Zhang, Chun Dong, Shuangxi Li, Hao Wu
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Abstract

In the waist-worn indoor Autonomous Navigation System based on Dead-Reckoning principle using low-cost MEMS (Micro-Electro Mechanical Systems) inertial sensors, heading gyro bias error with poor repeatability is one key factor, which significantly reduces positioning accuracy. For this problem, the paper designs a closed-loop walking track and the corresponding indoor corridors azimuth introduced online is used as the observed information by Kalman Filter for heading gyro bias online calibration. Thus, the positioning error caused by the large gyro bias repeatability error can be reduced. The effectiveness of this method is demonstrated by multi-groups of positioning experiments. In these experiments, their average total distance was 1270. 7m. For the experimental results, the uncalibrated positioning error rates ranged from 0.59% to 1.63% and the calibrated were from 0.25% to 0.65%. Experimental results indicate that the proposed method is effective to calibrate heading gyro bias for restraining heading drift and improving positioning accuracy.
自主导航系统航向陀螺偏差在线标定方法
在采用低成本MEMS(微机电系统)惯性传感器的基于航位计算原理的腰穿式室内自主导航系统中,航向陀螺误差重复性差是影响定位精度的关键因素之一。针对这一问题,本文设计了一种闭环行走轨迹,并利用在线引入的室内走廊方位角作为卡尔曼滤波的观测信息进行航向陀螺偏差在线标定。这样可以减小由于陀螺偏置过大而引起的定位误差。通过多组定位实验验证了该方法的有效性。在这些实验中,它们的平均总距离为1270。7米。实验结果表明,未标定的定位误差率为0.59% ~ 1.63%,标定后的定位误差率为0.25% ~ 0.65%。实验结果表明,该方法能有效地校正航向陀螺偏差,抑制航向漂移,提高定位精度。
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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