Vehicle Dead-Reckoning Autonomous Algorithm Based on Turn Velocity Updates in Kalman Filter

Aleksandr Mikov, A. Moschevikin, R. Voronov
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引用次数: 2

Abstract

The paper presents a Kalman-based dead-reckoning algorithm for a vehicle. The algorithm uses inertial data only. No data from other sources of information are utilized. The proposed technique relies on two aspects: pseudo-acceleration removal procedure and novel turn velocity update (TVU) correction technique applied when the vehicle performs a maneuver. The dynamic algorithm performance was evaluated using real data obtained from the forklift and compared with the output of the ultra-wideband positioning system. To achieve this, the synchronization between UWB and inertial data was employed by aligning velocities in acceleration and deceleration moments. Seven experiments were carried out to test the method. The duration of each experiment varied from 4 to 24 minutes. The travelled distance corresponded to the range from 118 to 380 meters. The algorithm shows fair position estimation results with the data obtained from commercial off-the-shelf MEMS sensors on a long-term run. The median position error did not exceed 1.2 meters for all performed tests. The end position estimation error, respectively, was not worse than 1.2% of total travelled distance.
基于卡尔曼滤波下转弯速度更新的车辆航位自动推算算法
提出了一种基于卡尔曼的车辆航位推算算法。该算法仅使用惯性数据。没有利用其他资料来源的数据。该技术主要依赖于两个方面:伪加速度去除过程和机动时的新型转弯速度更新(TVU)校正技术。利用叉车实际数据对动态算法性能进行了评价,并与超宽带定位系统输出结果进行了比较。为了实现这一目标,通过对准加速和减速时刻的速度来实现超宽带和惯性数据之间的同步。为了验证该方法,进行了七次实验。每次实验的时间从4分钟到24分钟不等。行进的距离相当于从118米到380米的范围。该算法与商用现成的MEMS传感器在长期运行中获得的数据显示出合理的位置估计结果。所有测试的中位位置误差不超过1.2米。终点位置估计误差分别不大于总行程的1.2%。
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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