基于GPS/INS的先进机器人导航系统改进自适应卡尔曼滤波算法

Xiaochuan Zhao, Yihao Qian, Min Zhang, Jinzhe Niu, Yuxiang Kou
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引用次数: 17

摘要

导航技术在先进机器人的设计中占有重要的地位。本文对一种基于GPS/INS的先进机器人导航系统进行了建模。根据该模型,分析了测量方程误差产生的原因,得出GPS接收机提供的水平精度稀释系数(HDOP)和垂直精度稀释系数(VDOP)是数学模型中测量噪声变化的关键因素。基于上述结论,本文提出了一种新的二阶模糊自适应滤波器设计。该滤波器以GPS接收机提供的位置和速度信息的差值作为输入,利用GPS接收机提供的残差序列统计信息和位置精度稀释(PDOP)对调节因子进行修正,利用模糊逻辑对INS装置的输出进行校正。实验结果表明,本文提出的改进自适应卡尔曼滤波算法对时变测量噪声具有较强的适应性,提高了先进机器人导航的精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An improved adaptive Kalman filtering algorithm for advanced robot navigation system based on GPS/INS
Navigation technology plays an important role in the designing of advanced robot. An advanced robot navigation system based on GPS/INS is modeled in this paper. According to the model, the causes of the errors in measurement equation are analyzed, concluding that HDOP (Horizontal Dilution of Precision) and VDOP (Vertical Dilution of Precision) provided by GPS receiver are the crucial factors for the change of measurement noise in the mathematical model. Based on the above conclusion, this paper proposes a novel second order fuzzy self-adaptive filter design. Choosing the differences of location and velocity information provided by GPS receiver and INS device as the inputs, this filter modifies the regulation factor based on the residual sequence statistical information and PDOP (Position Dilution of Precision) provided by GPS receiver to correct the outputs of INS device using fuzzy logic. The experimental results demonstrate that the improved adaptive Kalman filtering algorithm proposed in this paper has a strong adaptability to time-varying measurement noises, which improves precision of the advanced robot navigation.
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