基于主观贝叶斯多传感器数据融合的AGV精确定位研究

Accurate location of AGV based on subjective Bayesian multi-sensor data fusion

  • 摘要: 针对室内自动导引运输车(Automated Guided Vehicle,AGV)定位偏差大、精度不足的问题,提出了一种基于主观贝叶斯网络的传感器数据融合定位方法. 该方法首先结合卡尔曼滤波模型,对不同传感器的数据进行滤波处理,并通过主观贝叶斯网络模型计算信息增益大小,从而自主地选择传感器数据;再将选择的传感器数据进行融合;最后根据融合后的传感器信息进行AGV位置状态更新,获得更精确的AGV位姿信息. 仿真实验结果表明,在室内实验环境中,主观贝叶斯网络融合算法能够实现多传感器的数据互补. 与RUKF算法相比,该方法的均方根误差缩小到了0.17 m,定位精度提高了43.6%,定位时间缩短了0.071 s,效率提高了4.5%,数据稳定性提高了47.8%,其定位偏差明显小于单传感器的定位偏差,证明了该方法的有效性.

     

    Abstract: Aiming at the problems of large deviation and low accuracy of indoor Automated Guided Vehicle (AGV) positioning, a sensor data fusion localization method based on subjective Bayesian network is proposed. The method first combines the Karman filtering model to filter the data from different sensors and calculates the information gain magnitude by the subjective Bayesian network model to select the sensor data autonomously, then fuses the selected sensor data and finally updates the AGV position status based on the fused sensor information to obtain more accurate AGV position information. The simulation experiments show that in the laboratory experimental environment, the subjective Bayesian network fusion algorithm can achieve data complementarity of multiple sensors, and compared with the RUKF algorithm, the root mean square error of the method is reduced to 0.17 m, the positioning accuracy is improved by 43.6%, the positioning time is shortened by 0.071 s, the efficiency is improved by 4.5%, the data stability is improved by 47.8%. The positioning deviation is significantly smaller than that of single sensor, proving the effectiveness of the method.

     

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