A High-Precision Map Matching Algorithm Based on Nonlinear Filtering Optimization for IOT Industrial Park

Wengang Li, Tianfang Chen, Jiadong Han,Liujiang Wang, Jun Huang

IEEE SENSORS JOURNAL(2024)

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摘要
To solve the problem that the IoT wireless positioning technology is easily affected by the environment, which leads to the unsatisfactory positioning effect, this article proposes the improving particle filter-map matching (IPF-MM) algorithm. First, we propose to use the particle filter (PF) algorithm to filter the positioning trajectory from the wireless positioning base station. In this method, we combine the PF algorithm and outdoor map information and we use the centerline of the road to update the weight of the particles to improve positioning accuracy. Second, when the amount of data of positioning track points is too large, we set the threshold for the number of anchor tracks and reduce the number of positioning points by multiples to improve positioning efficiency. In the simulation experiment, the average relative error of the ultra-wideband (UWB) positioning track is reduced by 47.7% after using the IPF-MM. Besides, the IPF-MM reduces the running time by 42.9% compared with particle filter-map matching (PF-MM), which indicates that the IPF-MM can improve both the accuracy and efficiency of positioning.
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关键词
Roads,Bayes methods,Trajectory,Wireless communication,Prediction algorithms,Sensors,Predictive models,Bayesian estimation,high-precision positioning,map matching (MM),particle filtering
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