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http://dx.doi.org/10.7848/ksgpc.2021.39.5.289

Precision Analysis of NARX-based Vehicle Positioning Algorithm in GNSS Disconnected Area  

Lee, Yong (Dept. of Geoinformaticts, University of Seoul)
Kwon, Jay Hyoun (Dept. of Geoinformaticts, University of Seoul)
Publication Information
Journal of the Korean Society of Surveying, Geodesy, Photogrammetry and Cartography / v.39, no.5, 2021 , pp. 289-295 More about this Journal
Abstract
Recently, owing to the development of autonomous vehicles, research on precisely determining the position of a moving object has been actively conducted. Previous research mainly used the fusion of GNSS/IMU (Global Positioning System / Inertial Navigation System) and sensors attached to the vehicle through a Kalman filter. However, in recent years, new technologies have been used to determine the location of a moving object owing to the improvement in computing power and the advent of deep learning. Various techniques using RNN (Recurrent Neural Network), LSTM (Long Short-Term Memory), and NARX (Nonlinear Auto-Regressive eXogenous model) exist for such learning-based positioning methods. The purpose of this study is to compare the precision of existing filter-based sensor fusion technology and the NARX-based method in case of GNSS signal blockages using simulation data. When the filter-based sensor integration technology was used, an average horizontal position error of 112.8 m occurred during 60 seconds of GNSS signal outages. The same experiment was performed 100 times using the NARX. Among them, an improvement in precision was confirmed in approximately 20% of the experimental results. The horizontal position accuracy was 22.65 m, which was confirmed to be better than that of the filter-based fusion technique.
Keywords
Deep Learning; NARX; Sensor fusion; GNSS Blockages; Vehicle Positioning System;
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