Abstract

In the recent years, multi-constellation and multi-frequency have improved the positioning precision in GNSS applications and significantly expanded the range of applications to new areas and services. However, the use of multiple signals presents advantages as well as disadvantages, since they may contain poor quality signals that negatively impact the position precision. The objective of this study is to improve the Single Point Positioning (SPP) accuracy using multi-GNSS data fusion. We propose the use of robust-Extended Kalman Filter (referred to as robust-EKF hereafter) to eliminate outliers. The robust-EKF used in the present work combines the Extended Kalman Filter with the Iterative ReWeighted Least Squares (IRWLS) and the Receiver Autonomous Integrity Monitoring (RAIM). The weight matrix in IRWLS is defined by the MM Estimation method which is a robust statistics approach for more efficient statistical data analysis with high breaking point. The RAIM algorithm is used to check the accuracy of the protection zone of the user. We apply the robust-EKF method along with the robust combination of GPS, Galileo and GLONASS data from ABMF base station, which significantly improves the position accuracy by about 84% compared to the non-robust data combination. ABMF station is a GNSS reception station managed by Météo-France in Guadeloupe. Thereafter, ABMF will refer to the acronym used to designate this station. Although robust-EKF demonstrates improvement in the position accuracy, its outputs might contain errors that are difficult to estimate. Therefore, an algorithm that can predetermine the error produced by robust-EKF is needed. For this purpose, the long short-term memory (LSTM) method is proposed as an adapted Deep Learning-Based approach. In this paper, LSTM is considered as a de-noising filter and the new method is proposed as a hybrid combination of robust-EKF and LSTM which is denoted rEKF-LSTM. The position precision greatly improves by about 95% compared to the non-robust combination of data from ABMF base station. In order to assess the rEKF-LSTM method, data from other base stations are tested. The position precision is enhanced by about 87%, 77% and 93% using the rEKF-LSTM compared to the non-robust combination of data from three other base stations AJAC, GRAC and LMMF in France, respectively.

Highlights

  • Nowadays, positioning services can greatly improve life quality by covering a wide range of applications such as automatic driving, intelligent transportation, agriculture and so on

  • The position precision is enhanced by about 87%, 77% and 93% using the rEKF-long short-term memory (LSTM) compared to the non-robust combination of data from three other base stations AJAC, GRAC and LMMF in France, respectively

  • All these studies assert the significant improvement of the position precision brought by the application of robust-Extended Kalman Filter (EKF)

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Summary

Introduction

Nowadays, positioning services can greatly improve life quality by covering a wide range of applications such as automatic driving, intelligent transportation, agriculture and so on. It is challenging to achieve the positioning accuracy and reliability in such environments and it is required to adopt robust positioning estimation techniques to prevent the effects of possible wrong or outlier satellite observations on the user position. For this purpose, several algorithms and methods have been proposed to improve the GNSS receiver performance in terms of positioning accuracy. The weight model is defined based on the elevation angle and the signal to noise ratio It suffers from the same shortcomings as RAIM since the satellite elevation angle and the signal to noise ratio can be impacted by the multipath and radio interferences, especially in urban canyons.

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