4.7 Article

Dual Receiver EGNOS plus SDCM Positioning with C1C and C1W Pseudo-Range Measurements

期刊

REMOTE SENSING
卷 14, 期 13, 页码 -

出版社

MDPI
DOI: 10.3390/rs14133152

关键词

SBAS positioning; EGNOS; SDCM; differential GPS; least squares adjustment; Kalman filtering; pseudo-range measurements

资金

  1. Polish Air Force University

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The paper introduces an approach to simultaneously use SDCM and EGNOS corrections for GPS positioning, which improves the accuracy by applying constrained least squares adjustment and Kalman Filter. The results show that the approach provides a more reliable solution for determining 3D coordinates compared to using only a single EGNOS or SDCM system.
The paper presents an approach to the simultaneous use of SDCM and EGNOS corrections for two GNSS receivers placed at a constant distance. The SDCM and EGNOS corrections were applied for two GPS code measurements on L1 frequency: C1C and C1W. The approach is based mainly on the constrained least squares adjustment, but for the horizontal and vertical coordinates, the Kalman Filter was applied in order to reduce pseudo-range noises. It allows for obtaining a higher autonomous accuracy of GPS/(SDCM+EGNOS) positioning than when using only the GPS/EGNOS or GPS/SDCM system. The final dual-redundant solution, in which two SBAS systems were used (EGNOS+SDCM) and two GPS pseudo-ranges (C1C+C1W) were present, yielded RMS errors of 0.11 m for the horizontal coordinates and 0.25 m for the vertical coordinates. Moreover, the accuracy analysis in the developed mathematical model for the determined 3D coordinates with simultaneous use of EGNOS and SDCM systems proved to be much more reliable than using only a single EGNOS or SDCM system. The presented approach can be used not only for precise navigation, but also for some geoscience applications and remote sensing where the reliable accuracy of autonomous GPS positioning is required.

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