Stats (May 2021)

Analysis of ‘Pre-Fit’ Datasets of gLAB by Robust Statistical Techniques

  • Maria Teresa Alonso,
  • Carlo Ferigato,
  • Deimos Ibanez Segura,
  • Domenico Perrotta,
  • Adria Rovira-Garcia,
  • Emmanuele Sordini

DOI
https://doi.org/10.3390/stats4020026
Journal volume & issue
Vol. 4, no. 2
pp. 400 – 418

Abstract

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The GNSS LABoratory tool (gLAB) is an interactive educational suite of applications for processing data from the Global Navigation Satellite System (GNSS). gLAB is composed of several data analysis modules that compute the solution of the problem of determining a position by means of GNSS measurements. The present work aimed to improve the pre-fit outlier detection function of gLAB since outliers, if undetected, deteriorate the obtained position coordinates. The methodology exploits robust statistical tools for regression provided by the Flexible Statistics and Data Analysis (FSDA) toolbox, an extension of MATLAB for the analysis of complex datasets. Our results show how the robust analysis FSDA technique improves the capability of detecting actual outliers in GNSS measurements, with respect to the present gLAB pre-fit outlier detection function. This study concludes that robust statistical analysis techniques, when applied to the pre-fit layer of gLAB, improve the overall reliability and accuracy of the positioning solution.

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