Detecting, estimating and correcting multipath biases affecting GNSS signals using a marginalized likelihood ratio-based method

Cheng Cheng, Jean Yves Tourneret, Quan Pan, Vincent Calmettes

Research output: Contribution to journalArticlepeer-review

25 Scopus citations

Abstract

In urban canyons, non-line-of-sight (NLOS) multipath interferences affect position estimation based on global navigation satellite systems (GNSS). This paper proposes to model the effects of NLOS multipath interferences as mean value jumps contaminating the GNSS pseudo-range measurements. The marginalized likelihood ratio test (MLRT) is then investigated to detect, identify and estimate the corresponding NLOS multipath biases. However, the MLRT test statistics is difficult to compute. In this work, we consider a Monte Carlo integration technique based on bias magnitude sampling. Jensen's inequality allows this Monte Carlo integration to be simplified. The multiple model algorithm is also used to update the prior information for each bias magnitude sample. Some strategies are designed for estimating and correcting the NLOS multipath biases. In order to demonstrate the performance of the MLRT, experiments allowing several localization methods to be compared are performed. Finally, results from a measurement campaign conducted in an urban canyon are presented in order to evaluate the performance of the proposed algorithm in a representative environment.

Original languageEnglish
Pages (from-to)221-234
Number of pages14
JournalSignal Processing
Volume118
DOIs
StatePublished - 11 Aug 2016

Keywords

  • Global navigation satellite systems
  • Marginalized likelihood ratio test
  • Multipath mitigation
  • Multiple model
  • Urban positioning

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