Background
Type: Article

Role of stochastic model on GPS integer ambiguity resolution success rate

Journal: GPS Solutions (10805370)Year: 2016/01/01Volume: 20Issue: 1Pages: 51 - 61
Amiri-Simkooei A. Jazaeri S. Zangeneh-Nejad F.Asgari J.a
DOI:10.1007/s10291-015-0445-5Language: English

Abstract

An important step in the high-precision GPS positioning is double-difference integer ambiguity resolution (IAR). The fraction or percentage of success among a number of integer ambiguity fixing is called the success rate. We investigate the ambiguity resolution success rate for the GPS observations for two cases, namely a nominal and a realistic stochastic model of the GPS observables. In principle, one would expect to have higher reliability on IAR success rates if a realistic GPS observables stochastic model is employed. The GPS geometry-based observation model is employed in which a more realistic stochastic model of GPS observables is determined using the least-squares variance component estimation. Two short and one GPS long baseline datasets and one simulated dataset are employed to evaluate the efficacy of the proposed algorithm. The results confirm that a more realistic stochastic model can significantly improve the IAR success rate on individual frequencies, either on L1 or on L2. An improvement of 25 % was achieved to the empirical success rate results. The results are of interest for many applications in which single-frequency observations can be used. This includes applications like attitude determination using single frequency single epoch of GPS observations. © 2015, Springer-Verlag Berlin Heidelberg.


Author Keywords

Integer ambiguity resolutionLeast-squares variance component estimation (LS-VCE)Noise assessment of GPS observablesSuccess rateStochastic systems

Other Keywords

Stochastic systemsAmbiguity resolutionAttitude determinationDouble difference integer ambiguitiesGPS integer ambiguity resolutionInteger ambiguity resolutionNoise assessmentsObservation modelVariance component estimationalgorithmbaseline surveydata setempirical analysisfrequency analysisgeometryGPSnoiseobservational methodprecisionspatial resolutionstochasticityStochastic models