Abstract

Global Navigation Satellite System raw measurements from Android smart devices make accurate positioning possible with advanced techniques, e.g., precise point positioning (PPP). To achieve the sub-meter-level positioning accuracy with low-cost smart devices, the PPP algorithm developed for geodetic receivers is adapted and an approach named Smart-PPP is proposed in this contribution. In Smart-PPP, the uncombined PPP model is applied for the unified processing of single- and dual-frequency measurements from tracked satellites. The receiver clock terms are parameterized independently for the code and carrier phase measurements of each tracking signal for handling the inconsistency between the code and carrier phases measured by smart devices. The ionospheric pseudo-observations are adopted to provide absolute constraints on the estimation of slant ionospheric delays and to strengthen the uncombined PPP model. A modified stochastic model is employed to weight code and carrier phase measurements by considering the high correlation between the measurement errors and the signal strengths for smart devices. Additionally, an application software based on the Android platform is developed for realizing Smart-PPP in smart devices. The positioning performance of Smart-PPP is validated in both static and kinematic cases. Results show that the positioning errors of Smart-PPP solutions can converge to below 1.0 m within a few minutes in static mode and the converged solutions can achieve an accuracy of about 0.2 m of root mean square (RMS) both for the east, north and up components. For the kinematic test, the RMS values of Smart-PPP positioning errors are 0.65, 0.54 and 1.09 m in the east, north and up components, respectively. Static and kinematic tests both show that the Smart-PPP solutions outperform the internal results provided by the experimental smart devices.

Highlights

  • Smart devices are widely used in location-based serviceassociated applications by integrating a low-cost global navigation satellite system (GNSS) chip, which can provide users the positioning results with meter-level accuracy (Wang et al 2016)

  • To validate the performance of the Smart-precise point positioning (PPP) approach, the software for realizing GNSS real-time PPP on smart devices was developed based on the Android platform

  • Given the limitation that the hardware components and the poor quality of raw GNSS measurements of the smart devices present, this contribution studied what changes can be implemented in precise positioning with raw GNSS measurements from low-cost smart devices when using the PPP algorithms developed for geodetic receivers, and an approach named Smart-PPP was proposed for achieving the sub-meter-level positioning accuracy in low-cost smart devices

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Summary

Introduction

Smart devices are widely used in location-based serviceassociated applications by integrating a low-cost global navigation satellite system (GNSS) chip, which can provide users the positioning results with meter-level accuracy (Wang et al 2016). The availability of raw GNSS measurements from Android smart devices opens up the possibility of deriving more accurate solutions with advanced positioning techniques. Since the release of the Android 7.0 operator system, much attention had been attracted to the evaluation and analysis of raw GNSS measurements from smart devices (Riley et al 2017; Zhang et al 2018; Liu et al 2019). Håkansson (2019) has examined the characterization of GNSS observations with different multipath configurations and found that multipath errors significantly affect the expected accuracy of precise positioning. Li and Geng (2019) investigated the measurement error characteristics of raw GNSS data from smart devices using both embedded and external antennas. Li and Geng (2019) investigated the measurement error characteristics of raw GNSS data from smart devices using both embedded and external antennas. Paziewski et al (2019) studied the characterization of smartphone signal quality

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