利用几种GNSS卫星选择技术增强智能手机定位

Mohamed F ElKhalea, H. Hendy, A. Kamel, I. Arafa, A. Abosekeen
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引用次数: 0

摘要

仅使用全球导航卫星系统(GNSS)的智能手机定位被认为是一个挑战,特别是在城市环境中。在android平台上使用原始GNSS测量(RGNSSM)使智能手机导航和跟踪更容易。通过去除伪距测量噪声,生成优化的加权协方差矩阵,或将GNSS数据与其他传感器集成等方法来改善定位信息。本文提出了一种基于改进加权协方差矩阵生成的新算法,并将其应用于几种卫星选择技术中,以提高android智能手机的定位信息。这个加权协方差矩阵取决于仰角、载波噪声密度以及每个卫星的测量残差。以实际道路轨迹为例,验证了该算法的性能。结果表明,与Google算法相比,该方法的三维位置增强了43.41%。
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Smartphone Positioning Enhancement Using Several GNSS Satellite Selection Techniques
Smartphone positioning using Global Navigation Satellite Systems (GNSS) only is considered a challenge, especially in urban environments. Utilizing Raw GNSS Measurements (RGNSSM) on the android platform made smartphone navigation and tracking easier. Several researches have been conducted to improve the positioning information by removing the noise of pseudorange measurements, generating an optimized weighting covariance matrix, or integrating GNSS data with other sensors. In this paper, a new algorithm based on generating a modified weighting covariance matrix is proposed moreover, it is applied to several satellite selection techniques to improve android smartphone positioning information. This weighting covariance matrix depends on elevation angle, carrier-to-noise density, and also the measurement residual for each satellite. A real road trajectory was conducted to test the performance of the proposed algorithm. The results show that the 3D position was enhanced by 43.41% compared to the method suggested by the Google algorithm.
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