李岚, 朱锋, 刘万科, 张小红. 城市分类场景的GNSS伪距随机模型构建及其定位性能分析[J]. 武汉大学学报 ( 信息科学版). DOI: 10.13203/j.whugis20220598
引用本文: 李岚, 朱锋, 刘万科, 张小红. 城市分类场景的GNSS伪距随机模型构建及其定位性能分析[J]. 武汉大学学报 ( 信息科学版). DOI: 10.13203/j.whugis20220598
LI Lan, ZHU Feng, LIU Wanke, ZHANG Xiaohong. GNSS Pseudorange Stochastic Model for Urban Classification Scenes and Its Positioning Performance[J]. Geomatics and Information Science of Wuhan University. DOI: 10.13203/j.whugis20220598
Citation: LI Lan, ZHU Feng, LIU Wanke, ZHANG Xiaohong. GNSS Pseudorange Stochastic Model for Urban Classification Scenes and Its Positioning Performance[J]. Geomatics and Information Science of Wuhan University. DOI: 10.13203/j.whugis20220598

城市分类场景的GNSS伪距随机模型构建及其定位性能分析

GNSS Pseudorange Stochastic Model for Urban Classification Scenes and Its Positioning Performance

  • 摘要: 城市复杂场景容易引起GNSS信号出现中断、衰减、多径和非视距严重等问题,难以保证GNSS定位服务的可用性、连续性与可靠性。为提高城市复杂场景下的GNSS定位性能,本文提出了一种精细构建城市分类场景GNSS随机模型的方法,利用高精度组合导航设备提供动态参考基准实现伪距误差精确提取,通过分析不同城市场景下的GNSS信号特征与影响因素,建立了分场景随机模型。实际城市车载测试表明,分场景随机模型能有效减弱部分定位粗差的影响,相比于经典高度角随机模型,水平定位精度提升16.76%、垂直定位精度提升16.18%;相比经典信噪比随机模型,水平定位精度提升18.68%、垂直定位精度提升17.72%,为实现复杂场景下随机模型的弹性优化提供了新思路。

     

    Abstract: Objective: There will be many problems such as interruption, attenuation, serious multipath error, and NLOS signals when positioning in harsh urban contexts. It’s difficult to ensure the availability, continuity, and reliability of GNSS positioning services. To improve the GNSS positioning performance in complex urban contexts, this paper proposes a method for constructing GNSS stochastic models adapting to different urban contexts. Methods: First, GNSS signal characteristics in different contexts are analyzed to reveal the significant discrepancy of GNSS signals in varied contexts. Then, dynamic reference benchmarks provided by high-precision integrated navigation equipment are used to extract pseudorange error accurately. In addition, appropriate error statistic (median) and impact factor (C/N0) are selected after tests. Finally, the GNSS stochastic models adapting to different urban contexts are constructed using C/N0 and pseudorange error. Results: The urban vehicle test shows that the stochastic model adapting to different urban contexts can effectively weaken the influence of some gross errors. Compared to elevation stochastic model, the positioning accuracy is improved by 16.76% and 16.18% in horizontal and vertical directions, and by 18.68% and 17.72% compared to the C/N0 stochastic model. Conclusions: Stochastic model reconstructed adapting to different environments can weight observations more realistic, thus improving GNSS positioning performance. This provides a new idea for resilient optimization of stochastic models in complex contexts.

     

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