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基于残差统计特性的中国区域格网电离层GIVE算法优化

Acta Geodaetica et Cartographica Sinica(2021)

Shanghai Astronomical Observatory

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Abstract
北斗星基增强(BDSBAS)系统播发格网电离层改正数和格网电离层完好性参数GIVE,用以提升GNSS系统的服务精度并实现区域电离层活动完好性监视,以满足精密进近(GLS PA)需求.本文在实现BDSBAS格网电离层粗差剔除与改正数计算的基础上,提出了一种电离层完好性参数GIVE的优化方法,进而评估了BDSBAS格网电离层的应用精度.BDSBA S格网电离层格网点延迟估计采用平面拟合算法计算,异常数据剔除采用稳健的中值容错算法,GIVE的估计考虑了电离层残差分布的偏度与峰度统计特性,能够实现对电离层异常活动的及时响应.2020年1月实测数据分析结果表明,BDSBAS格网电离层修正精度(RMSE)为2~3 TECU,改正百分比达到75% ~79%,GIVE包络率优于99.9%.修正格网电离层后可提升GPS定位精度20% ~40%.
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Key words
bds bas,ionosphere,integrity monitoring,give,coefficient of skewness,kurtosis
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