基于ARMA模型的GNSS周跳检测贝叶斯方法

Guochao Zhang, Q. Gui, Songhui Han, Jun Zhao, Wenhua Huang
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引用次数: 2

摘要

基于时间序列分析方法,提出了一种检测和修复GNSS载波相位数据周跳的贝叶斯方法。首先,本文分析了GNSS载波相位观测的周跳特征,建立了平稳时间序列中周跳与加性异常值(ao)的关系。利用ARMA(自回归移动平均)模型对差分GNSS载波相位观测得到的平稳时间序列进行拟合,将GNSS载波相位观测中的周跳检测转化为ARMA模型中的AOs检测。在此基础上,本文提出了一种基于贝叶斯方法的ARMA模型AOs检测方法,并开发了GNSS载波相位观测中周期跳检测方法。最后,将新的贝叶斯方法用于实际GNSS载波相位数据的周跳检测。通过对贝叶斯方法、高阶差分法和电离层残差法的比较,可以发现贝叶斯方法对GNSS载波相位观测中几种周跳的检测效率优于其他方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Bayesian method of GNSS cycle slips detection based on ARMA model
Based on the time series analysis method, this article develops a Bayesian method of detecting and repairing the cycle slips in the GNSS carrier-phase data. Firstly, this article analyses the characteristics of the cycle slips in the GNSS carrier-phase observations and establishes the relationships between the cycle slips and the additive outliers (AOs) in the stationary time series. When the ARMA (autoregressive moving-average) model is used to fit the stationary time series obtained by differencing the GNSS carrier-phase observations, the detection of cycle slips in the GNSS carrier-phase observations can be transformed to the detection of AOs in the ARMA model. Then, this article proposes a Bayesian method of detecting the AOs in the ARMA model, and the implementation of detecting the cycle slips in the GNSS carrier-phase observations is also developed. Finally, the new Bayesian method of detecting the cycle slips is used to the real GNSS carrier-phase data. From the comparison among the Bayesian method, the high-order differences method and ionospheric residual method, we can find that the Bayesian method has a better detection efficiency for several kinds of cycle slips in the GNSS carrier-phase observations than other methods.
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