多变量GNSS状态时间序列的回归与假设检验

Yanming Feng
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引用次数: 3

摘要

基于卫星的观测系统可以连续或重复地生成可能包含有用信息的用户状态向量时间序列。一个典型的例子是收集国际GNSS服务(IGS)站的每日和每周组合解决方案。另一个例子是利用GPS实时运动学(RTK)技术导出的接收机逐历元运动学位置时间序列。虽然已经采用了一些多变量分析技术来评估多变量状态时间序列的噪声特性,但统计检验仅限于单变量时间序列。在回顾了GNSS状态时间序列单变量分析中常用的假设检验统计量的基础上,提出了用于多变量GNSS状态时间序列分析的t平方多变量分析统计量。这些t平方检验统计量考虑了坐标分量之间的相关性,这在单变量分析中被忽略了。利用IGS台站多年时间序列进行数值分析,将多元假设检验结果与单变量假设检验结果进行比较。结果表明,一般来说,在相同置信水平下,对多变量均值移位和异常值的检验往往比对单变量均值移位和异常值的检验拒绝更少的数据样本。值得注意的是,单变量和多变量数据分析方法都不打算取代物理分析。相反,这些应被视为补充统计方法的先验或后验调查。随后需要进行物理分析以完善和解释结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Regression and hypothesis tests for multivariate GNSS state time series
A satellite based observation system can continuously or repeatedly generate a user state vector time series that may contain useful information. One typical example is the collection of International GNSS Services (IGS) station daily and weekly combined solutions. Another example is the epoch-by-epoch kinematic position time series of a receiver derived by a GPS real time kinematic (RTK) technique. Although some multivariate analysis techniques have been adopted to assess the noise characteristics of multivariate state time series, statistic testings are limited to univariate time series. After review of frequently used hypotheses test statistics in univariate analysis of GNSS state time series, the paper presents a number of T-squared multivariate analysis statistics for use in the analysis of multivariate GNSS state time series. These T-squared test statistics have taken the correlation between coordinate components into account, which is neglected in univariate analysis. Numerical analysis was conducted with the multi-year time series of an IGS station to schematically demonstrate the results from the multivariate hypothesis testing in comparison with the univariate hypothesis testing results. The results have demonstrated that, in general, the testing for multivariate mean shifts and outliers tends to reject less data samples than the testing for univariate mean shifts and outliers under the same confidence level. It is noted that neither univariate nor multivariate data analysis methods are intended to replace physical analysis. Instead, these should be treated as complementary statistical methods for a prior or posteriori investigations. Physical analysis is necessary subsequently to refine and interpret the results.
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