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Verification of ARMA identification for modelling temporal correlations of GNSS observations using the ARMASA toolbox

机译:使用ARMASA工具箱验证用于建模GNSS观测值的时间相关性的ARMA标识

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The classical least-squares (LS) algorithm is widely applied in practice of processing observations from Global Satellite Navigation Systems (GNSS). However, this approach provides reliable estimates of unknown parameters and realistic accuracy measures only if both the functional and stochastic models are appropriately specified. One essential deficiency of the stochastic model implemented in many available GNSS software products consists in neglecting temporal correlations of GNSS observations. Analysing time series of observation residuals resulting from the LS evaluation, the temporal correlation behaviour of GNSS measurements can be efficiently described by means of socalled autoregressive moving average (ARMA) processes. For a given noise realisation, a well-fitting ARMA model can be automatically estimated and identified using the ARMASA toolbox available free of charge in MATLAB? Central.
机译:经典的最小二乘(LS)算法已广泛应用于处理来自全球卫星导航系统(GNSS)的观测结果。但是,只有在功能模型和随机模型都已正确指定的情况下,此方法才能提供未知参数的可靠估计和实际的精度度量。在许多可用的GNSS软件产品中实现的随机模型的一个基本缺陷是忽略了GNSS观测值的时间相关性。通过分析由LS评估得出的观测残差的时间序列,可以通过所谓的自回归移动平均(ARMA)过程有效地描述GNSS测量的时间相关行为。对于给定的噪声实现,可以使用MATLAB中免费提供的ARMASA工具箱自动估算和识别出合适的ARMA模型。中央。

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