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Augmented GNSS Differential Corrections Minimum Mean Square Error Estimation Sensitivity to Spatial Correlation Modeling Errors

机译:增强的GNSS微分校正最小均方误差估计对空间相关建模误差的敏感性

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摘要

Railway signaling is a safety system that has evolved over the last couple of centuries towards autonomous functionality. Recently, great effort is being devoted in this field, towards the use and exploitation of Global Navigation Satellite System (GNSS) signals and GNSS augmentation systems in view of lower railway track equipments and maintenance costs, that is a priority to sustain the investments for modernizing the local and regional lines most of which lack automatic train protection systems and are still manually operated. The objective of this paper is to assess the sensitivity of the Linear Minimum Mean Square Error (LMMSE) algorithm to modeling errors in the spatial correlation function that characterizes true pseudorange Differential Corrections (DCs). This study is inspired by the railway application; however, it applies to all transportation systems, including the road sector, that need to be complemented by an augmentation system in order to deliver accurate and reliable positioning with integrity specifications. A vector of noisy pseudorange DC measurements are simulated, assuming a Gauss-Markov model with a decay rate parameter inversely proportional to the correlation distance that exists between two points of a certain environment. The LMMSE algorithm is applied on this vector to estimate the true DC, and the estimation error is compared to the noise added during simulation. The results show that for large enough correlation distance to Reference Stations (RSs) distance separation ratio values, the LMMSE brings considerable advantage in terms of estimation error accuracy and precision. Conversely, the LMMSE algorithm may deteriorate the quality of the DC measurements whenever the ratio falls below a certain threshold.
机译:铁路信号传输是一个安全系统,在过去的几个世纪中已经发展为具有自主功能。最近,鉴于铁路轨道设备和维护成本的降低,在这一领域上正致力于使用和开发全球导航卫星系统(GNSS)信号和GNSS增强系统,这是维持现代化投资的优先事项当地和区域性线路大多缺乏自动列车保护系统,仍需手动操作。本文的目的是评估线性最小均方误差(LMMSE)算法对表征真实伪距差分校正(DC)的空间相关函数中的误差建模的敏感性。这项研究受到铁路应用的启发。但是,它适用于所有交通系统,包括公路部门,这些系统都需要通过增强系统加以补充,以提供具有完整性规格的准确,可靠的定位。假设高斯-马尔可夫模型的衰减速率参数与存在于特定环境的两个点之间的相关距离成反比,则模拟了一个噪声伪距DC测量向量。将LMMSE算法应用于此向量以估计真实DC,并将估计误差与仿真期间添加的噪声进行比较。结果表明,对于与参考站(RS)距离分离比率值的足够大的相关距离,LMMSE在估计误差的准确性和精度方面具有相当大的优势。相反,每当比率低于某个阈值时,LMMSE算法可能会使DC测量的质量变差。

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