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GPS/GLONASS carrier phase elevation-dependent stochastic modelling estimation and its application in bridge monitoring

机译:GPS / GLONASS载波相位高程相关的随机建模估计及其在桥梁监测中的应用

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The Global Positioning System (GPS) based monitoring technology has been recognised as an essential tool in the long-span bridge health monitoring throughout the world in recent years. However, the high observation noise is still a big problem that limits the high precision displacement extraction and vibration response detection. To solve this problem, GPS double-difference model and many other specific function models have been developed to eliminate systematic errors e.g. unmodeled atmospheric delays, multipath effect and hardware delays. However, relatively less attention has been given to the noise reduction in the deformation monitoring area. In this paper, we first proposed a new carrier phase elevation-dependent precision estimation method with Geometry-Free (GF) and Melbourne-Wiibbena (MW) linear combinations, which is appropriate to regardless of Code Division Multiple Access (CDMA) system (GPS) or Frequency Division Multiple Access (FDMA) system (GLONASS). Then, the method is used to estimate the receiver internal noise and the realistic GNSS stochastic model with a group of zero-baselines and short-baselines (served for the GNSS and Earth Observation for Structural Health Monitoring of Bridges (GeoSHM) project), and to demonstrate their impacts on the positioning. At last, the contribution of integration of GPS and GLONASS is introduced to see the performance of noise reduction with multi-GNSS. The results show that the higher level receiver internal noise in cost effective receivers has less influences on the short-baseline data processing. The high noise effects introduced by the low elevation satellite and the geometry variation caused by rising and dropping satellites, can be reduced by 10-20% with the refined carrier phase elevation-dependent stochastic model. Furthermore, based on observations from GPS and GLONASS with the refined stochastic model, the noise can be reduced by 30-40%, and the spurious signals in the real-life bridge displacements tend to be completely eliminated. (C) 2018 COSPAR. Published by Elsevier Ltd. All rights reserved.
机译:近年来,基于全球定位系统(GPS)的监视技术已被公认为是全球大跨度桥梁健康监视的重要工具。但是,高观察噪声仍然是限制高精度位移提取和振动响应检测的大问题。为了解决这个问题,已经开发了GPS双差模型和许多其他特定功能模型来消除系统误差。未建模的大气延迟,多径效应和硬件延迟。但是,对于变形监视区域中的噪声降低的关注相对较少。在本文中,我们首先提出了一种新的基于载波相位高程的精确估计方法,该方法采用无几何(GF)和墨尔本-威伯纳(MW)线性组合,适用于无论码分多址(CDMA)系统(GPS) )或频分多址(FDMA)系统(GLONASS)。然后,该方法用于估计接收器内部噪声和一组零基线和短基线的实际GNSS随机模型(用于GNSS和桥梁结构健康监测地球观测(GeoSHM)项目),以及展示其对定位的影响。最后,介绍了GPS和GLONASS集成的贡献,以了解多GNSS的降噪性能。结果表明,具有成本效益的接收机中较高级别的接收机内部噪声对短基线数据处理的影响较小。通过改进的与载波相位相关的随机模型,可以将低海拔卫星引入的高噪声效应以及由上升和下降卫星引起的几何变化降低10-20%。此外,基于GPS和GLONASS的精确随机模型的观测结果,可以将噪声降低30%至40%,并且现实生活中桥梁位移中的杂散信号趋于完全消除。 (C)2018年COSPAR。由Elsevier Ltd.出版。保留所有权利。

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