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Compressive sensing reconstruction of 3D wet refractivity based on GNSS and InSAR observations
Abstract In this work, the reconstruction quality of an approach for neutrospheric water vapor tomography based on Slant Wet Delays (SWDs) obtained from Global Navigation Satellite Systems (GNSS) and Interferometric Synthetic Aperture Radar (InSAR) is investigated. The novelties of this approach are (1) the use of both absolute GNSS and absolute InSAR SWDs for tomography and (2) the solution of the tomographic system by means of compressive sensing (CS). The tomographic reconstruction is performed based on (i) a synthetic SWD dataset generated using wet refractivity information from the Weather Research and Forecasting (WRF) model and (ii) a real dataset using GNSS and InSAR SWDs. Thus, the validation of the achieved results focuses (i) on a comparison of the refractivity estimates with the input WRF refractivities and (ii) on radiosonde profiles. In case of the synthetic dataset, the results show that the CS approach yields a more accurate and more precise solution than least squares (LSQ). In addition, the benefit of adding synthetic InSAR SWDs into the tomographic system is analyzed. When applying CS, adding synthetic InSAR SWDs into the tomographic system improves the solution both in magnitude and in scattering. When solving the tomographic system by means of LSQ, no clear behavior is observed. In case of the real dataset, the estimated refractivities of both methodologies show a consistent behavior although the LSQ and CS solution strategies differ.
Compressive sensing reconstruction of 3D wet refractivity based on GNSS and InSAR observations
Abstract In this work, the reconstruction quality of an approach for neutrospheric water vapor tomography based on Slant Wet Delays (SWDs) obtained from Global Navigation Satellite Systems (GNSS) and Interferometric Synthetic Aperture Radar (InSAR) is investigated. The novelties of this approach are (1) the use of both absolute GNSS and absolute InSAR SWDs for tomography and (2) the solution of the tomographic system by means of compressive sensing (CS). The tomographic reconstruction is performed based on (i) a synthetic SWD dataset generated using wet refractivity information from the Weather Research and Forecasting (WRF) model and (ii) a real dataset using GNSS and InSAR SWDs. Thus, the validation of the achieved results focuses (i) on a comparison of the refractivity estimates with the input WRF refractivities and (ii) on radiosonde profiles. In case of the synthetic dataset, the results show that the CS approach yields a more accurate and more precise solution than least squares (LSQ). In addition, the benefit of adding synthetic InSAR SWDs into the tomographic system is analyzed. When applying CS, adding synthetic InSAR SWDs into the tomographic system improves the solution both in magnitude and in scattering. When solving the tomographic system by means of LSQ, no clear behavior is observed. In case of the real dataset, the estimated refractivities of both methodologies show a consistent behavior although the LSQ and CS solution strategies differ.
Compressive sensing reconstruction of 3D wet refractivity based on GNSS and InSAR observations
Heublein, Marion (Autor:in) / Alshawaf, Fadwa (Autor:in) / Erdnüß, Bastian (Autor:in) / Zhu, Xiao Xiang (Autor:in) / Hinz, Stefan (Autor:in)
Journal of Geodesy ; 93
2018
Aufsatz (Zeitschrift)
Elektronische Ressource
Englisch
Compressive sensing reconstruction of 3D wet refractivity based on GNSS and InSAR observations
Online Contents | 2018
|Application of Compressive Sensing to Refractivity Retrieval Using Networked Weather Radars
Online Contents | 2014
|Application of Compressive Sensing to Refractivity Retrieval Using Networked Weather Radars
Online Contents | 2014
|InSAR datum connection using GNSS-augmented radar transponders
Online Contents | 2017
|InSAR datum connection using GNSS-augmented radar transponders
Online Contents | 2017
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