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Mining large-gradient subsidence monitoring using D-InSAR optimized by GNSS

Haodi Fan, Xugang Lian, Wenfu Yang, Linlin Ge, Haifeng Hu, Zheyuan Du

2021The Imaging Science Journal12 citationsDOI

Abstract

In the process of developing mine resources, mining subsidence is inevitable. The D-InSAR (differential interferometric synthetic aperture radar) technology has been widely used to monitor large-scale ground subsidence in mining areas in recent years. However, the limitations of this technology mean that large-gradient ground subsidence cannot be monitored. This paper describes a weighted total least-squares method that can be used to determine the piecewise linear mapping between GNSS (global navigation satellite system) data and D-InSAR data. This mapping can be applied to optimize the conventional D-InSAR monitoring results, particularly in large-gradient subsidence areas, enabling the mining subsidence to be comprehensively evaluated. The proposed method is used to extract the surface subsidence information for a certain area of the Sihe mine in Shanxi Province, China. It is found that the optimized data is more reliable and accurate than the conventional D-InSAR monitoring data in the case of large-gradient subsidence.

Topics & Concepts

Interferometric synthetic aperture radarGNSS applicationsSubsidenceRemote sensingGeologyGeodesyGround subsidenceGNSS augmentationSatelliteSynthetic aperture radarComputer scienceGlobal Positioning SystemMining engineeringGeomorphologyEngineeringTelecommunicationsAerospace engineeringStructural basinSynthetic Aperture Radar (SAR) Applications and TechniquesGeophysical Methods and ApplicationsGeophysical and Geoelectrical Methods
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