Investigating groundwater storage (GWS) could greatly better our understanding of groundwater dynamics and the factors that influence them. To generate changes in ΔGWS at a finer scale, we developed a statistical downscaling model and applied it to the Gravity Recovery and Climate Experiment (GRACE). The model is based on the relevance vector machine (RVM), which needs the few parameters (kernel function and kernel width) for regression. In addition, considering the anthropogenic influence on the GWS, the interferometry of synthetic aperture radar (InSAR) time series, which could inverse the land subsidence resulting from groundwater extraction, was introduced into the model. The model was evaluated and compared with one constructed using support vector machine. We obtained a 0.1 deg × 0.1 deg ΔGWS from the model. It is shown that the study area suffered from a sustained groundwater reduction with an expansion of space during 2007 to 2010. Furthermore, RVM is suggested to construct the GRACE downscaling model instantly, and InSAR can be considered an important indicator. |
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CITATIONS
Cited by 12 scholarly publications.
Data modeling
Interferometric synthetic aperture radar
Performance modeling
Statistical modeling
Interferometry
Spatial resolution
Thermal weapon sites