Combination of geostatistics and self-organizing maps for the spatial analysis of groundwater level variations in complex hydrogeological systems

被引:0
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作者
Emmanouil A. Varouchakis
Dimitri Solomatine
Gerald A. Corzo Perez
Seifeddine Jomaa
George P. Karatzas
机构
[1] Technical University of Crete,School of Mineral Resources Engineering
[2] IHE Delft Institute for Water Education,Department of Aquatic Ecosystem Analysis and Management
[3] Delft University of Technology,School of Chemical and Environmental Engineering
[4] Helmholtz Centre for Environment Research - UFZ,undefined
[5] Technical University of Crete,undefined
关键词
Transgaussian Kriging; Geostatistics; Self-organizing maps; Machine learning; Groundwater; Box-Cox;
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摘要
Successful modelling of the groundwater level variations in hydrogeological systems in complex formations considerably depends on spatial and temporal data availability and knowledge of the boundary conditions. Geostatistics plays an important role in model-related data analysis and preparation, but has specific limitations when the aquifer system is inhomogeneous. This study combines geostatistics with machine learning approaches to solve problems in complex aquifer systems. Herein, the emphasis is given to cases where the available dataset is large and randomly distributed in the different aquifer types of the hydrogeological system. Self-Organizing Maps can be applied to identify locally similar input data, to substitute the usually uncertain correlation length of the variogram model that estimates the correlated neighborhood, and then by means of Transgaussian Kriging to estimate the bias corrected spatial distribution of groundwater level. The proposed methodology was tested on a large dataset of groundwater level data in a complex hydrogeological area. The obtained results have shown a significant improvement compared to the ones obtained by classical geostatistical approaches.
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页码:3009 / 3020
页数:11
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