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000828240 1001_ $$0P:(DE-HGF)0$$aZovi, Francesco$$b0
000828240 245__ $$aIdentification of high-permeability subsurface structures with multiple point geostatistics and normal score ensemble Kalman filter
000828240 260__ $$aAmsterdam [u.a.]$$bElsevier$$c2017
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000828240 520__ $$aAlluvial aquifers are often characterized by the presence of braided high-permeable paleo-riverbeds, which constitute an interconnected preferential flow network whose localization is of fundamental importance to predict flow and transport dynamics. Classic geostatistical approaches based on two-point correlation (i.e., the variogram) cannot describe such particular shapes. In contrast, multiple point geostatistics can describe almost any kind of shape using the empirical probability distribution derived from a training image. However, even with a correct training image the exact positions of the channels are uncertain. State information like groundwater levels can constrain the channel positions using inverse modeling or data assimilation, but the method should be able to handle non-Gaussianity of the parameter distribution. Here the normal score ensemble Kalman filter (NS-EnKF) was chosen as the inverse conditioning algorithm to tackle this issue. Multiple point geostatistics and NS-EnKF have already been tested in synthetic examples, but in this study they are used for the first time in a real-world casestudy. The test site is an alluvial unconfined aquifer in northeastern Italy with an extension of approximately 3 km2. A satellite training image showing the braid shapes of the nearby river and electrical resistivity tomography (ERT) images were used as conditioning data to provide information on channel shape, size, and position. Measured groundwater levels were assimilated with the NS-EnKF to update the spatially distributed groundwater parameters (hydraulic conductivity and storage coefficients). Results from the study show that the inversion based on multiple point geostatistics does not outperform the one with a multiGaussian model and that the information from the ERT images did not improve site characterization. These results were further evaluated with a synthetic study that mimics the experimental site. The synthetic results showed that only for a much larger number of conditioning piezometric heads, multiple point geostatistics and ERT could improve aquifer characterization. This shows that state of the art stochastic methods need to be supported by abundant and high-quality subsurface data.
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000828240 7001_ $$0P:(DE-HGF)0$$aCamporese, Matteo$$b1$$eCorresponding author
000828240 7001_ $$0P:(DE-Juel1)138662$$aHendricks-Franssen, Harrie-Jan$$b2$$ufzj
000828240 7001_ $$0P:(DE-Juel1)129472$$aHuisman, Johan Alexander$$b3$$ufzj
000828240 7001_ $$0P:(DE-HGF)0$$aSalandin, Paolo$$b4
000828240 773__ $$0PERI:(DE-600)1473173-3$$a10.1016/j.jhydrol.2017.02.056$$gVol. 548, p. 208 - 224$$p208 - 224$$tJournal of hydrology$$v548$$x0022-1694$$y2017
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