DOI: 10.4995/thesis/10251/43769
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Ensemble Kalman filtering for hydraulic conductivity characterization: Parallelization and non-Gaussianity

Abstract: Ensemble kalman filter (EnKF) has proven to be a powerful inverse method for the characterization of hydraulic conductivities, which works well for non-linear state equation and Gaussian-distributed parameters. It is computationally more efficient than other inverse methods; however, it is still time-consuming. This thesis addresses two issues, how to speed up the EnKF through code parallelization and how to properly address the problem of characterizing non-Gaussian hydraulic conductivity fields. It is organi… Show more

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