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Data assimilation methods for estimating a heterogeneous conductivity field by assimilating transient solute transport data via ensemble Kalman filter
Authors:Juxiu Tong  Bill X. Hu  Jinzhong Yang
Affiliation:1. Key Laboratory of Groundwater Cycle and Environment Evolution (China University of Geosciences), Ministry of Education, , Beijing, 100083 PR China;2. Collage of Water Resources and Environmental Sciences, China University of Geosciences, , Beijing, 100083 PR China;3. Department of Earth, Ocean and Atmospheric Science/Geological Sciences, Florida State University, , Tallahassee, Florida, 32306 USA;4. State Key Laboratory of Water Resources and Hydropower Engineering Science, Wuhan University, , Wuhan, 430072 PR China
Abstract:An ensemble Kalman filter (EnKF) is developed to identify a hydraulic conductivity distribution in a heterogeneous medium by assimilating solute concentration measurements of solute transport in the field with a steady‐state flow. A synthetic case with the mixed Neumann/Dirichlet boundary conditions is designed to investigate the capacity of the data assimilation methods to identify a conductivity distribution. The developed method is demonstrated in 2‐D transient solute transport with two different initial instant solute injection areas. The influences of the observation error and model error on the updated results are considered in this study. The study results indicate that the EnKF method will significantly improve the estimation of the hydraulic conductivity field by assimilating solute concentration measurements. The larger area of the initial distribution and the more observed data obtained, the better the calculation results. When the standard deviation of the observation error varies from 1% to 30% of the solute concentration measurements, the simulated results by the data assimilation method do not change much, which indicates that assimilation results are not very sensitive to the standard deviation of the observation error in this study. When the inflation factor is more than 1.0 to enlarge the model error by increasing the forecast error covariance matrix, the updated results of the hydraulic conductivity by the data assimilation method are not good at all. Copyright © 2012 John Wiley & Sons, Ltd.
Keywords:data assimilation  ensemble Kalman filter  hydraulic conductivity  solute transport  mixed Neumann/Dirichlet boundary  observation error  inflation factor  model error
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