• Corpus ID: 16386398

A DUAL ENSEMBLE KALMAN FILTERING FOR ASSIMILATION INTO A COUPLED CONTAMINANT MODEL

@inproceedings{Gharamti2012ADE,
  title={A DUAL ENSEMBLE KALMAN FILTERING FOR ASSIMILATION INTO A COUPLED CONTAMINANT MODEL},
  author={Mohamad E. Gharamti and Ibrahim Hoteit and Johan R. Valstar},
  year={2012}
}
Mohamad El Gharamti†, Ibrahim Hoteit, Johan Valstar †PhD, King Abdullah University of Science and Technology, Earth Sciences and Engineering, Thuwal 23955-6900 Saudi Arabia ?Assistant Professor, King Abdullah University of Science and Technology, Applied Mathematics and Computational Science, Thuwal 23955-6900 Saudi Arabia Geohydrologist, Deltares, Subsurface and groundwater systems, Utrecht, Netherlands. Email: †mohamad.elgharamti@kaust.edu.sa, ?ibrahim.hoteit@kaust.edu.sa, johan.valstar… 

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