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Original Articles

Dense Packed Layer Modeling in Oil-Water Dispersions: Model Description, Experimental Verification, and Code Demonstration

, , , , &
Pages 1527-1537 | Received 31 Oct 2014, Accepted 26 Dec 2014, Published online: 05 May 2015
 

Abstract

In the present research paper modeling principles for the oil-water separation with special emphasis on the modeling of dense packed layer (DPL) is presented. Formation of the DPL is attributed to the difference between sedimentation rate and interfacial coalescence rate. Different submodels resolving for the free sedimentation zone, the DPL, the binary coalescence, and the interfacial coalescence are described. These submodels are implemented in commercial CFD software. Adequate validation and calibration of these submodels are necessary to be used for understanding the separation processes in industrial separators. Experiments for understanding the water-in-oil separation processes in a horizontal continuous separator were designed and carried out. Results from bottle and decay tests were used only for calibrating the model. CFD simulations using the calibrated model have served to understand the flow phenomena occurring inside the horizontal separator. The prediction of the model seems to be satisfactory except at higher emulsion flow rate and lower water cuts.

GRAPHICAL ABSTRACT

ACKNOWLEDGMENT

We particularly want to thank Kristian Etienne Einarsrud for the contributions to the development of the simulation framework.

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