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Viscosity estimation of mixed oil using RBF-ANN approach
24
Citations
19
References
2017
Year
Rheological MeasurementChemical Enhanced Oil RecoveryEngineeringAthabasca Bitumen MixturesLiquid-liquid FlowFluid MechanicsMechanical EngineeringAccurate EstimationRheologyHeavy Oil RecoveryMultiphase FlowViscosity EstimationPetroleum RefiningLiquid SolventPetroleum EngineeringPetroleum Refining Process
Diluting the bitumen and heavy oil with a liquid solvent such as tetradecane is one way to decrease the viscosity. The accurate estimation for the viscosity of the aforesaid mixture is serious due to the sensitivity of enhanced oil recovery method. The main aim of this study was to propose an impressive relation between the viscosity of heavy n-alkane and Athabasca bitumen mixtures based on pressure, temperature, and the weight percentage of n-tetradecane using radial basis function artificial neural network (RBF-ANN). Also, this model has been compared with previous equations and its major accuracy was evidenced to estimate the viscosity. The amounts of mean relative error (MRE %) and R-squared received 0.32 and 1.00, respectively. The endeavors confirmed amazing forecasting skill of RBF-ANN for the approximation of the viscosity as a function of temperature, pressure, and the weight percentage of n-tetradecane.
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