Publication | Closed Access
Phase behavior modeling of asphaltene precipitation utilizing RBF-ANN approach
26
Citations
21
References
2019
Year
Highway PavementEngineeringRbf-ann ApproachComputational ChemistryChemistryChemical EngineeringPetrochemicalPetroleum ChemistryNumerical SimulationPetroleum ProductionMaterials ScienceHeavy HydrocarbonsBrilliant Forecasting SkillPhase EquilibriumNatural SciencesMaterial ModelingAsphaltene PrecipitationChemical KineticsPetroleum EngineeringMultiscale Modeling
Precipitation of heavy hydrocarbons, particularly asphaltenes, is the reason for numerous operational and production problems in the petroleum industry. Hence, knowing the amount of asphaltene precipitation is a critical commission for petroleum engineers to overcome its problems. The aim of this study was to predict the amount of asphaltene precipitation as a function of temperature, dilution ratio, and molecular weight of different n-alkanes utilizing radial basis function artificial neural network (RBF-ANN). Additionally, this model has been compared with previous correlations, and its great accuracy was proved to predict the precipitated asphaltene. The values of R-squared and mean squared error obtained were 0.998 and 0.007, respectively. The efforts confirmed brilliant forecasting skill of RBF-ANN for the approximation of the precipitated asphaltene as a function of temperature, dilution ratio, and molecular weight of different n-alkanes.
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