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Original Articles

Prediction of Crude Oil Asphaltene Precipitation Using Support Vector Regression

, &
Pages 518-523 | Received 15 Apr 2013, Accepted 19 Apr 2013, Published online: 28 Mar 2014
 

Abstract

Precipitation and deposition of asphaltene during different recovery processes is an important issue in oil industry which causes considerable increase in production cost as well as negatively impacting in production rate. In this study, support vector regression as a novel computer learning algorithm was utilized to estimate the amount asphaltene precipitation from experimental titration data. Also, the result of support vector regression modeling was compared with the artificial neural network model and the scaling equation. Results show acceptable agreement with experimental data and also more accurate prediction in comparison to artificial neural network and scaling equation.

Notes

*ANN = artificial neural networks.

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