On the prediction of solubility of alkane in carbon dioxide using the LSSVM algorithm |
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Authors: | Alireza Baghban Amin Piri Mostafa Lakzaei Mohammad Baghban |
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Affiliation: | 1. Chemical Engineering Department, Amirkabir University of Technology (Tehran Polytechnic), Mahshahr, Iran;2. Alireza_baghban@alumni.ut.ac.ir janghorban@abadanums.ac.ir;3. Department of Chemistry, Faculty of Science, University of Sistan and Baluchestan, Zahedan, Iran;4. Department of Electrical Engineering, Chabahar Maritime University (CMU), Chabahar, Iran;5. Young Researcher and Elite Club, Islamic Azad University, Marvdasht Branch, Marvdasht, Iran |
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Abstract: | The increasing global energy demand and declination of oil reservoir in recent years cause the researchers attention focus on the enhancement of oil recovery approaches. One of the extensive applicable methods for enhancement of oil recovery, which has great efficiency and environmental benefits, is carbon dioxide injection. The CO2 injection has various effects on the reservoir fluid, which causes enhancement of recovery. One of these effects is extraction of lighter components of crude oil, which straightly depends on solubility of hydrocarbons in carbon dioxide. In order to better understand of this parameter, in this study, Least squares support vector machine (LSSVM) algorithm was developed as a novel predictive tool to estimate solubility of alkane in CO2 as function of carbon number of alkane, carbon dioxide density, pressure, and temperature. The predicting model outputs were compared with the extracted experimental solubility from literature statistically and graphically. The comparison showed the great ability and high accuracy of developed model in prediction of solubility. |
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Keywords: | carbon dioxide EOR LSSVM predicting model solubility |
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