Prediction of Bubble Point Pressure & Asphaltene Onset Pressure During CO2 Injection Using ANN & ANFIS Models
Although CO2 injection is one of the most common methods in enhanced oil recovery, it could alter fluid properties of oil and cause some problems such as asphaltene precipitation. The maximum amount of asphaltene precipitation occurs near the fluid pressure and concentration saturation. According to...
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Reaserch Institute of Petroleum Industry
2011-08-01
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doaj-675096f502204c74b7ecf15b6779f4d12020-11-25T01:56:07ZengReaserch Institute of Petroleum IndustryJournal of Petroleum Science and Technology2251-659X2645-33122011-08-0112354510.22078/jpst.2011.4444Prediction of Bubble Point Pressure & Asphaltene Onset Pressure During CO2 Injection Using ANN & ANFIS ModelsEhsan Khamehchi0Reza Behvandi1fariborz rashidi2Faculty of Petroleum Engineering, Amirkabir University of TechnologyFaculty of Petroleum Engineering, Azad University Science and ResearchAmirkabir university of technologyAlthough CO2 injection is one of the most common methods in enhanced oil recovery, it could alter fluid properties of oil and cause some problems such as asphaltene precipitation. The maximum amount of asphaltene precipitation occurs near the fluid pressure and concentration saturation. According to the description of asphaltene deposition onset, the bubble point pressure has a very special importance in optimization of the miscible CO2 injection. The purpose of this research is to predict the onset of asphaltene and bubble point pressure of fluid reservoir using artificial intelligence developed models including a software simulator called “Intelligent Proxy Simulator (IPS)” based on structure artificial neural networks and “adaptive neural fuzzy inference system”, which is a combination of fuzzy logic and neural networks. To evaluate the predictions by artificial intelligence networks at the onset of deposition, a solid model using Winprop software was employed. Standing correlations were used for comparison of bubble point pressure. The results obtained using artificial intelligence models in prediction of the onset of asphaltene deposition and bubble point pressure during injection of CO2 were more accurate than those obtained from the thermodynamics Solid model and the Standing correlation respectively.https://jpst.ripi.ir/article_44_f6df63f4510ad664a4473524ebd22c40.pdfonset pressure of asphaltenebubble point pressureco2 injectionback propagation algorithmswarm optimizing algorithmadaptive neural fuzzy inference system |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Ehsan Khamehchi Reza Behvandi fariborz rashidi |
spellingShingle |
Ehsan Khamehchi Reza Behvandi fariborz rashidi Prediction of Bubble Point Pressure & Asphaltene Onset Pressure During CO2 Injection Using ANN & ANFIS Models Journal of Petroleum Science and Technology onset pressure of asphaltene bubble point pressure co2 injection back propagation algorithm swarm optimizing algorithm adaptive neural fuzzy inference system |
author_facet |
Ehsan Khamehchi Reza Behvandi fariborz rashidi |
author_sort |
Ehsan Khamehchi |
title |
Prediction of Bubble Point Pressure & Asphaltene Onset Pressure During CO2 Injection Using ANN & ANFIS Models |
title_short |
Prediction of Bubble Point Pressure & Asphaltene Onset Pressure During CO2 Injection Using ANN & ANFIS Models |
title_full |
Prediction of Bubble Point Pressure & Asphaltene Onset Pressure During CO2 Injection Using ANN & ANFIS Models |
title_fullStr |
Prediction of Bubble Point Pressure & Asphaltene Onset Pressure During CO2 Injection Using ANN & ANFIS Models |
title_full_unstemmed |
Prediction of Bubble Point Pressure & Asphaltene Onset Pressure During CO2 Injection Using ANN & ANFIS Models |
title_sort |
prediction of bubble point pressure & asphaltene onset pressure during co2 injection using ann & anfis models |
publisher |
Reaserch Institute of Petroleum Industry |
series |
Journal of Petroleum Science and Technology |
issn |
2251-659X 2645-3312 |
publishDate |
2011-08-01 |
description |
Although CO2 injection is one of the most common methods in enhanced oil recovery, it could alter fluid properties of oil and cause some problems such as asphaltene precipitation. The maximum amount of asphaltene precipitation occurs near the fluid pressure and concentration saturation. According to the description of asphaltene deposition onset, the bubble point pressure has a very special importance in optimization of the miscible CO2 injection. The purpose of this research is to predict the onset of asphaltene and bubble point pressure of fluid reservoir using artificial intelligence developed models including a software simulator called “Intelligent Proxy Simulator (IPS)” based on structure artificial neural networks and “adaptive neural fuzzy inference system”, which is a combination of fuzzy logic and neural networks. To evaluate the predictions by artificial intelligence networks at the onset of deposition, a solid model using Winprop software was employed. Standing correlations were used for comparison of bubble point pressure. The results obtained using artificial intelligence models in prediction of the onset of asphaltene deposition and bubble point pressure during injection of CO2 were more accurate than those obtained from the thermodynamics Solid model and the Standing correlation respectively. |
topic |
onset pressure of asphaltene bubble point pressure co2 injection back propagation algorithm swarm optimizing algorithm adaptive neural fuzzy inference system |
url |
https://jpst.ripi.ir/article_44_f6df63f4510ad664a4473524ebd22c40.pdf |
work_keys_str_mv |
AT ehsankhamehchi predictionofbubblepointpressureasphalteneonsetpressureduringco2injectionusingannanfismodels AT rezabehvandi predictionofbubblepointpressureasphalteneonsetpressureduringco2injectionusingannanfismodels AT fariborzrashidi predictionofbubblepointpressureasphalteneonsetpressureduringco2injectionusingannanfismodels |
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