Development of new correlations for the oil formation volume factor in oil reservoirs using artificial intelligent white box technique

Salaheldin Elkatatny , Mohamed Mahmoud

Petroleum ›› 2018, Vol. 4 ›› Issue (2) : 178 -186.

PDF
Petroleum ›› 2018, Vol. 4 ›› Issue (2) :178 -186. DOI: 10.1016/j.petlm.2017.09.009
research-article
Development of new correlations for the oil formation volume factor in oil reservoirs using artificial intelligent white box technique
Author information +
History +
PDF

Abstract

Oil formation volume factor (OFVF) is considered one of the main parameters required to characterize the crude oil. OFVF is needed in reservoir simulation and prediction of the oil reservoir performance. Existing correlations apply for specific oils and cannot be extended to other oil types. In addition, big errors were obtained when we applied existing correlations to predict the OFVF. There is a massive need to have a global OFVF correlation that can be used for different oils with less error.

The objective of this paper is to develop a new empirical correlation for oil formation volume factor (OFVF) prediction using artificial intelligent techniques (AI) such as; artificial neural network (ANN), adaptive neuro-fuzzy inference system (ANFIS), and support vector machine (SVM). For the first time we changed the ANN model to a white box by extracting the weights and the biases from AI models and form a new empirical equation for OFVF prediction. In this paper we present a new empirical correlation extracted from ANN based on 760 experimental data points for different oils with different compositions.

The results obtained showed that the ANN model yielded the highest correlation coefficient (0.997) and lowest average absolute error (less than 1%) for OFVF prediction as a function of the specific gravity of gas, the dissolved gas to oil ratio, the oil specific gravity, and the temperature of the reservoir compared with ANFIS and SVM. The developed empirical equation from the ANN model outperformed the previous empirical correlations and AI models for OFVF prediction. It can be used to predict the OFVF with a high accuracy.

Keywords

Oil formation volume factor / Artificial intelligent / Reservoir management / Artificial neural network

Cite this article

Download citation ▾
Salaheldin Elkatatny, Mohamed Mahmoud. Development of new correlations for the oil formation volume factor in oil reservoirs using artificial intelligent white box technique. Petroleum, 2018, 4(2): 178-186 DOI:10.1016/j.petlm.2017.09.009

登录浏览全文

4963

注册一个新账户 忘记密码

References

[1]

R. Labedi, Use of production data to estimate volume factor density and compressibility of reservoir fluids, J. Pet. Sci. Eng. 4 (1990) (1990) 375-390.

[2]

M.A. Al-Marhoun, New correlation for formation volume factors of oil and gas mixtures, J. Can. Pet. Technol. 31 (3) (1992) 22-26.

[3]

M.E. Vazquez, Correlations for Fluid Physical Property Predictions, MS Thesis, The University of Tulsa, Tulsa, Oklahoma, 1976.

[4]

M.E. Vazquez, H.D. Beggs, Correlations for fluid physical property prediction, J. Pet. Technol. 32 (6) (1980) 968-970. SPE-6719-PA.

[5]

O. Glasø, Generalized pressure-volume-temperature correlations, J. Pet. Technol. 32 (5) (1980) 785-795. SPE-8016-PA.

[6]

S.M. Macary, M.H. El-Batanoney,Derivation of PVT correlations for the Gulf of Suez crude oils, in:Paper Presented at the EGPC 11th Petroleum Exploration and Production Conference, 1992 (Cairo, Egypt).

[7]

M. Dokla, M. Osman, Correlation of PVT properties for UAE crudes, SPE Form. Eval. J. 7 (1) (1992) 41-46. SPE-20989-PA.

[8]

M.I. Omar, A.C. Todd,Development of new modified black oil correlation for malaysian crudes, in:Paper SPE 25338 Presented at the 1993 SPE Asia Pacific Oil and Gas Conference and Exhibition, 1993, pp. 8-10. Singapore, Feb.

[9]

M.B. Standing, A pressure-volume-temperature correlation for mixtures of California oils and gases, Drill Prod. Pract., API (1947) 275-287, 1947.

[10]

T. Kartoatmodjo,Z. Schmidt, New correlations for crude oil physical properties, 1991. Paper SPE 23556.

[11]

T. Kartoatmodjo, Z. Schmidt, Large data bank improves crude physical property correlations, Oil Gas J. (1994) 51. July 1994.

[12]

M.R.A. Almehaideb,Correlations for UAE crude oils, in:Paper SPE 37691 Presented at the SPE Middle East Oil Show and Conference, 1997, pp. 15-18. Bahrain, March.

[13]

J. Petrosky, F. Farshad,Pressure volume temperature correlation for the Gulf of Mexico, in:Paper SPE 26644 Presented at the 1993 SPE Annual Technical Conference and Exhibition, 1993, pp. 3-6. Houston, TX, Oct.

[14]

R.B. Gharbi, A.M. Elsharkawy, Neural network model for estimating the PVT properties of Middle East crude oils, SPE Reserv. Eval. Eng. 2 (3) (1999) 255-263.

[15]

M.A. Al-Marhoun, E.A. Osman,Using Artificial Neural Networks to Develop New PVT Correlations for Saudi Crude Oils, in:Paper SPE 78592 Presented at the 10th Abu Dhabi International Petroleum Exhibition and Conference (ADIPEC), October 8-11, 2002. Abu Dhabi, UAE.

[16]

E.-S.A. Osman, M.A. Al-Marhoun,Artificial neural networks models for predicting PVT properties of oil field brines, in:Paper SPE 93765-MS Presented at the SPE Middle East Oil and Gas Show and Conference, 2005, pp. 12-15. March, Kingdom of Bahrain.

[17]

A.Á.D. Castillo, E. Santoyo, O. Garcia-Valladare, A new void fraction correlation inferred from artificial neural networks for modeling two-phase flows in geothermal wells, Comput. Geosci. 41 (2012) 25-39.

[18]

M. Graves, S. Liwicki, R. Fernandez, H. Bertolami, J. Bunke, Schmidhuber, A novel connectionist system for improved unconstrained handwriting recognition, IEEE Trans. Pattern Anal. Mach. Intell. 31 (5) (2009) 855-868.

[19]

R.P. Lippmann, An introduction to computing with neural nets, IEEE ASSP Mag. 4 (2) (1987) 4-22.

[20]

G.E. Hinton, S. Osindero, Y. Teh, A fast learning algorithm for deep belief nets, Neural Comput. 18 (7) (2006) 1527-1554.

[21]

S. Mohaghegh, S. Ameri,Artificial neural network as a valuable tool for petroleum engineers, 1995. SPE Pap. 29220-prepared A. T. unsolidated Pap. SPE.

[22]

M.H. Rammay, A. Abdulraheem,Automated history matching using combination of adaptive neuro fuzzy system (ANFIS) and differential evolution algorithm,in:Paper SPE 172992 Presented at the SPE Large Scale Computing and Big Data Challenges in Reservoir Simulation Conference and Exhibition Held in Istanbul, 2014. Turkey.

[23]

H.A. Nooruddin, F. Anifowose, A. Abdulraheem,Applying artificial intelligence techniques to develop permeability predictive models using mercury injection capillary-pressure data, in:Paper SPE 168109 Presented at SPE Saudi Arabia Section Technical Symposium and Exhibition, 2013. Al-Khobar, Saudi Arabia.

[24]

J. Jang, S R. ANFIS: adaptive-network-based fuzzy inference system, IEEE Trans. Syst. Man Cybern. (3) (1993) 23, https://doi.org/10.1109/21.256541.

[25]

P.A. Tahmasebi, Hybrid neural networks-fuzzy logic-genetic algorithm for grade estimation, Comput. Geosci. 42 (2012) 18-27.

[26]

G. Klir, B. Yuan, Fuzzy Sets and Fuzzy Logic: Theory and Applications, Prentice-Hall, Englewood Cliffs, 1995.

[27]

H. Kaydani, A. Mohebbi, A. Baghaie, Neural fuzzy system development for the prediction of permeability from wireline data based on fuzzy clustering, J. Pet. Sci. Eng. 30 (19) (2012) 2036-2045.

[28]

R. Burbidge, M. Trotter, B. Buxto, Drug design by machine learning: support vector machines for pharmaceutical data analysis, Comput. Chem. 26 (1) (2001) 5-14.

[29]

A.H. Ben-Hur, S.H. David, V. Vapnik, Support vector clustering, J. Mach. Learn. Res. 2 (2001) 125-137.

[30]

J.T. Jeng, C.C. Chuang, S.F. Su, Support vector interval regression networks for interval regression analysis, Fuzzy Sets Syst. 138 (2) (2003) 283-300.

[31]

H. William, S.A. Teukolsky, W.T. Vetterling, B.P. Flannery, Support Vector Machines. Numerical Recipes:the Art of Scientific Computing, third ed.ed., Cambridge University Press, New York, 2007. ISBN 978-0-521-88068-8.

[32]

K. Trontl, T. Smuc, D. Pevec, Support vector regression model for the estimation of g-ray buildup factors for multi-layer shields, Ann. Nucl. Energy 34 (12) (2007) 939-952.

[33]

R. Gholami, A.R. Shahraki, P.M. Jamali, Prediction of hydrocarbon reservoirs permeability using support vector machine, Math. Problems Eng. (2012), https://doi.org/10.1155/2012/670723.

[34]

A. Baghbana, M.A. Ahmadi, B. Pouladi, B. Amanna, Phase equilibrium modeling of semi-clathrate hydrates of seven commonly gases in the presence of TBAB ionic liquid promoter based on a low parameter connectionist technique, J. Supercrit. Fluids 101 (2015) 184-192, 2015.

[35]

M.A. Ahmadi, M. Lee, A. Bahadori, Prediction of a solid desiccant dehydrator performance using least squares support vector machines algorithm, J. Taiwan Inst. Chem. Eng. 50 (2015) 115-122, 2015.

[36]

M.A. Ahmadi, M. Ebadi, A. Samadi, M.Z. Siuki, Phase equilibrium modeling of clathrate hydrates of carbon dioxide + 1,4-dioxine using intelligent approaches, J. Dispersion Sci. Technol. 36 (2015) 236-244, 2015.

[37]

M.A. Ahmadi, A. Bahadori, Prediction performance of natural gas dehydration units for water removal efficiency using a least square support vector machine, Int. J. Ambient Energy 37 (5) (2016) 486-494.

[38]

M.A. Ahmadi, S.R. Shadizadeh, New approach for prediction of asphaltene precipitation due to natural depletion by using evolutionary algorithm concept, J. Fuel 102 (2012) 716-723, 2012.

[39]

M.A. Ahmadi, Neural network based unified particle swarm optimization for prediction of asphaltene precipitation, Fluid Phase Equilib. 314 (2012) 46-51, 2012.

[40]

M.A. Ahmadi, M. Golshadi, Neural network based swarm concept for prediction asphaltene precipitation due natural depletion, J. Pet. Sci. Eng. 98-99 (2012) 40-49, 2012.

[41]

Prediction of asphaltene precipitation using artificial neural network optimized by imperialist competitive algorithm, J. Pet. Explor. Prod. Technol. 1 (2011) 99-106.

[42]

M.A. Ahmadi, M. Mohammad Zahedzadeh, S.R. Seyed Reza Shadizadeh, R. Abbassi, Connectionist model for predicting minimum gas miscibility pressure: application to gas injection process, Fuel 148 (2015) 202-211, 2015.

[43]

M.A. Ahmadi, A. Ahmadi, Applying a sophisticated approach to predict CO2 solubility in brines: application to CO2 sequestration, Int. J. Low-Carbon Technol. 11 (2016) 325-332.

[44]

M.A. Ahmadi, B. Pouladi, Y. Javvi, S. Alfkhani, R. Soleimani, Connectionist technique estimates H2S solubility in ionic liquids through a low parameter approach, J. Supercrit. Fluids 97 (2015) 81-87, 2015.

[45]

A. Shafiei, M.A. Ahmadi, S.H. Zaheri, A. Baghbana, A. Amirfakhrian, R. Soleimani, Estimating hydrogen sulfide solubility in ionic liquids using a machine learning approach, J. Supercrit. Fluids (2014) 525-534, 2014.

[46]

A.M. Ahmadi, A. Ebadi, Robust intelligent tool for estimation dew point pressure in retrograded condensate gas reservoirs: application of particle swarm optimization, J. Pet. Sci. Eng. 123C (2014) 5-17, 2014.

[47]

A.M. Ahmadi, A. Elsharkawy, Robust correlation to predict dew point pressure of gas condensate reservoirs, Petroleum (2016), https://doi.org/10.1016/j.petlm.2016.05.001, 2016.

[48]

A.M. Ahmadi, A. Ebadi, Evolving smart approach for determination dew point pressure through condensate gas reservoirs, Fuel 117 (2014) 1074-1084, 2014.

[49]

S.M. Elkatatny, M.A. Mahmoud, T. Zeeshan, A. Abdulraheem, New insights into the prediction of heterogeneous carbonate reservoir permeability from well logs using artificial intelligent network, Neural Comput. Appl. (2017), https://doi.org/10.1007/s00521-017-2850-x, 2017.

[50]

M.A. Ahmadi, B. Pouladi, Y. Javvi, S. Alfkhani, R. Soleimani, Connectionist approach estimates gas-oil relative permeability in petroleum reservoirs: application to reservoir simulation, Fuel 140 (2015) 429-439, 2015.

[51]

M.A. Ahmadi, M.R. Ahmadi, S.M. Hosseini, M. Ebadi, Connectionist model predicts porosity and permeability of petroleum reservoirs by means of petrophysical logs: application of artificial intelligence, J. Pet. Sci. Eng. 123 (2014) 183-200, 2014.

[52]

M.A. Ahmadi, M. Masoumi, R. Askarinezhad, Evolving smart model to predict combustion front velocity throughout in-situ combustion process employment, Energy Technol. (3) (2015) 128-135, 2015.

[53]

M.A. Ahmadi, M. Masoumi, R. Askarinezhad, Evolving connectionist model to monitor efficiency of the in-situ combustion process: application to heavy oil recovery, J. Energy Technol. 2 (9-10) (2014) 811-818.

[54]

M.A. Ahmadi, M. Masoumi, R. Kharrat, H. Amir, A.H. Mohammad, Gas analysis by in situ combustion in heavy oil recovery process: experimental and modeling studies, J. Chem. Eng. Technol. 37 (3) (2014) 409-418.

[55]

D.L. Katz, Prediction of shrinkage of crude oils, Drill Prod. Pract., API (1942) 137-147.

[56]

M.A. Al-Marhoun, PVT correlations for Middle East crude oils, J. Pet. Technol. 40 (5) (1988) 650-666.

[57]

G. Ghetto, D.F. Aone, M. Villa,Reliability Analysis on PVT Correlation, Paper SPE 28904 presented at The SPE European Petroleum Conference, London, UK, 1994. October 25-27.

PDF

0

Accesses

0

Citation

Detail

Sections
Recommended

/