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Erschienen in: Neural Computing and Applications 11/2018

21.10.2016 | Original Article

Estimation of P- and S-wave impedances using Bayesian inversion and adaptive neuro-fuzzy inference system from a carbonate reservoir in Iran

verfasst von: Sadegh Karimpouli, Hadi Fattahi

Erschienen in: Neural Computing and Applications | Ausgabe 11/2018

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Abstract

P- and S-wave impedances are accounted as two significant parameters conventionally inverted from seismic amplitudes for evaluation of gas and oil reservoirs. They may not be the final goal of interpretation studies; however, they play an important role in many methods such as reservoir characterization, rock physical modeling, geostatistical simulation, fluid detection. Bayesian inversion is a conventional method used by many researchers and even by industry to invert these parameters. To compare this method with intelligent methods, the adaptive network-based fuzzy inference system (ANFIS) was utilized to construct a model for the prediction of P- and S-wave impedances. Two ANFIS models were implemented, subtractive clustering method (SCM) and fuzzy c-means clustering method. The prediction capabilities offered by ANFIS models were shown by using field data obtained from a carbonate reservoir in Iran. Unlike other studies, input parameters, in this study, are pre-stack seismic data and attributes, while the P- and S-wave impedances are the output parameters in all methods. Mean square error was used for comparison of the performance of those models. The obtained results show that the ANFIS-SCM model generates the best indirect estimation of P- and S-wave impedances with high degree of accuracy and robustness.

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Literatur
1.
Zurück zum Zitat Farfour M, Yoon WJ, Kim J (2015) Seismic attributes and acoustic impedance inversion in interpretation of complex hydrocarbon reservoirs. J Appl Geophys 114:68–80CrossRef Farfour M, Yoon WJ, Kim J (2015) Seismic attributes and acoustic impedance inversion in interpretation of complex hydrocarbon reservoirs. J Appl Geophys 114:68–80CrossRef
2.
Zurück zum Zitat Karimpouli S, Hassani H, Nabi-Bidhendi M, Khoshdel H, Malehmir A (2013) Application of probabilistic facies prediction and estimation of rock physics parameters in a carbonate reservoir from Iran. J Geophys Eng 10(1):015008CrossRef Karimpouli S, Hassani H, Nabi-Bidhendi M, Khoshdel H, Malehmir A (2013) Application of probabilistic facies prediction and estimation of rock physics parameters in a carbonate reservoir from Iran. J Geophys Eng 10(1):015008CrossRef
3.
Zurück zum Zitat González EF, Mukerji T, Mavko G (2007) Seismic inversion combining rock physics and multiple-point geostatistics. Geophysics 73(1):R11–R21CrossRef González EF, Mukerji T, Mavko G (2007) Seismic inversion combining rock physics and multiple-point geostatistics. Geophysics 73(1):R11–R21CrossRef
4.
Zurück zum Zitat Tahmasebi P, Sahimi M (2015) Geostatistical simulation and reconstruction of porous media by a cross-correlation function and integration of hard and soft data. Transp Porous Med 107(3):871–905CrossRef Tahmasebi P, Sahimi M (2015) Geostatistical simulation and reconstruction of porous media by a cross-correlation function and integration of hard and soft data. Transp Porous Med 107(3):871–905CrossRef
5.
Zurück zum Zitat Malehmir A, Durrheim R, Bellefleur G, Urosevic M, Juhlin C, White DJ, Milkereit B, Campbell G (2012) Seismic methods in mineral exploration and mine planning: a general overview of past and present case histories and a look into the future. Geophysics 77(5):173–190CrossRef Malehmir A, Durrheim R, Bellefleur G, Urosevic M, Juhlin C, White DJ, Milkereit B, Campbell G (2012) Seismic methods in mineral exploration and mine planning: a general overview of past and present case histories and a look into the future. Geophysics 77(5):173–190CrossRef
6.
Zurück zum Zitat Khalid P, Ahmed N, Mahmood A, Saleem MA (2015) An integrated seismic interpretation and rock physics attribute analysis for pore fluid discrimination. Arab J Sci Eng 41(1):1–10 Khalid P, Ahmed N, Mahmood A, Saleem MA (2015) An integrated seismic interpretation and rock physics attribute analysis for pore fluid discrimination. Arab J Sci Eng 41(1):1–10
7.
Zurück zum Zitat Duijndam A (1988) Bayesian estimation in seismic inversion. Part i: PRINCIPLES1. Geophys Prospect 36(8):878–898CrossRef Duijndam A (1988) Bayesian estimation in seismic inversion. Part i: PRINCIPLES1. Geophys Prospect 36(8):878–898CrossRef
8.
Zurück zum Zitat Ulrych TJ, Sacchi MD, Woodbury A (2001) A Bayes tour of inversion: a tutorial. Geophysics 66(1):55–69CrossRef Ulrych TJ, Sacchi MD, Woodbury A (2001) A Bayes tour of inversion: a tutorial. Geophysics 66(1):55–69CrossRef
9.
Zurück zum Zitat Tarantola A (2005) Inverse problem theory and methods for model parameter estimation. SIAM, PhiladelphiaCrossRefMATH Tarantola A (2005) Inverse problem theory and methods for model parameter estimation. SIAM, PhiladelphiaCrossRefMATH
10.
Zurück zum Zitat Buland A, Omre H (2003) Bayesian linearized AVO inversion. Geophysics 68(1):185–198CrossRef Buland A, Omre H (2003) Bayesian linearized AVO inversion. Geophysics 68(1):185–198CrossRef
11.
Zurück zum Zitat Karimpouli S, Malehmir A (2015) Neuro-Bayesian facies inversion of prestack seismic data from a carbonate reservoir in Iran. J Pet Sci Eng 131:11–17CrossRef Karimpouli S, Malehmir A (2015) Neuro-Bayesian facies inversion of prestack seismic data from a carbonate reservoir in Iran. J Pet Sci Eng 131:11–17CrossRef
12.
Zurück zum Zitat Zhao L, Geng J, Cheng J, D-h Han, Guo T (2014) Probabilistic lithofacies prediction from prestack seismic data in a heterogeneous carbonate reservoir. Geophysics 79(5):M25–M34CrossRef Zhao L, Geng J, Cheng J, D-h Han, Guo T (2014) Probabilistic lithofacies prediction from prestack seismic data in a heterogeneous carbonate reservoir. Geophysics 79(5):M25–M34CrossRef
13.
Zurück zum Zitat Grana D, Della Rossa E (2010) Probabilistic petrophysical-properties estimation integrating statistical rock physics with seismic inversion. Geophysics 75(3):O21–O37CrossRef Grana D, Della Rossa E (2010) Probabilistic petrophysical-properties estimation integrating statistical rock physics with seismic inversion. Geophysics 75(3):O21–O37CrossRef
14.
Zurück zum Zitat Buland A, Kolbjørnsen O, Hauge R, Skjæveland Ø, Duffaut K (2008) Bayesian lithology and fluid prediction from seismic prestack data. Geophysics 73(3):13–21CrossRef Buland A, Kolbjørnsen O, Hauge R, Skjæveland Ø, Duffaut K (2008) Bayesian lithology and fluid prediction from seismic prestack data. Geophysics 73(3):13–21CrossRef
15.
Zurück zum Zitat Karimpouli S, Hassani H, Khoshdel H, Malehmir A, Nabi-Bidhendi M (2014) Detection of high quality parts of hydrocarbon reservoirs using bayesian facies estimation: a case study on a carbonate reservoir from Iran. Advances in data, methods, models and their applications in oil/gas exploration, pp 93–130 Karimpouli S, Hassani H, Khoshdel H, Malehmir A, Nabi-Bidhendi M (2014) Detection of high quality parts of hydrocarbon reservoirs using bayesian facies estimation: a case study on a carbonate reservoir from Iran. Advances in data, methods, models and their applications in oil/gas exploration, pp 93–130
16.
Zurück zum Zitat Jang JSR (1993) ANFIS: adaptive-network-based fuzzy inference system. IEEE T Syst Man Cybern 23(3):665–685CrossRef Jang JSR (1993) ANFIS: adaptive-network-based fuzzy inference system. IEEE T Syst Man Cybern 23(3):665–685CrossRef
17.
Zurück zum Zitat Fattahi H, Karimpouli S (2016) Prediction of porosity and water saturation using pre-stack seismic attributes: a comparison of Bayesian inversion and computational intelligence methods. Comput Geosci 20(5):1–20MathSciNetCrossRefMATH Fattahi H, Karimpouli S (2016) Prediction of porosity and water saturation using pre-stack seismic attributes: a comparison of Bayesian inversion and computational intelligence methods. Comput Geosci 20(5):1–20MathSciNetCrossRefMATH
18.
Zurück zum Zitat Rezaee MR, Kadkhodaie Ilkhchi A, Barabadi A (2007) Prediction of shear wave velocity from petrophysical data utilizing intelligent systems: an example from a sandstone reservoir of Carnarvon Basin, Australia. J Pet Sci Eng 55(3):201–212CrossRef Rezaee MR, Kadkhodaie Ilkhchi A, Barabadi A (2007) Prediction of shear wave velocity from petrophysical data utilizing intelligent systems: an example from a sandstone reservoir of Carnarvon Basin, Australia. J Pet Sci Eng 55(3):201–212CrossRef
19.
Zurück zum Zitat Zoveidavianpoor M, Samsuri A, Shadizadeh SR (2013) Adaptive neuro fuzzy inference system for compressional wave velocity prediction in a carbonate reservoir. J Appl Geophys 89:96–107CrossRef Zoveidavianpoor M, Samsuri A, Shadizadeh SR (2013) Adaptive neuro fuzzy inference system for compressional wave velocity prediction in a carbonate reservoir. J Appl Geophys 89:96–107CrossRef
20.
Zurück zum Zitat Ansari HR (2014) Use seismic colored inversion and power law committee machine based on imperial competitive algorithm for improving porosity prediction in a heterogeneous reservoir. J Appl Geophys 108:61–68CrossRef Ansari HR (2014) Use seismic colored inversion and power law committee machine based on imperial competitive algorithm for improving porosity prediction in a heterogeneous reservoir. J Appl Geophys 108:61–68CrossRef
21.
Zurück zum Zitat Golsanami N, Kadkhodaie-Ilkhchi A, Erfani A (2015) Synthesis of capillary pressure curves from post-stack seismic data with the use of intelligent estimators: a case study from the Iranian part of the South Pars gas field, Persian Gulf Basin. J Appl Geophys 112:215–225CrossRef Golsanami N, Kadkhodaie-Ilkhchi A, Erfani A (2015) Synthesis of capillary pressure curves from post-stack seismic data with the use of intelligent estimators: a case study from the Iranian part of the South Pars gas field, Persian Gulf Basin. J Appl Geophys 112:215–225CrossRef
22.
Zurück zum Zitat Rajabi M, Bohloli B, Gholampour Ahangar E (2010) Intelligent approaches for prediction of compressional, shear and Stoneley wave velocities from conventional well log data: a case study from the Sarvak carbonate reservoir in the Abadan Plain (Southwestern Iran). Comput Geosci 36(5):647–664CrossRef Rajabi M, Bohloli B, Gholampour Ahangar E (2010) Intelligent approaches for prediction of compressional, shear and Stoneley wave velocities from conventional well log data: a case study from the Sarvak carbonate reservoir in the Abadan Plain (Southwestern Iran). Comput Geosci 36(5):647–664CrossRef
23.
Zurück zum Zitat Asoodeh M, Bagheripour P (2012) Prediction of compressional, shear, and stoneley wave velocities from conventional well log data using a committee machine with intelligent systems. Rock Mech Rock Eng 45(1):45–63CrossRef Asoodeh M, Bagheripour P (2012) Prediction of compressional, shear, and stoneley wave velocities from conventional well log data using a committee machine with intelligent systems. Rock Mech Rock Eng 45(1):45–63CrossRef
24.
Zurück zum Zitat Mojeddifar S, Kamali G, Ranjbar H, Salehipour Bavarsad B (2014) A comparative study between a pseudo-forward equation (PFE) and intelligence methods for the characterization of the north sea reservoir. Int J Min Geo Eng 48(2):173–190 Mojeddifar S, Kamali G, Ranjbar H, Salehipour Bavarsad B (2014) A comparative study between a pseudo-forward equation (PFE) and intelligence methods for the characterization of the north sea reservoir. Int J Min Geo Eng 48(2):173–190
25.
Zurück zum Zitat Aki K, Richards PG (2002) Quantitative seismology, vol 1. W H Freeman & Co., San Francisco Aki K, Richards PG (2002) Quantitative seismology, vol 1. W H Freeman & Co., San Francisco
26.
Zurück zum Zitat Chiu SL (1994) Fuzzy model identification based on cluster estimation. J Intell Fuzzy Syst 2(3):267–278 Chiu SL (1994) Fuzzy model identification based on cluster estimation. J Intell Fuzzy Syst 2(3):267–278
27.
Zurück zum Zitat Bezdek JC (1973) Fuzzy mathematics in pattern classification. Cornell University, Ithaca Bezdek JC (1973) Fuzzy mathematics in pattern classification. Cornell University, Ithaca
28.
Zurück zum Zitat Malehmir A, Juhlin C, Wijns C, Urosevic M, Valasti P, Koivisto E (2012) 3D reflection seismic imaging for open-pit mine planning and deep exploration in the Kevitsa Ni-Cu-PGE deposit, northern Finland. Geophysics 77(5):95–108CrossRef Malehmir A, Juhlin C, Wijns C, Urosevic M, Valasti P, Koivisto E (2012) 3D reflection seismic imaging for open-pit mine planning and deep exploration in the Kevitsa Ni-Cu-PGE deposit, northern Finland. Geophysics 77(5):95–108CrossRef
29.
Zurück zum Zitat Backus G (1962) Long-wave elastic anisotropy reduced by horizontal layering. J Geophys Res 67:4427–4440CrossRefMATH Backus G (1962) Long-wave elastic anisotropy reduced by horizontal layering. J Geophys Res 67:4427–4440CrossRefMATH
31.
Zurück zum Zitat Tahmasebi P, Hezarkhani A (2011) Application of a modular feedforward neural network for grade estimation. Nat Resour Res 20(1):25–32CrossRef Tahmasebi P, Hezarkhani A (2011) Application of a modular feedforward neural network for grade estimation. Nat Resour Res 20(1):25–32CrossRef
32.
Zurück zum Zitat Tahmasebi P, Hezarkhani A (2010) Comparison of optimized neural network with fuzzy logic for ore grade estimation. Aust J Basic Appl Sci 4(5):764–772 Tahmasebi P, Hezarkhani A (2010) Comparison of optimized neural network with fuzzy logic for ore grade estimation. Aust J Basic Appl Sci 4(5):764–772
Metadaten
Titel
Estimation of P- and S-wave impedances using Bayesian inversion and adaptive neuro-fuzzy inference system from a carbonate reservoir in Iran
verfasst von
Sadegh Karimpouli
Hadi Fattahi
Publikationsdatum
21.10.2016
Verlag
Springer London
Erschienen in
Neural Computing and Applications / Ausgabe 11/2018
Print ISSN: 0941-0643
Elektronische ISSN: 1433-3058
DOI
https://doi.org/10.1007/s00521-016-2636-6

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