SPE Asia Pacific Oil and Gas Conference and Exhibition 2002
DOI: 10.2118/77878-ms
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Application of Neural Network to the Determination of Well-Test Interpretation Model for Horizontal Wells

Abstract: TX 75083-3836, U.S.A., fax 01-972-952-9435. AbstractWell-test model identification and, subsequently, model parameters determination are more complex in horizontal wells than in vertical wells. This is due to the increase in number of flow regimes occurring during a flow period and the fact that strong correlation exists between model parameters.This study presents a new approach for automatic model identification and computer-aided well-test interpretation in horizontal wells. The new approach is based on usi… Show more

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Cited by 17 publications
(8 citation statements)
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“…Since that time, the applications of ANNs in addressing conventional problems of the petroleum industry have been widely studied. Some examples found in literature are: well log interpretation (Baldwin, Otte andWhealtley 1989, Masoud 1998, Jong-Se and Jungwhan 2004), well test data analysis (Al-Kaabi and Lee 1990, Ershaghi, et al 1993, Athichanagorn and Horne 1995, Sultanp and Al-Kaabi 2002, reservoir characterization (Mohaghegh, et al 1995, Ahmed, et al 1997, Singh, et al 2008, calibration of seismic attributes (David 1993), seismic pattern recognition (Yang and Huang 1991), inversion of seismic waveforms (Roth and Tarantoia 1992), prediction of PVT data (Briones, et al 1994, Gharbi and Elsharkawy 1997, Osman, Abdel-Wahhab and Al-Marhoun 2001, Oloso, et al 2009, fractures and faults identification (L. Thomas and Pointe 1995, Key, et al 1997, Sadiq and I.S. Nashawi 2000, Aminzadeh and deGroot 2005, hydrocarbons detection (Cheng-Dang, et al 1994, Aminzadeh anddeGroot 2005), formation damage forecast (Nikravesh, et al 1996, Kalam, Al-Alawi andAl-Mukheini 1996), and more.…”
Section: Anns In Petroleum Engineeringmentioning
confidence: 99%
“…Since that time, the applications of ANNs in addressing conventional problems of the petroleum industry have been widely studied. Some examples found in literature are: well log interpretation (Baldwin, Otte andWhealtley 1989, Masoud 1998, Jong-Se and Jungwhan 2004), well test data analysis (Al-Kaabi and Lee 1990, Ershaghi, et al 1993, Athichanagorn and Horne 1995, Sultanp and Al-Kaabi 2002, reservoir characterization (Mohaghegh, et al 1995, Ahmed, et al 1997, Singh, et al 2008, calibration of seismic attributes (David 1993), seismic pattern recognition (Yang and Huang 1991), inversion of seismic waveforms (Roth and Tarantoia 1992), prediction of PVT data (Briones, et al 1994, Gharbi and Elsharkawy 1997, Osman, Abdel-Wahhab and Al-Marhoun 2001, Oloso, et al 2009, fractures and faults identification (L. Thomas and Pointe 1995, Key, et al 1997, Sadiq and I.S. Nashawi 2000, Aminzadeh and deGroot 2005, hydrocarbons detection (Cheng-Dang, et al 1994, Aminzadeh anddeGroot 2005), formation damage forecast (Nikravesh, et al 1996, Kalam, Al-Alawi andAl-Mukheini 1996), and more.…”
Section: Anns In Petroleum Engineeringmentioning
confidence: 99%
“…In this approach, the objective function is modified by adding a penalty term to prevent the large weights. In other words, the objective function, (4) where S e 2 is the mean squared error (MSE), N is the number of training samples, n is the number of weights, e i is the error of prediction of each training sample and λ is the performance ratio 14 , which forces the network to less overfit the data. λ = 0.5 is a common choice.…”
Section: Anns With Small Datasetsmentioning
confidence: 99%
“…ANNs have numerous applications in geosciences and petroleum engineering e.g. permeability prediction 3 , fluid properties prediction 4 and well test data analysis 5 .…”
Section: Introductionmentioning
confidence: 99%
“…• Application of NNs in well log interpretation (Baldwin, Otte, & Whealtley, 1989) (Jong-Se & Jungwhan, 2004) (Masoud, 1998) • Using NNs in well test data analysis (Al-Kaabi & Lee, 1990) (Ershaghi, Li, Hassibi, & Shikari, 1993) (Athichanagorn & Horne, 1995) (Sultanp & Al-Kaabi, 2002) • NNs a helpful tool in reservoir characterization (Mohaghegh., Arefi, Ameri., & Rose., 1995) (Ahmed, Link, Porter, Wideman, Himmer, & Braun, 1997) (Singh, Painuly, Srivastava, Tiwary, & Chandra, 2008) • Application of NNs to calibrate seismic attributes (David, 1993), seismic pattern recognition (Yang & Huang, 1991), inversion of seismic waveforms (Roth & Tarantoia, 1992) • Prediction of PVT data (Briones, Rojas, Moreno, & Martinez, 1994) (Gharbi & Elsharkawy, 1997) (Osman, Abdel-Wahhab, & Al-Marhoun, 2001) (Oloso, Khoukhi, Abdulraheem, & Elshafei, 2009) • Identifying fractures and faults (L. Thomas & Pointe, 1995) (Key, Nielsen, Signer, Sønneland, Waagbø, & H. Veire, 1997) (Sadiq & I.S. Nashawi, 2000) (Aminzadeh & deGroot, 2005) • Detecting hydrocarbons (Cheng-Dang, Wu, Mo, Zhu, & Xu, 1994) (Aminzadeh & deGroot, 2005), forecast formation damage (Nikravesh, Kovscek, Johnston, & Patzek, 1996) (Kalam, Al-Alawi, & Al-Mukheini, 1996) etc…”
Section: Application Of Neural Network In Petroleum Engineeringmentioning
confidence: 99%