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[314] Lindsay R O, Bocanegra D. Sand Thickness Prediction From Band-limited Seismic Attributes Using Neural Networks: Oriente Basin, Ecuador[Z]. Salt Lake City, Utah: Society of Exploration Geophysicists, 20024.
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[318] Varotsis N, Gaganis V, Nighswander J. Quality Assurance Tool for PVT Simulator Predictions[J]. SPE Reservoir Evaluation & Engineering, 2002,5(06):499-506.
[319] Tyagi A K, Bhaduri A. Porosity Analysis Using Borehole Electrical Images In Carbonate Reservoirs[Z]. Oiso, Japan: Society of Petrophysicists and Well-Log Analysts, 20029.
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[321] Finol J, Buitrago S. Model Identification with Fuzzy-Optimisation Techniques in Geological Data Mining[Z]. Aberdeen, United Kingdom: Society of Petroleum Engineers, 20026.
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[324] Gao L. Fast Induction Log Inversion Using Quasi-Newton Updates[Z]. San Antonio, Texas: Society of Petroleum Engineers, 200210.
[325] Lee S H, Kharghoria A, Datta-Gupta A. Electrofacies Characterization and Permeability Predictions in Complex Reservoirs[J]. SPE Reservoir Evaluation & Engineering, 2002,5(03):237-248.
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[327] Kravis S, Irrgang R, Phatak A, et al. Drilling Parameter Selection for Well Quality Enhancement in Deepwater Environments[Z]. San Antonio, Texas: Society of Petroleum Engineers, 200214.
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[330] Finol J, Romero C, Romero P. An Intelligent Identification Method of Fuzzy Models and Its Applications to Inversion of NMR Logging Data[Z]. San Antonio, Texas: Society of Petroleum Engineers, 20025.
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[341] Aristodemou E, Pain C, de Oliveira C, et al. Subsurface Properties Determination From Nuclear Well-Logging Data Using Neural Networks[Z]. Galveston, Texas: Society of Petrophysicists and Well-Log Analysts, 200314.
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[348] Karadavut A, Hurley N F. Petrophysics-Based Flow Unit Determination In The Phosphoria Formation, Little Sand Draw Field, Wyoming[Z]. Galveston, Texas: Society of Petrophysicists and Well-Log Analysts, 200314.
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[358] Zhenyu Z, Hong L, Youming L. Logging Identification And Evaluation of Cambrian-ordovician Source Rock In Tarim Basin[Z]. Dallas, Texas: Society of Exploration Geophysicists, 20033.
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[367] Suryodipuro H D, Thomas B D. Competency, Development, and Training: Tools for Building Engineers of the Future[Z]. Jakarta, Indonesia: Society of Petroleum Engineers, 20036.
[368] Ohen H A. Calibrated Wireline Mechanical Rock Properties Model for Predicting and Preventing Wellbore Collapse and Sanding.[Z]. The Hague, Netherlands: Society of Petroleum Engineers, 200318.
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[395] Nakamura M, Shima T. Position Control of Floating Structure By Neural-Net Controller[Z]. Toulon, France: International Society of Offshore and Polar Engineers, 20048.
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[422] Zoraster S, Paruchuri R, Darby S. Curve Alignment for Well-to-Well Log Correlation[Z]. Houston, Texas: Society of Petroleum Engineers, 20046.
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[454] Bischoff R, Bejaoui R. Integrated Modeling of the Mature Ashtart Field, Tunisia[Z]. Madrid, Spain: Society of Petroleum Engineers, 20058.
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posted @ 2019-12-25 17:00  askua  阅读(873)  评论(0)    收藏  举报