Reservoir Property Prediction from Well-logs, VSP and Multicomponent Seismic Data

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ISBN 13 :
Total Pages : 186 pages
Book Rating : 4.:/5 (15 download)

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Book Synopsis Reservoir Property Prediction from Well-logs, VSP and Multicomponent Seismic Data by : Natalia Soubotcheva

Download or read book Reservoir Property Prediction from Well-logs, VSP and Multicomponent Seismic Data written by Natalia Soubotcheva and published by . This book was released on 2006 with total page 186 pages. Available in PDF, EPUB and Kindle. Book excerpt:

Computational Geo-Electromagnetics

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Publisher : Elsevier
ISBN 13 : 0128208201
Total Pages : 464 pages
Book Rating : 4.1/5 (282 download)

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Book Synopsis Computational Geo-Electromagnetics by : Viacheslav V. Spichak

Download or read book Computational Geo-Electromagnetics written by Viacheslav V. Spichak and published by Elsevier. This book was released on 2020-02-01 with total page 464 pages. Available in PDF, EPUB and Kindle. Book excerpt: Computational Geo-Electromagnetics: Methods, Models, and Forecasts, Volume Five in the Computational Geophysics series, is devoted to techniques for building of geoelectrical models from electromagnetic data, featuring Bayesian statistical analysis and neural network algorithms. These models are applied to studying the geoelectrical structure of famous volcanoes (i.e., Vesuvio, Kilauea, Elbrus, Komagatake, Hengill) and geothermal zones (i.e., Travale, Italy; Soultz-sous-Forets, Elsace). Methodological recommendations are given on electromagnetic sounding of faults as well as geothermal and hydrocarbon reservoirs. Techniques for forecasting of petrophysical properties from the electrical resistivity as proxy parameter are also considered. Computational Geo-Electromagnetics: Methods, Models, and Forecasts offers techniques and algorithms for building geoelectrical models under conditions of rare or irregularly distributed EM data and/or lack of prior geological and geophysical information. This volume also includes methodological guidelines on interpretation of electromagnetic sounding data depending on goals of the study. Finally, it details computational algorithms for using electrical resistivity for properties beyond boreholes. Provides algorithms for inversion of incomplete, rare or irregularly distributed EM data Features methodological issues of building geoelectrical models Offers techniques for retrieving petrophysical properties from EM sounding data and well logs

An Intelligent Systems Approach to Reservoir Characterization

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ISBN 13 :
Total Pages : pages
Book Rating : 4.:/5 (316 download)

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Book Synopsis An Intelligent Systems Approach to Reservoir Characterization by : Thomas H. Wilson

Download or read book An Intelligent Systems Approach to Reservoir Characterization written by Thomas H. Wilson and published by . This book was released on 2005 with total page pages. Available in PDF, EPUB and Kindle. Book excerpt: Today, the major challenge in reservoir characterization is integrating data coming from different sources in varying scales, in order to obtain an accurate and high-resolution reservoir model. The role of seismic data in this integration is often limited to providing a structural model for the reservoir. Its relatively low resolution usually limits its further use. However, its areal coverage and availability suggest that it has the potential of providing valuable data for more detailed reservoir characterization studies through the process of seismic inversion. In this paper, a novel intelligent seismic inversion methodology is presented to achieve a desirable correlation between relatively low-frequency seismic signals, and the much higher frequency wireline-log data. Vertical seismic profile (VSP) is used as an intermediate step between the well logs and the surface seismic. A synthetic seismic model is developed by using real data and seismic interpretation. In the example presented here, the model represents the Atoka and Morrow formations, and the overlying Pennsylvanian sequence of the Buffalo Valley Field in New Mexico. Generalized regression neural network (GRNN) is used to build two independent correlation models between; (1) Surface seismic and VSP, (2) VSP and well logs. After generating virtual VSP's from the surface seismic, well logs are predicted by using the correlation between VSP and well logs. The values of the density log, which is a surrogate for reservoir porosity, are predicted for each seismic trace through the seismic line with a classification approach having a correlation coefficient of 0.81. The same methodology is then applied to real data taken from the Buffalo Valley Field, to predict inter-well gamma ray and neutron porosity logs through the seismic line of interest. The same procedure can be applied to a complete 3D seismic block to obtain 3D distributions of reservoir properties with less uncertainty than the geostatistical estimation methods. The intelligent seismic inversion method should help to increase the success of drilling new wells during field development.

Stratigraphic Reservoir Characterization for Petroleum Geologists, Geophysicists, and Engineers

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Publisher : Elsevier Inc. Chapters
ISBN 13 : 0128082704
Total Pages : 105 pages
Book Rating : 4.1/5 (28 download)

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Book Synopsis Stratigraphic Reservoir Characterization for Petroleum Geologists, Geophysicists, and Engineers by : Roger M. Slatt

Download or read book Stratigraphic Reservoir Characterization for Petroleum Geologists, Geophysicists, and Engineers written by Roger M. Slatt and published by Elsevier Inc. Chapters. This book was released on 2013-11-21 with total page 105 pages. Available in PDF, EPUB and Kindle. Book excerpt: There are many tools and techniques for characterizing oil and gas reservoirs. Seismic-reflection techniques include conventional 2D and 3D seismic, 4D time-lapse seismic, multicomponent seismic, crosswell seismic, seismic inversion, and seismic attribute analysis, all designed to enhance stratigraphy/structure detection, resolution, and characterization. These techniques are constantly being improved. Drilling and coring a well provides the “ground truth” for seismic interpretation. Rock formations are directly sampled by cuttings and by core and indirectly characterized with a variety of conventional and specialized well logs. To maximize characterization and optimize production, many of these tools as possible should be employed. It is often less expensive to utilize a wide variety of tools that directly image or measure reservoir properties at different scales than to drill one or two dry holes.

Seismic Reservoir Modeling

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Publisher : John Wiley & Sons
ISBN 13 : 1119086205
Total Pages : 256 pages
Book Rating : 4.1/5 (19 download)

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Book Synopsis Seismic Reservoir Modeling by : Dario Grana

Download or read book Seismic Reservoir Modeling written by Dario Grana and published by John Wiley & Sons. This book was released on 2021-05-04 with total page 256 pages. Available in PDF, EPUB and Kindle. Book excerpt: Seismic reservoir characterization aims to build 3-dimensional models of rock and fluid properties, including elastic and petrophysical variables, to describe and monitor the state of the subsurface for hydrocarbon exploration and production and for CO2 sequestration. Rock physics modeling and seismic wave propagation theory provide a set of physical equations to predict the seismic response of subsurface rocks based on their elastic and petrophysical properties. However, the rock and fluid properties are generally unknown and surface geophysical measurements are often the only available data to constrain reservoir models far away from well control. Therefore, reservoir properties are generally estimated from geophysical data as a solution of an inverse problem, by combining rock physics and seismic models with inverse theory and geostatistical methods, in the context of the geological modeling of the subsurface. A probabilistic approach to the inverse problem provides the probability distribution of rock and fluid properties given the measured geophysical data and allows quantifying the uncertainty of the predicted results. The reservoir characterization problem includes both discrete properties, such as facies or rock types, and continuous properties, such as porosity, mineral volumes, fluid saturations, seismic velocities and density. Seismic Reservoir Modeling: Theory, Examples and Algorithms presents the main concepts and methods of seismic reservoir characterization. The book presents an overview of rock physics models that link the petrophysical properties to the elastic properties in porous rocks and a review of the most common geostatistical methods to interpolate and simulate multiple realizations of subsurface properties conditioned on a limited number of direct and indirect measurements based on spatial correlation models. The core of the book focuses on Bayesian inverse methods for the prediction of elastic petrophysical properties from seismic data using analytical and numerical statistical methods. The authors present basic and advanced methodologies of the current state of the art in seismic reservoir characterization and illustrate them through expository examples as well as real data applications to hydrocarbon reservoirs and CO2 sequestration studies.

Practical Solutions to Integrated Oil and Gas Reservoir Analysis

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Publisher : Elsevier
ISBN 13 : 0128054603
Total Pages : 454 pages
Book Rating : 4.1/5 (28 download)

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Book Synopsis Practical Solutions to Integrated Oil and Gas Reservoir Analysis by : Enwenode Onajite

Download or read book Practical Solutions to Integrated Oil and Gas Reservoir Analysis written by Enwenode Onajite and published by Elsevier. This book was released on 2017-05-19 with total page 454 pages. Available in PDF, EPUB and Kindle. Book excerpt: Practical Solutions to Integrated Oil and Gas Reservoir Analysis: Geophysical and Geological Perspectives is a well-timed source of information addressing the growing integration of geophysical, geological, reservoir engineering, production, and petrophysical data in predicting and determining reservoir properties. These include reservoir extent and sand development away from the well bore, characterizations of undrilled prospects, and optimization planning for field development. As such, geoscientists must now learn the technology, processes, and challenges involved within their specific functions in order to complete day-to-day activities. A broad collection of real-life problems and challenging questions encountered by geoscientists in the exploration and development of oil and gas fields, the book treats subjects ranging from Basin Analysis, to identifying and mapping structures, stratigraphy, the distribution of fracture, and the identification of pore fluids. Looking at the well-to-seismic tie, time-to-depth conversion, AVO analysis, seismic inversion, rock physics, and pore pressure analysis/prediction, the text examines challenges encountered in these technical areas, and also includes solutions and techniques used to overcome those challenges. Presents a thorough understanding of the contributions and issues faced by the various disciplines that contribute towards characterizing a wide spectrum of reservoirs (Conventional, Shale Oil and Gas, as well as Carbonate reservoirs) Provides a much needed and integrated approach amongst disciplines including geology, geophysics, petrophysics, reservoir and drilling engineering Includes case studies on different reservoir settings from around the world including Western Canadian Sedimentary Basin, Gulf of Guinea, Gulf of Mexico, Milne point field in Alaska, North-Sea, San Jorge Basin, and Bossier and Haynesville Shales, and others to help illustrate key points

Applied Techniques to Integrated Oil and Gas Reservoir Characterization

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Publisher : Elsevier
ISBN 13 : 0128172371
Total Pages : 439 pages
Book Rating : 4.1/5 (281 download)

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Book Synopsis Applied Techniques to Integrated Oil and Gas Reservoir Characterization by : Enwenode Onajite

Download or read book Applied Techniques to Integrated Oil and Gas Reservoir Characterization written by Enwenode Onajite and published by Elsevier. This book was released on 2021-04-09 with total page 439 pages. Available in PDF, EPUB and Kindle. Book excerpt: Over the past several years, there has been a growing integration of data – geophysical, geological, petrophysical, engineering-related, and production-related – in predicting and determining reservoir properties. As such, geoscientists now must learn the technology, processes, and challenges involved within their specific functions in order to optimize planning for oil field development. Applied Techniques to Integrated Oil and Gas Reservoir Characterization presents challenging questions encountered by geoscientists in their day-to-day work in the exploration and development of oil and gas fields and provides potential solutions from experts. From basin analysis of conventional and unconventional reservoirs, to seismic attributes analysis, NMR for reservoir characterization, amplitude versus offset (AVO), well-to-seismic tie, seismic inversion studies, rock physics, pore pressure prediction, and 4D for reservoir monitoring, the text examines challenges in the industry as well as the techniques used to overcome those challenges. This book includes valuable contributions from global industry experts: Brian Schulte (Schiefer Reservoir Consulting), Dr. Neil W. Craigie (Saudi Aramco), Matthijs van der Molen (Shell International E&P), Dr. Fred W. Schroeder (ExxonMobil, retired), Dr. Tharwat Hassane (Schlumberger & BP, retired), and others. Presents a thorough understanding of the requirements of various disciplines in characterizing a wide spectrum of reservoirs Includes real-life problems and challenging questions encountered by geoscientists in their day-to-day work, along with answers from experts working in the field Provides an integrated approach among different disciplines (geology, geophysics, petrophysics, and petroleum engineering) Offers advice from industry experts to geoscience students, including career guides and interview tips

Uncertainty Analysis and Reservoir Modeling

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Publisher : AAPG
ISBN 13 : 0891813780
Total Pages : 329 pages
Book Rating : 4.8/5 (918 download)

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Book Synopsis Uncertainty Analysis and Reservoir Modeling by : Y. Zee Ma

Download or read book Uncertainty Analysis and Reservoir Modeling written by Y. Zee Ma and published by AAPG. This book was released on 2011-12-20 with total page 329 pages. Available in PDF, EPUB and Kindle. Book excerpt:

An Integrated Seismic and Well Log Analysis for the Estimation of Reservoir Properties

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Publisher :
ISBN 13 :
Total Pages : 399 pages
Book Rating : 4.:/5 (486 download)

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Book Synopsis An Integrated Seismic and Well Log Analysis for the Estimation of Reservoir Properties by : Muhammad M. Saggaf

Download or read book An Integrated Seismic and Well Log Analysis for the Estimation of Reservoir Properties written by Muhammad M. Saggaf and published by . This book was released on 2000 with total page 399 pages. Available in PDF, EPUB and Kindle. Book excerpt:

Geophysics and Geosequestration

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Publisher : Cambridge University Press
ISBN 13 : 1107137497
Total Pages : 391 pages
Book Rating : 4.1/5 (71 download)

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Book Synopsis Geophysics and Geosequestration by : Thomas L. Davis

Download or read book Geophysics and Geosequestration written by Thomas L. Davis and published by Cambridge University Press. This book was released on 2019-05-09 with total page 391 pages. Available in PDF, EPUB and Kindle. Book excerpt: An overview of the geophysical techniques and analysis methods for monitoring subsurface carbon dioxide storage for researchers and industry practitioners.

Multicomponent Seismic Technology

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Publisher :
ISBN 13 : 9781560802822
Total Pages : 318 pages
Book Rating : 4.8/5 (28 download)

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Book Synopsis Multicomponent Seismic Technology by : Bob Adrian Hardage

Download or read book Multicomponent Seismic Technology written by Bob Adrian Hardage and published by . This book was released on 2011 with total page 318 pages. Available in PDF, EPUB and Kindle. Book excerpt:

Reservoir Prediction from Multicomponent Seismic Data, Rulison Field, Piceance Basin, Colorado

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Publisher :
ISBN 13 :
Total Pages : 146 pages
Book Rating : 4.:/5 (316 download)

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Book Synopsis Reservoir Prediction from Multicomponent Seismic Data, Rulison Field, Piceance Basin, Colorado by : Elizabeth Ann LaBarre

Download or read book Reservoir Prediction from Multicomponent Seismic Data, Rulison Field, Piceance Basin, Colorado written by Elizabeth Ann LaBarre and published by . This book was released on 2008 with total page 146 pages. Available in PDF, EPUB and Kindle. Book excerpt:

Reservoir Characterization Using Seismic Reflectivity and Attributes

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Publisher :
ISBN 13 :
Total Pages : 164 pages
Book Rating : 4.:/5 (51 download)

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Book Synopsis Reservoir Characterization Using Seismic Reflectivity and Attributes by : Abdulrahman Mohammad Saleh Al-Moqbel

Download or read book Reservoir Characterization Using Seismic Reflectivity and Attributes written by Abdulrahman Mohammad Saleh Al-Moqbel and published by . This book was released on 2002 with total page 164 pages. Available in PDF, EPUB and Kindle. Book excerpt:

Methods and Applications in Reservoir Geophysics

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Publisher : SEG Books
ISBN 13 : 1560802162
Total Pages : 669 pages
Book Rating : 4.5/5 (68 download)

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Book Synopsis Methods and Applications in Reservoir Geophysics by : David H. Johnston

Download or read book Methods and Applications in Reservoir Geophysics written by David H. Johnston and published by SEG Books. This book was released on 2010 with total page 669 pages. Available in PDF, EPUB and Kindle. Book excerpt: The reservoir-engineering tutorial discusses issues and data critically important engineers. The geophysics tutorial has explanations of the tools and data in case studies. Then each chapter focuses on a phase of field life: exploration appraisal, development planning, and production optimization. The last chapter explores emerging technologies.

Prediction of Reservoir Properties of the N-sand, Vermilion Block 50, Gulf of Mexico, from Multivariate Seismic Attributes

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ISBN 13 :
Total Pages : pages
Book Rating : 4.:/5 (787 download)

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Book Synopsis Prediction of Reservoir Properties of the N-sand, Vermilion Block 50, Gulf of Mexico, from Multivariate Seismic Attributes by : Rasheed Abdelkareem Jaradat

Download or read book Prediction of Reservoir Properties of the N-sand, Vermilion Block 50, Gulf of Mexico, from Multivariate Seismic Attributes written by Rasheed Abdelkareem Jaradat and published by . This book was released on 2005 with total page pages. Available in PDF, EPUB and Kindle. Book excerpt: The quantitative estimation of reservoir properties directly from seismic data is a major goal of reservoir characterization. Integrated reservoir characterization makes use of different varieties of well and seismic data to construct detailed spatial estimates of petrophysical and fluid reservoir properties. The advantage of data integration is the generation of consistent and accurate reservoir models that can be used for reservoir optimization, management and development. This is particularly valuable in mature field settings where hydrocarbons are known to exist but their exact location, pay, lateral variations and other properties are poorly defined. Recent approaches of reservoir characterization make use of individual seismic attributes to estimate inter-well reservoir properties. However, these attributes share a considerable amount of information among them and can lead to spurious correlations. An alternative approach is to evaluate reservoir properties using multiple seismic attributes. This study reports the results of an investigation of the use of multivariate seismic attributes to predict lateral reservoir properties of gross thickness, net thickness, gross effective porosity, net-to-gross ratio and net reservoir porosity thickness product. This approach uses principal component analysis and principal factor analysis to transform eighteen relatively correlated original seismic attributes into a set of mutually orthogonal or independent PC's and PF's which are designated as multivariate seismic attributes. Data from the N-sand interval of Vermilion Block 50 field, Gulf of Mexico, was used in this study. Multivariate analyses produced eighteen PC's and three PF's grid maps. A collocated cokriging geostaistical technique was used to estimate the spatial distribution of reservoir properties of eighteen wells penetrating the N-sand interval. Reservoir property maps generated by using multivariate seismic attributes yield highly accurate predictions of reservoir properties when compared to predictions produced with original individual seismic attributes. To the contrary of the original seismic attribute results, predicted reservoir properties of the multivariate seismic attributes honor the lateral geological heterogeneities imbedded within seismic data and strongly maintain the proposed geological model of the N-sand interval. Results suggest that multivariate seismic attribute technique can be used to predict various reservoir properties and can be applied to a wide variety of geological and geophysical settings.

Reservoir Description Via Statistical and Machine-learning Approaches

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Publisher :
ISBN 13 :
Total Pages : 0 pages
Book Rating : 4.:/5 (135 download)

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Book Synopsis Reservoir Description Via Statistical and Machine-learning Approaches by : Wen Pan (Ph. D.)

Download or read book Reservoir Description Via Statistical and Machine-learning Approaches written by Wen Pan (Ph. D.) and published by . This book was released on 2022 with total page 0 pages. Available in PDF, EPUB and Kindle. Book excerpt: Description of subsurface reservoirs is important for decision-making in the development of hydrocarbon resources. Reservoir description concerns (1) geophysical interpretation: prediction of rock properties from geophysical measurements such as borehole and seismic amplitude data, and (2) reservoir modeling: modeling of the spatial distribution of rock properties conditioned by geophysical interpretations (geological modeling), and simulation of fluid-transport, elastic, mechanical, and electromagnetic phenomena, among others, taking place in a geological model (reservoir simulation). Reservoir description based on stochastic reservoir modeling and conditioned by fluid production history enables uncertainty estimation for hydrocarbon reserves and fluid production forecast. Accurate reservoir description assists the management of risk and profit during the exploration and development of hydrocarbon production resources. As one of the most important components of reservoir description, the interpretation of well logs provides high-resolution estimations of in situ rock properties around the wellbore, such as lithology, porosity, fluid saturation, permeability, and elastic moduli. However, conventional petrophysical models are often too simplistic to reproduce the complex relationship between well logs and rock properties, especially permeability. Therefore, data-driven inferential methods, such as machine learning modeling, are needed for more accurate permeability prediction in spatially complex rocks. The accurate prediction of permeability across multiple wells is even more challenging because of variable borehole environmental conditions (e.g., drilling fluid and borehole size), different logging instruments (e.g., induction vs. lateral resistivity logs), and their vintage (e.g., logging-while-drilling vs. wireline logs). To mitigate biases introduced by both variable borehole environmental conditions and borehole instruments, well-log normalization is commonly implemented prior to performing multi-well interpretation projects. However, conventional well-log normalization methods ignore the correlation among different well logs and require much effort and expertise by the interpreter. The first objective of this dissertation is to develop a data-driven interpretation workflow that uses machine-learning methods to perform automatic well-log normalization by considering the correlation among different well logs and to accurately estimate permeability from the normalized well logs. The workflow consists of four steps: (1) identifying well-calibrated wells (type wells) for the wells that need correction (test wells), based on the statistical distance of the associated well logs. (2) Obtaining training data from type wells to train the machine-learning model to minimize the mean-squared error (MSE) of permeability prediction. (3) Performing well-log normalization for the test well logs by minimizing the divergence to the type-well well logs. (4) Predicting the permeability of test wells using normalized well logs. The new interpretation workflow is applied to predict the permeability of 30 wells in the Seminole San Andres Unit (SSAU). Compared to the permeability prediction model without well-log normalization, the new workflow decreases the mean-squared error (MSE) of permeability prediction by 20-50% and greatly accelerates well-log preprocessing with the automatic well-log normalization step. Stochastic reservoir models conditioned by petrophysical and geophysical interpretations are important for uncertainty management during reservoir exploration and development. Conventional geostatistical methods, such as Kriging and multiple-point simulation, are commonly used for conditional reservoir modeling. However, it is difficult to use these methods to construct reservoir models that reproduce long-range geological patterns that are important for fluid-transport prediction, such as the continuity of channels in a turbidite channel sedimentary system. The second objective of this dissertation is to develop a new machine learning method to construct stochastic reservoir models that reproduce important long-range patterns and are conditioned by the interpretation of well logs and seismic amplitude data. This method consists of three steps: (1) calculating training images of a depositional system, such as a turbidite channel or a deepwater lobe system, with rule-based modeling methods. (2) Training a new conditional generative adversarial model, referred to as the stochastic pix2pix model, to generate reservoir model realizations that reproduce patterns in the training images and are conditioned by well logs and seismic amplitude data. (3) Using the trained model to generate conditional reservoir model realizations. However, limitations on computer memory make it difficult for the new method to generate reservoir model realizations with over millions of voxels, such as models with multi-scale architectural elements. To further improve the computational efficiency to generate large and detailed reservoir models, a hierarchical modeling workflow is developed which uses the stochastic pix2pix model to simulate architectural elements from the largest to the smallest scale. The stochastic pix2pix method is verified by comparing the generated lobe and fluvial channel model realizations to reservoir models constructed with the rule-based modeling method. Comparisons indicate that conditioning data, such as rock facies interpreted from well logs and depositional surfaces identified from seismic amplitude data, are well reproduced in model realizations generated with the new method. Statistical metrics, such as semi-variogram, multiple-point histogram (MPH), compensational stacking index, geometrical probability map, and rock facies histogram were calculated to confirm that model realizations accurately reproduce the patterns observed in the training images. Metrics of performance indicate a good reproduction of patterns, for example, the mean-absolute error of geometrical probability is below 2%, while the MPH difference is below 5%. The combination of well-log normalization and interpretation workflow with machine learning-based stochastic reservoir modeling enables more accurate formation evaluation and better estimates of uncertainties associated with rock property distributions than possible with standard modeling approaches

Integrated Analysis of Seismic Attributes and Well-logs in Reservoir Characterization

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Publisher :
ISBN 13 :
Total Pages : pages
Book Rating : 4.:/5 (124 download)

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Book Synopsis Integrated Analysis of Seismic Attributes and Well-logs in Reservoir Characterization by : Luke Rijfkogel

Download or read book Integrated Analysis of Seismic Attributes and Well-logs in Reservoir Characterization written by Luke Rijfkogel and published by . This book was released on 2020 with total page pages. Available in PDF, EPUB and Kindle. Book excerpt: Carbonate reservoir characterization introduce challenges that constantly require updates based on new seismic and production data. Understanding the connection between seismic response and litho-petrophysical properties is a crucial component to producing tangible results in hydrocarbon reservoir characterization, particularly in carbonate reservoirs. Applying models in seismic interpretation is essential to integrating data from a variety of disciplines including geology, geophysics, petrophysics and reservoir engineering. In this study, three post-stack seismic attributes (instantaneous bandwidth and peakedness along with volume attributes such as Root Mean Square - RMS energy) are used to distinguish and identify seismic classes pertaining to variations in litho/petrophysical facies from the Mississippian saline aquifer hosted in a carbonate reservoir from the Wellington Field, Sumner County, Kansas. Neutron porosity, bulk density, and sonic well logs provided a correlation with seismic amplitude, which in turn reflects reservoir properties associated to acoustic impedance. Neutron porosity logs were characterized into three classes. Class one representing a porosity less than eight percent, Class two representing a porosity class of greater than eight and less than twelve percent and Class three representing a porosity greater than twelve percent. The impedance differences across a seismic reflector are the controlling parameter of reflectivity. By having seismic and well log data sets provide the connection to characterize the reservoir to be modeled for porosity prediction based on amplitude and seismic facies classification for the effects of enhanced oil recovery (EOR) or geological sequestration of CO2. Using an unsupervised neural network and selecting three facies classes to correlate with three petrophysical classes. Three well-log classes are defined to describe the reservoir in terms of porosity using neutron porosity well logs. Seismic facies three has the highest porosity (greater than 12 percent), landed in structurally low areas and likely resemble dolomite prone area. The second-facies has porosity between 7 and 13 percent resemble a transitional zone from structurally low to high showing reworked brecciated limestone facies from CT scans. Seismic facies one has porosity less than 11 percent and resemble a structurally high erosional area. The seismic facies prediction map was constructed by correlating reservoir porosity using neutron porosity logs and seismic amplitude attributes in a carbonate reservoir. Due to the nature of elastic properties and mineralogy of carbonates that render the reservoir porosity the most significant factor controlling amplitude variation. Seismic amplitude attributes (bandwidth, peakedness, and RMS energy) reveal some unexpected features interpreted as small-scale faults associated with the Nemaha Uplift. Using the same three attributes as an input for an unsupervised neural network and selecting three seismic facies produces results that correlate with one out of the three porosities, providing a correlation between well-logs and seismic amplitude that can be used to predict reservoir facies in terms of porosity especially for higher porous zones. A CT scan of the top of Wellington KGS #1-32 core indicates slit-shaped (fracture) porosity and vuggy porosity dominate at the top of the reservoir. The bottom of the reservoir is dominated by fractured porosity ranging from 1.1 mm to 0.1 mm in size. The slit-shaped porosity is orientated vertically while the vuggy porosity was located within the diagenetic dolomite which was contained within the chert. Wellington KGS #2-32 core is dominated by slit-shaped porosity ranging in size from 0.4mm to 0.07mm. Slit shaped porosity shown from the middle CT scan in the Wellington KGS #2-32 shows faulting is associated after diagenesis of the dolomite. The vuggy porosity are the result from diagenetic processes and the slit-shaped porosity is associated to faulting from the Nemaha Uplift. This study illustrates the ability to use a data driven approach to an unsupervised neural network to identify seismic facies that relate to porosity classes by integrating well-logs, seismic attributes, and CT scans to characterize a carbonate petroleum reservoir system.