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Basin and Petroleum System Modeling with Uncertainty Quantification

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Release : 2016
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Book Synopsis Basin and Petroleum System Modeling with Uncertainty Quantification by : Yao Tong

Download or read book Basin and Petroleum System Modeling with Uncertainty Quantification written by Yao Tong. This book was released on 2016. Available in PDF, EPUB and Kindle. Book excerpt: The Piceance Basin is located in northwest Colorado and was formed during the Late Cretaceous Laramide - Paleogene tectonism, which partitioned the stable Cretaceous Interior Seaway foreland basin into a series of smaller basins. The basin is defined by reverse faults and associated anticlinal fold structures on the margins. From the Late Cretaceous to Cenozoic, the Piceance basin transited from marine to terrestrial depositional setting as a result of the Laramide deformation and the recent vertical regional uplift. Depositional environments varied from shallow marine, fluvial, paludal, lacustrine and terrestrial settings and formed the prolific Mesaverde petroleum system. The earliest commercial production came from a Cretaceous tight sand reservoir situated in Williams Fork Formation of the Mesaverde Group. The underlying coastal plain coals became thermally mature later in the Cenozoic and charged the adjacent Mesaverde Williams Fork Formation with natural gas. Diverse depositional environments not only led to the development of petroleum system but also produced many heterogeneities and "unknowns", which makes the study of the basin evolution history very challenging. Basin and petroleum system modeling utilizes an integrated approach to link these multiple complex geologic processes into a model framework, to explore the uncertainties and to test hypothesis, and scenarios. The Piceance Basin is an ideal settings for investigating a sedimentary basin with diverse depositional settings and exploring uncertainties associated with changing basin history. This thesis is divided into three chapters addressing the following research objectives: (1) to integrate geological, geochemistry and engineering data into a basin model frame work and enhance understanding of Piceance Basin history. (2) To investigate possible geological constraints that reduce the uncertainty in terrestrial basin modeling efforts (3) To tackle complex uncertainties in basin and petroleum system modeling and disentangle the input model parameter's impact on the model response with the aid of efficient uncertainty quantification tools. Chapter 1 presents a comprehensive basin study for the Piceance Basin. This work utilizes integrated data and reconstructs a numerical basin model to summarize the basin evolution history from the Late Cretaceous to present day. During this exercise, a conceptual model was first designed to capture the basin's transformation from marine to terrestrial, with simplification of the basin tectonic history into two major deformation and inversion events. The Cretaceous Cameo Coal source rock maturation history were investigated via the constructed basin model framework. Given limited published calibration data, basin models were calibrated mainly with vitrinite reflectance data. The basin model predictions agree well with the measured thermal maturation data. This work contributed a regional scale 3-dimensional basin model for the study area. The model may serve as a research vehicle for further studies, such as geological scenario tests, unconventional resources characterization and other Laramide basin research. Chapter 2 presents a novel approach that utilizes paleoclimate data to constrain the basin thermal history, especially for terrestrial basins with substantial uplift history. Basin thermal history is a critical part of sedimentary basin studies, especially for understanding the hydrocarbon generation in a petroliferous basin. Two boundary conditions are required to quantify basin thermal conditions: the basal heat flow as the lower boundary condition and the sediment surface temperature as the upper thermal boundary condition. For marine basins, the sediment surface temperature is often estimated from water surface temperature, corrected by water depth from paleobathymetry information. However, as our study area was elevated and exposed subaerially, the sediment surface temperatures can no longer be estimated by water-sediment interface temperature; rather, the surface temperatures are impacted by complicated factors and are subject to larger variations. In our work, we developed a Cenozoic temperature proxy in the study area by utilizing paleoclimate studies focused on macro floral assemblages. The resulting interpreted surface temperature largely reduced the uncertainty in paleo-thermal condition estimation. This work also demonstrates the importance of capturing the surface temperature variation for elevated terrestrial setting basins. Chapter 3 presents the effort of tackling complex input uncertainties and disentangling their correlations with basin model spatial and temporal responses. Uncertainty quantification and sensitivity analysis workflows are implemented, subtle correlation between the input parameter and the basin model responses were identified; source rock geochemical properties may impact the present-day porosity and pore pressure in the underburden rock. Knowing the sensitivity propagation on both spatial and temporal model domain enhances our understanding of highly nonlinear basin models, and brings insights for future model improvement.

Fundamentals of Basin and Petroleum Systems Modeling

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Release : 2009-04-09
Genre : Science
Kind : eBook
Book Rating : 188/5 ( reviews)

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Book Synopsis Fundamentals of Basin and Petroleum Systems Modeling by : Thomas Hantschel

Download or read book Fundamentals of Basin and Petroleum Systems Modeling written by Thomas Hantschel. This book was released on 2009-04-09. Available in PDF, EPUB and Kindle. Book excerpt: The first comprehensive presentation of methods and algorithms used in basin modeling, this text provides geoscientists and geophysicists with an in-depth view of the underlying theory and includes advanced topics such as probabilistic risk assessment methods.

Basin Modeling

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Release : 2012-04-20
Genre : Science
Kind : eBook
Book Rating : 037/5 ( reviews)

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Book Synopsis Basin Modeling by : Kenneth E. Peters

Download or read book Basin Modeling written by Kenneth E. Peters. This book was released on 2012-04-20. Available in PDF, EPUB and Kindle. Book excerpt: "This special volume contains a selection of articles presented at the AAPG Hedberg Research Conference on Basin and Petroleum System Modeling (BPSM) held in Napa, California, on May 3-8, 2009."--P. 1.

Optimizing Exploration Decisions Under Geologic Uncertainty in Basin and Petroleum System Modeling

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Release : 2020
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Book Synopsis Optimizing Exploration Decisions Under Geologic Uncertainty in Basin and Petroleum System Modeling by : Tanvi Dhiren Chheda

Download or read book Optimizing Exploration Decisions Under Geologic Uncertainty in Basin and Petroleum System Modeling written by Tanvi Dhiren Chheda. This book was released on 2020. Available in PDF, EPUB and Kindle. Book excerpt: Basin and Petroleum System Modeling (BPSM) is coupled-physics approach that tracks over the course of basin history, the evolution of basin geometry, compaction, pressure, fluid flow, temperature, and chemical transformation of organic matter to quantitatively predict petroleum generation, migration and accumulation. The measured data from petroleum wells, conversely, can help us improve our knowledge of the basin's geologic history. For basin modeling, the initial model building requires parameters that are derived from our geologic knowledge of various aspects of the basin history through time (typically tens to hundreds of millions of years), like stratigraphy, geochemistry, timing of tectonic events, and boundary conditions like heat flow. But because of the spatially and temporally changing depositional environments in a basin, it is very challenging to accurately know the large number of input parameters required to represent the basin history. In addition, current workflows of constraining the inputs to measured data or evidence often do not account for the various non-unique possibilities that can create the outcome that is the present. To address this challenge, we demonstrate the use of data from drilled wells and basin models in Bayesian networks to create a workflow that provides a quantitative way to: 1) Vary model parameters: consider all hypothesis without biasing to one, 2) Reduce uncertainty by calibrating the model to measured evidence without repeated manual adjustments 3) Update the understanding of model parameters when new data becomes available, without re-running computationally heavy coupled-physics simulations, by using Bayesian Networks and 4) Create traceable workflow with an integrated economic analysis to make optimal decisions under the reduced, but still present uncertainty using Influence Diagrams. An example of prolific petroleum producing Jeanne d'Arc basin, offshore Newfoundland, Canada, is used to illustrate how the workflow facilitates constraining the source rock quality, thermal history, and migration pathways. The thesis is comprised of three main chapters. They are written in journal format, each designed to be a standalone chapter: Chapter 1 presents a comprehensive basin study of the Jeanne d'Arc basin. This work examines the past five decades of research of the Mesozoic -- Cenozoic (250 million years ago to present) evolution of the basin. We closely examine the unknowns and uncertainties, and where some studies differ in their findings. We create a 3 -- dimensional numerical basin model spanning an area of about 3200 km2 and use the framework to incorporate large regional fault trends, spatial variation in the quality of organic matter, and to test the conceptual models of elevated basal heat flows associated with the rifting of North America from Africa, Iberia, and Greenland. The model can also help us understand the evolution of neighboring basins: Orphan and Flemish pass, which have a large resource potential. Chapter 2 presents the novel use of Bayesian Network approach to quantify the multi-dimensional uncertainty created from non-linear interactions of basin parameters and insufficient constraints. We show how the Bayes Net structure incorporates expert knowledge about cause-effect relationships like Total Organic Carbon (TOC) and quantity of hydrocarbons produced, as well as the conditional independence of temperature to the TOC. We elucidate with an example why this network representation can summarize the joint probabilities in a compact form. We then illustrate how the relationship between parameters is learnt from data produced by different realizations of the basin model, and how uncertainty in the input parameters is reduced by conditioning to measured evidence. With the 120 basin models created with varying input parameters, we show how this method helps quantitatively reduce uncertainty in both our understanding of geologic history and our predictions of drilled hydrocarbon fluid quantities. Sensitivity analysis shows that hydrocarbon accumulation is more sensitive to fault sealing properties than the basal heat flow in the range of present uncertainty. Our analysis finds that the time-varying permeability of faults largely impacts the leakage and filling of deep and shallow reservoirs, and hence their accumulation volumes. Chapter 3 illustrates a structured decision-making process that is informed by a quantitative evaluation of risks and returns from exploration decisions using influence diagrams. Once we learn the probabilities of different predictions of accumulation volumes from the methods developed in Chapter 2, a question arises: how do we use these probabilities to quantitatively inform decisions and actions? We compare influence diagrams to the more conventional decision trees and then use data from different times in the exploration history of the Jeanne d'Arc to demonstrate the use of influence diagrams to calculate the value of information and predict optimal survey, drilling, and production decisions. Finally, we argue that the graphical formulation is an excellent communication tool that can incorporate quantitative uncertainties, expert knowledge, and decision maker preferences for different types of decision scenarios. Our illustration with real data paves the path for incorporating this workflow in large organizational settings.

Quantifying Uncertainty in Subsurface Systems

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Release : 2018-06-19
Genre : Science
Kind : eBook
Book Rating : 838/5 ( reviews)

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Book Synopsis Quantifying Uncertainty in Subsurface Systems by : Céline Scheidt

Download or read book Quantifying Uncertainty in Subsurface Systems written by Céline Scheidt. This book was released on 2018-06-19. Available in PDF, EPUB and Kindle. Book excerpt: Under the Earth's surface is a rich array of geological resources, many with potential use to humankind. However, extracting and harnessing them comes with enormous uncertainties, high costs, and considerable risks. The valuation of subsurface resources involves assessing discordant factors to produce a decision model that is functional and sustainable. This volume provides real-world examples relating to oilfields, geothermal systems, contaminated sites, and aquifer recharge. Volume highlights include: A multi-disciplinary treatment of uncertainty quantification Case studies with actual data that will appeal to methodology developers A Bayesian evidential learning framework that reduces computation and modeling time Quantifying Uncertainty in Subsurface Systems is a multidisciplinary volume that brings together five major fields: information science, decision science, geosciences, data science and computer science. It will appeal to both students and practitioners, and be a valuable resource for geoscientists, engineers and applied mathematicians. Read the Editors' Vox: eos.org/editors-vox/quantifying-uncertainty-about-earths-resources

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