Including Geosciences, Reservoir Engineering, and Production Engineering with Python
Buch, Englisch, 300 Seiten, Format (B × H): 155 mm x 235 mm, Gewicht: 487 g
ISBN: 978-1-4842-6093-7
Verlag: Apress
Apply machine and deep learning to solve some of the challenges in the oil and gas industry. The book begins with a brief discussion of the oil and gas exploration and production life cycle in the context of data flow through the different stages of industry operations. This leads to a survey of some interesting problems, which are good candidates for applying machine and deep learning approaches. The initial chapters provide a primer on the Python programming language used for implementing the algorithms; this is followed by an overview of supervised and unsupervised machine learning concepts. The authors provide industry examples using open source data sets along with practical explanations of the algorithms, without diving too deep into the theoretical aspects of the algorithms employed. Machine Learning in the Oil and Gas Industry covers problems encompassing diverse industry topics, including geophysics (seismic interpretation), geological modeling, reservoir engineering, and production engineering.
Throughout the book, the emphasis is on providing a practical approach with step-by-step explanations and code examples for implementing machine and deep learning algorithms for solving real-life problems in the oil and gas industry.
What You Will Learn
- Understanding the end-to-end industry life cycle and flow of data in the industrial operations of the oil and gas industry
- Get the basic concepts of computer programming and machine and deep learning required for implementing the algorithms used
- Study interesting industry problems that are good candidates for being solved by machine and deep learning
- Discover the practical considerations and challenges for executing machine and deep learning projects in the oil and gas industry
Who This Book Is For
Professionals in the oil and gas industry who can benefit from a practical understanding of the machine and deep learning approach to solving real-life problems.
Zielgruppe
Professional/practitioner
Autoren/Hrsg.
Fachgebiete
- Technische Wissenschaften Sonstige Technologien | Angewandte Technik Ölförderung, Gasförderung
- Technische Wissenschaften Technik Allgemein Computeranwendungen in der Technik
- Mathematik | Informatik EDV | Informatik Angewandte Informatik Computeranwendungen in Wissenschaft & Technologie
- Geowissenschaften Geologie Wirtschaftsgeologie
- Mathematik | Informatik EDV | Informatik Informatik Künstliche Intelligenz Maschinelles Lernen
Weitere Infos & Material
Machine Learning in the Oil and Gas Industry with Python
Chapter 1: Towards Oil and Gas 4.0Chapter Goal: This chapter provides an overview of the digital transformation state-of-the-art in the Oil & Gas industry. The overview includes a literature review of the publications from the academic and industrial institutions, available in the public domain. It follows a theme of end-to-end Oil & Gas exploration and production project lifecycle.
Chapter 2: Python Programming PrimerChapter Goal: This chapter provides a brief primer of the Python programming language. The idea is to make the user familiar with the basic syntax on Python programming language. This chapter also briefly touches on the numpy, pandas, and a selected visualization (to be selected from matplotlib/seaborn/bokeh) library.
Chapter 3: Overview of Machine and Deep Learning ConceptsChapter Goal: This chapter introduces supervised and unsupervised machine learning concepts with the code examples using simplistic and clean data sets. The aim is to provide readers with understanding of practical concepts of different machine and deep learning algorithms, along with simple coding examples. Scikit-learn and Keras will be used for machine and deep learning code samples respectively.
Chapter 4: Geophysics and Seismic Data ProcessingChapter Goal: This chapter will focus on using seismic data available from open data sources, e.g., Equinor Volve project, to provide two example applications for seismic data interpolation, and fault identification. Further, it will also discuss other problems, such as, horizon identification, and salt dome identification, without going in to too much details, while providing enough pointers and resources to the interested users.
Chapter 5: GeomodelingChapter Goal: This chapter focuses on the geological modeling problems, including unsupervised learning for clustering different rock types based upon the petrophysical well logs, and estimation of the petrophysical properties away from the well locations by applying supervised machine learning techniques.
Chapter 6: Reservoir EngineeringChapter Goal: This chapter focused on the approaches for developing machine learning based proxy models to replace a full-physics reservoir simulator, and the use of these proxy models for generating production forecasts. The chapter will also cover related topics of interest including well placement optimization, and planning future wells based upon the historical production data.
Chapter 7: Production EngineeringChapter Goal: This chapter will cover the topic of production modeling using machine learning methodologies. The topics will include identification of specific completion design for a well to achieve optimal production rates, and identifying the producing wells, which may benefit from the workover activities. A part of chapter will also provide methodology for equipment failure analytics, and predictive maintenance for production equipment, e.g., electrical submersible pumps (ESPs).
Chapter 8: Opportunities, Challenges, and Expected Future TrendsChapter Goal: This chapters gleans over the challenges arising in the execution of the machine learning based digital transformation projects, the pitfalls leading to the project failure. Also, the opportunities that inherently lie in addressing these challenges are discussed from both the executive and practitioners’ perspective. Finally, an overview of the expected roadmap for the industry over the next decade will be discussed.




