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Sustainable Geoscience for Natural Gas Subsurface Systems, Wood David A., Cai Jianchao


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Цена: 26107.00р.
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При оформлении заказа до: 2025-07-28
Ориентировочная дата поставки: Август-начало Сентября
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Автор: Wood David A., Cai Jianchao   (Дэвид Э. Вуд)
Название:  Sustainable Geoscience for Natural Gas Subsurface Systems
Перевод названия: Дэвид Э. Вуд: Экологичные геолого-геофизические исследования для подземных систем природного газа
ISBN: 9780323854658
Издательство: Elsevier Science
Классификация:


ISBN-10: 0323854656
Обложка/Формат: Paperback
Страницы: 432
Вес: 0.74 кг.
Дата издания: 01.11.2021
Серия: The fundamentals and sustainable advances in natural gas science and eng
Язык: English
Иллюстрации: 200 illustrations (100 in full color); illustrations, unspecified
Размер: 23.50 x 19.05 x 2.24 cm
Ссылка на Издательство: Link
Рейтинг:
Поставляется из: Европейский союз
Описание:

Sustainable Geoscience for Natural Gas SubSurface Systems delivers many of the scientific fundamentals needed in the natural gas industry, including coal-seam gas reservoir characterization and fracture analysis modeling for shale and tight gas reservoirs. Advanced research includes machine learning applications for well log and facies analysis, 3D gas property geological modeling, and X-ray CT scanning to reduce environmental hazards. Supported by corporate and academic contributors, along with two well-distinguished editors, the book gives todays natural gas engineers both fundamentals and advances in a convenient resource, with a zero-carbon future in mind.




Machine Learning for Subsurface Characterization

Автор: Misra, Siddharth
Название: Machine Learning for Subsurface Characterization
ISBN: 0128177365 ISBN-13(EAN): 9780128177365
Издательство: Elsevier Science
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Цена: 18528.00 р.
Наличие на складе: Есть у поставщика Поставка под заказ.

Описание:

To continue to meet demand while keeping costs down, petroleum and reservoir engineers know it is critical to utilize their asset's data through more complex modeling methods, and machine learning and data analytics is the known alternative approach to accurately represent the complexity of fluid-filled rocks. With a lack of training resources available, Machine Learning for Subsurface Characterization focuses on the development and application of neural networks, deep learning, unsupervised learning, reinforcement learning, and clustering methods for subsurface characterization under constraints. Such constraints are encountered during subsurface engineering operations due to financial, operational, regulatory, risk, technological, and environmental challenges.

This reference teaches how to do more with less. Used to develop tools and techniques of data-driven predictive modelling and machine learning for subsurface engineering and science, engineers will be introduced to methods of generating subsurface signals and analyzing the complex relationships within various subsurface signals using machine learning. Algorithmic procedures in MATLAB, R, PYTHON, and TENSORFLOW are displayed in text and through online instructional video to assist training and learning. Field cases are also presented to understand real-world applications, with a particular focus on examples involving shale reservoirs.

Explaining the concept of machine learning, advantages to the industry, and applications applied to complex subsurface rocks, Machine Learning for Subsurface Characterization delivers a missing piece to the reservoir engineer's toolbox needed to support today's complex operations.

  • Focus on applying predictive modelling and machine learning from real case studies and Q&A sessions at the end of each chapter
  • Learn how to develop codes such as MATLAB, PYTHON, R, and TENSORFLOW with step-by-step guides included
  • Visually learn code development with video demonstrations included

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