Machine Learning Applications in Subsurface Energy Resource Management

ebook State of the Art and Future Prognosis

By Srikanta Mishra

cover image of Machine Learning Applications in Subsurface Energy Resource Management

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The utilization of machine learning (ML) techniques to understand hidden patterns and build data-driven predictive models from complex multivariate datasets is rapidly increasing in many applied science and engineering disciplines, including geo-energy. Motivated by these developments, Machine Learning Applications in Subsurface Energy Resource Management presents a current snapshot of the state of the art and future outlook for ML applications to manage subsurface energy resources (e.g., oil and gas, geologic carbon sequestration, and geothermal energy).

  • Covers ML applications across multiple application domains (reservoir characterization, drilling, production, reservoir modeling, and predictive maintenance)
  • Offers a variety of perspectives from authors representing operating companies, universities, and research organizations
  • Provides an array of case studies illustrating the latest applications of several ML techniques
  • Includes a literature review and future outlook for each application domain
  • This book is targeted at practicing petroleum engineers or geoscientists interested in developing a broad understanding of ML applications across several subsurface domains. It is also aimed as a supplementary reading for graduate-level courses and will also appeal to professionals and researchers working with hydrogeology and nuclear waste disposal.

    Machine Learning Applications in Subsurface Energy Resource Management