Review and synthesis of the applications of machine learning to coalbed methane recovery

By: , and 
Edited by: Marko MaucecJeffrey M. YarusTimothy C. Coburn, and Michael Pyrcz

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Abstract

Over the last 30 years, a substantial literature has evolved on the use of machine learning (ML) to assess, predict, and improve the efficiency of coalbed methane (CBM) recovery. In the United States, the production of CBM declined as shale gas production matured, but CBM continues to be an important energy resource in other parts of the world. ML applications that have the potential to improve CBM reservoir management and production forecasts, and to increase exploration and operational efficiency, are still of significant interest. The integration of geostatistical techniques into the CBM ML applications has been largely absent but represents an opportunity for improvement. The literature demonstrates the widespread interest in, and applicability of, ML algorithms applied to CBM problems, and that they continue to result in improvements in predictive performance. However, (1) much of the research is more academic than operational, (2) many results are based on simulations, or small or proprietary datasets, (3) ML performance information can be inconsistent and sometimes entirely omitted, (4) most methodologies are unique to the specific CBM situation and likely not generalizable, (5) no standard data repositories are available to directly compare the performance of competing algorithms, and (6) the spatial component is often omitted. Finally, relatively new ML protocols involving causality analysis and reinforced learning, as well as hybrid workflows combining both supervised and unsupervised learning, are anticipated to dominate the future investigations. Integration of geostatistical and geospatial analysis with ML should enhance performance.

Publication type Book chapter
Publication Subtype Book Chapter
Title Review and synthesis of the applications of machine learning to coalbed methane recovery
DOI 10.5772/intechopen.115671
Edition Online First
Publication Date December 02, 2025
Year Published 2025
Language English
Publisher intechOpen Limited
Contributing office(s) Geology, Energy & Minerals Science Center
Larger Work Type Book
Larger Work Subtype Monograph
Larger Work Title Applied spatiotemporal data analytics and machine learning
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