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Image of Considerations in the application of machine learning to aqueous geochemistry: Origin of produced waters in the northern U.S. Gulf Coast Basin

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Considerations in the application of machine learning to aqueous geochemistry: Origin of produced waters in the northern U.S. Gulf Coast Basin

Mark A. Engle - Personal Name; Benjamin Brunne - Personal Name;

Since the advent of modern computing, geochemists have increasingly relied on computers to garner efficiencies in calculations, data analysis, and data presentation. Entirely new fields, such as Monte Carlo-based simulation and geochemical modeling, have developed under this paradigm. With continued growth in computing power, machine learning has become an increasingly popular tool in aqueous geochemistry. However, continued reliance on algorithms to perform mathematical calculations can lead to paths of not understanding how to properly prepare information for models or not the reasons behind apparent patterns in the output. Machine learning algorithms can be heavily impacted by what variables are chosen for the model and how data are pre-processed, including handling of missing and censored values (e.g., above or below a detection limit). We propose an approach of parsimonious variable selection, based partially on the signal-to-noise ratio, and suggest and discuss strategies for handling missing and censored data. An example of unsupervised machine learning, using emergent self-organizing map analysis, is applied to water from oil and gas wells in the northern U.S. Gulf Coast Basin, whose composition is controlled by different processes and is derived from various origins. Findings from this investigation suggest five groups of water samples are present, two of which were not identified using conventional data analysis methods. One notable result is that brines derived from seawater evaporation, presumably waters from which the Jurassic Louann salt precipitated, have migrated upward into shallower reservoirs across the study area. This work demonstrates that focus on understanding data quality and exercises to better interpret the output from numerical models continue to be critical skills to further take advantage of applying machine learning to geochemistry.


Availability
82551.136Perpustakaan BIG (Eksternal Harddisk)Available
Detail Information
Series Title
Applied Computing and Geoscience - Open Access
Call Number
551.136
Publisher
Amsterdam : Elsevier., 2019
Collation
10 hlm PDF, 2.751 KB
Language
Inggris
ISBN/ISSN
2590-1974
Classification
551.136
Content Type
text
Media Type
-
Carrier Type
-
Edition
Vol.3-4, December 2019
Subject(s)
Compositional data analysis
Emergent self-organizing maps
Produced waters
Gulf coast basin
Specific Detail Info
-
Statement of Responsibility
-
Other version/related

No other version available

File Attachment
  • Considerations in the application of machine learning to aqueous geochemistry: Origin of produced waters in the northern U.S. Gulf Coast Basin
    Since the advent of modern computing, geochemists have increasingly relied on computers to garner efficiencies in calculations, data analysis, and data presentation. Entirely new fields, such as Monte Carlo-based simulation and geochemical modeling, have developed under this paradigm. With continued growth in computing power, machine learning has become an increasingly popular tool in aqueous geochemistry. However, continued reliance on algorithms to perform mathematical calculations can lead to paths of not understanding how to properly prepare information for models or not the reasons behind apparent patterns in the output. Machine learning algorithms can be heavily impacted by what variables are chosen for the model and how data are pre-processed, including handling of missing and censored values (e.g., above or below a detection limit). We propose an approach of parsimonious variable selection, based partially on the signal-to-noise ratio, and suggest and discuss strategies for handling missing and censored data. An example of unsupervised machine learning, using emergent self-organizing map analysis, is applied to water from oil and gas wells in the northern U.S. Gulf Coast Basin, whose composition is controlled by different processes and is derived from various origins. Findings from this investigation suggest five groups of water samples are present, two of which were not identified using conventional data analysis methods. One notable result is that brines derived from seawater evaporation, presumably waters from which the Jurassic Louann salt precipitated, have migrated upward into shallower reservoirs across the study area. This work demonstrates that focus on understanding data quality and exercises to better interpret the output from numerical models continue to be critical skills to further take advantage of applying machine learning to geochemistry.
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