Using Python Libraries and K-Nearest Neighbors Algorithms to Delineate Syn-Sedimentary Faults in Sedimentary Porous Media

Using Python Libraries and K-Nearest Neighbors Algorithms to Delineate Syn-Sedimentary Faults in Sedimentary Porous Media

Manuel Martín-Martín, Manuel Bullejos, David Cabezas, Francisco Javier Alcalá

This paper introduces a methodology based on Python libraries and machine learning k-Nearest Neighbors (KNN) algorithms to create an interactive 3D HTML model that combines 2D grain-size KNN-prediction vertical sections from which syn-sedimentary faults and other features in sedimentary porous media can be delineated. The grain-size physical parameter is associated to lithological classes. Grain-size data comes from a database of 433 boreholes in the Llobregat River Delta in NE Spain. This methodology is suitable to reduce the immeasurable uncertainty associated to the qualitative geological data used in complex numerical tools aimed at modelling different geological resources or Earth phenomena.

Marine and Petroleum Geology 153, 106283 (2023)
Corresponding Author: Francisco Javier Alcalá

 


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