A K-Nearest Neighbors Algorithm in Python for Visualizing the 3D Stratigraphic Architecture of the Llobregat River Delta in NE Spain
Metadatos
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MDPI
Materia
Llobregat River Delta 3D stratigraphic architecture Granulometry KNN algorithm Python libraries
Date
2022-07-19Referencia bibliográfica
Bullejos, M... [et al.]. A K-Nearest Neighbors Algorithm in Python for Visualizing the 3D Stratigraphic Architecture of the Llobregat River Delta in NE Spain. J. Mar. Sci. Eng. 2022, 10, 986. [https://doi.org/10.3390/jmse10070986]
Patrocinador
Junta de Andalucia FQM-343 RNM-188; Spanish Government PID2020-114381GB-100; Generalitat Valenciana from the University of Alicante (CTMAIGA)Résumé
The k-nearest neighbors (KNN) algorithm is a non-parametric supervised machine learning
classifier; which uses proximity and similarity to make classifications or predictions about the grouping
of an individual data point. This ability makes the KNN algorithm ideal for classifying datasets
of geological variables and parameters prior to 3D visualization. This paper introduces a machine
learning KNN algorithm and Python libraries for visualizing the 3D stratigraphic architecture of
sedimentary porous media in the Quaternary onshore Llobregat River Delta (LRD) in northeastern
Spain. A first HTML model showed a consecutive 5 m-equispaced set of horizontal sections of the
granulometry classes created with the KNN algorithm from 0 to 120 m below sea level in the onshore
LRD. A second HTML model showed the 3D mapping of the main Quaternary gravel and coarse sand
sedimentary bodies (lithosomes) and the basement (Pliocene and older rocks) top surface created
with Python libraries. These results reproduce well the complex sedimentary structure of the LRD
reported in recent scientific publications and proves the suitability of the KNN algorithm and Python
libraries for visualizing the 3D stratigraphic structure of sedimentary porous media, which is a crucial
stage in making decisions in different environmental and economic geology disciplines.