Machine Learning Driven Domain Modeling for Stratigraphic Deposits

Society for Mining, Metallurgy & Exploration
Roberto Mentzingen Rolo Gabriel Moreira Gustavo Usero Octavio Rosa de Almeida Guimarães Carlos Fonseca
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Society for Mining, Metallurgy & Exploration
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24
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2311 KB
Publication Date:
Jun 25, 2023

Abstract

Geological domain modeling is an important step in mineral resources evaluation. The procedure can be laborious and time-consuming, especially in multivariate settings. However, estimates are significantly improved when carefully limited by geological variables. This paper proposes a workflow for geological domain modeling suited for stratigraphic deposits. The workflow consists in automatically defining the domains by using clustering algorithms, generating the surfaces that represent the contacts by interpolation and subsequent triangulation, and simulating the surfaces. The proposed workflow produces consistent and realistic results and allows the user to test different domain configurations and assess volumetric uncertainty automatically and quickly.
Citation

APA: Roberto Mentzingen Rolo Gabriel Moreira Gustavo Usero Octavio Rosa de Almeida Guimarães Carlos Fonseca  (2023)  Machine Learning Driven Domain Modeling for Stratigraphic Deposits

MLA: Roberto Mentzingen Rolo Gabriel Moreira Gustavo Usero Octavio Rosa de Almeida Guimarães Carlos Fonseca Machine Learning Driven Domain Modeling for Stratigraphic Deposits. Society for Mining, Metallurgy & Exploration, 2023.

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