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Application of Machine-Learning Algorithms to the Stratigraphic Correlation of Archean Shale Units Based on Lithogeochemistry
SmartMin, 39 Kiewiet Street, Helikon Park, 1759, South Africa.
School of Geosciences, University of the Witwatersrand, Private Bag 3, Johannesburg, 2050, South Africa.
SmartMin, 39 Kiewiet Street, Helikon Park, 1759, South Africa.
Bavarian Georesources Centre, Department of Geodynamics and Geomaterials Research, Institute of Geography and Geology, University of Würzburg, Am Hubland, D-97074 Würzburg, Germany; Department of Geological Sciences, University of Cape Town, Rondebosch 7700, South Africa.
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2021 (engelsk)Inngår i: The Journal of geology, ISSN 0022-1376, E-ISSN 1537-5269, Vol. 129, nr 6, s. 647-672Artikkel i tidsskrift (Fagfellevurdert) Published
Abstract [en]

Data-driven methods have increasingly been applied to solve geoscientific problems. Incorporation of data-driven methods with hypothesis testing can be effective to address some long-standing debates and reduce interpretation uncertainty by leveraging larger volumes of data and more objective data analytics, which leads to increased reproducibility. In this study, lithogeochemical data from regionally persistent Archean shale units were aggregated from literature, with special reference to the Kaapvaal Craton of South Africa—namely, shales from the Barberton, Witwatersrand, Pongola, and Transvaal Supergroups—and the Belingwe and Buhwa Greenstone Belts of the Zimbabwe Craton. We examine the feasibility of using machine-learning algorithms to produce a geochemical classification and demonstrate that machine learning is capable of accurately correlating stratigraphy at the formation, group, and supergroup levels. We demonstrate the ability to extract highly useful scientific findings through a data-driven approach, such as geological implications for the uniqueness of the sediment compositions of the Central Rand and West Rand Groups. We further demonstrate that when lithogeochemistry and machine-learning algorithms are used, only about 50 samples per geological unit are necessary to reach accuracy levels of around 80%–90% for our shale samples. Consequently, for many traditional tasks, such as rock identification and mapping, some expensive analyses and manual labor can be replaced by an abundance of cheaper data and machine learning. This approach could transform large-scale geological surveys by enabling more detailed mapping than currently possible, by vastly increasing the coverage rate and total coverage. In addition, the aggregation of historical data facilitates data reuse and open science. These results justify the need to bridge data- and hypothesis-driven techniques for the stratigraphic correlation and prediction of rock units, which can improve the accuracy of the inferred stratigraphic correlation and basin setting.

sted, utgiver, år, opplag, sider
University of Chicago Press , 2021. Vol. 129, nr 6, s. 647-672
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Forskningsprogram
Mineralteknik
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URN: urn:nbn:se:ltu:diva-89026DOI: 10.1086/717847ISI: 000745192200001Scopus ID: 2-s2.0-85123098942OAI: oai:DiVA.org:ltu-89026DiVA, id: diva2:1642637
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Validerad;2022;Nivå 2;2022-03-07 (johcin)

Tilgjengelig fra: 2022-03-07 Laget: 2022-03-07 Sist oppdatert: 2025-10-21bibliografisk kontrollert

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