Determination of Reservoir Oxidation Zone Formation in Uranium Wells Using Ensemble Machine Learning Methods

Author:

Mukhamediev Ravil I.12,Kuchin Yan12ORCID,Popova Yelena3ORCID,Yunicheva Nadiya24,Muhamedijeva Elena2,Symagulov Adilkhan12ORCID,Abramov Kirill2,Gopejenko Viktors56,Levashenko Vitaly7,Zaitseva Elena7ORCID,Litvishko Natalya2,Stankevich Sergey8ORCID

Affiliation:

1. Institute of Automation and Information Technologies, Satbayev University (KazNRTU), Almaty 050013, Kazakhstan

2. Institute of Information and Computational Technologies CS MSHE RK, 28 Shevchenko Str., Almaty 050010, Kazakhstan

3. Transport and Management Faculty, Transport and Telecommunication Institute, 1 Lomonosov Str., LV-1019 Riga, Latvia

4. Institute of Automation and Information Technologies, Almaty University of Energy and Communications, Baitursynov Str., 126/1, Almaty 050013, Kazakhstan

5. International Radio Astronomy Centre, Ventspils University of Applied Sciences, LV-3601 Ventspils, Latvia

6. Department of Natural Science and Computer Technologies, ISMA University of Applied Sciences, LV-1019 Riga, Latvia

7. Faculty of Management Science and Informatics, University of Zilina, 010 26 Žilina, Slovakia

8. Scientific Centre for Aerospace Research of the Earth of the Institute of Geological Sciences of the National Academy of Sciences of Ukraine, 01054 Kyiv, Ukraine

Abstract

Approximately 50% of the world’s uranium is mined in a closed way using underground well leaching. In the process of uranium mining at formation-infiltration deposits, an important role is played by the correct identification of the formation of reservoir oxidation zones (ROZs), within which the uranium content is extremely low and which affect the determination of ore reserves and subsequent mining processes. The currently used methodology for identifying ROZs requires the use of highly skilled labor and resource-intensive studies using neutron fission logging; therefore, it is not always performed. At the same time, the available electrical logging measurements data collected in the process of geophysical well surveys and exploration well data can be effectively used to identify ROZs using machine learning models. This study presents a solution to the problem of detecting ROZs in uranium deposits using ensemble machine learning methods. This method provides an index of weighted harmonic measure (f1_weighted) in the range from 0.72 to 0.93 (XGB classifier), and sufficient stability at different ratios of objects in the input dataset. The obtained results demonstrate the potential for practical use of this method for detecting ROZs in formation-infiltration uranium deposits using ensemble machine learning.

Funder

Committee of Science of the Ministry of Science and Higher Education of the Republic of Kazakhstan

Slovak Research and Development Agency

Publisher

MDPI AG

Subject

General Mathematics,Engineering (miscellaneous),Computer Science (miscellaneous)

Reference41 articles.

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3. Kuchin, Y., Mukhamediev, R., Yunicheva, N., Symagulov, A., Abramov, K., Mukhamedieva, E., Zaitseva, E., and Levashenko, V. (2023). Application of Machine Learning Methods to Assess Filtration Properties of Host Rocks of Uranium Deposits in Kazakhstan. Appl. Sci., 13.

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5. Poulton, M.M. (2001). Computational Neural Networks for Geophysical Data Processing, Elsevier. Available online: https://www.researchgate.net/profile/Mary-Poulton/publication/245744530_Computational_Neural_Networks_for_Geophysical_Data_Processing/links/5730b09508ae100ae55740fe/Computational-Neural-Networks-for-Geophysical-Data-Processing.pdf.

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