Application of Machine Learning Methods to Assess Filtration Properties of Host Rocks of Uranium Deposits in Kazakhstan

Author:

Kuchin Yan12ORCID,Mukhamediev Ravil12ORCID,Yunicheva Nadiya13,Symagulov Adilkhan12,Abramov Kirill1,Mukhamedieva Elena1,Zaitseva Elena4ORCID,Levashenko Vitaly4

Affiliation:

1. Institute of Information and Computational Technologies MSHE RK, Pushkin Str., 125, Almaty 050010, Kazakhstan

2. Institute of Automation and Information Technologies, Satbayev University (KazNRTU), Satpayev Str., 22A, Almaty 050013, Kazakhstan

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

4. Faculty of Management Science and Informatics, University of Žilina, Univerzitna 8215/1, Žilina 01026, Slovakia

Abstract

The uranium required for power plants is mainly extracted by two methods in roughly equal amounts: quarries (underground and open pit) and in situ leaching (ISL). Uranium mining by in situ leaching is extremely attractive because it is economical and has a minimal impact on the region’s ecology. The effective use of ISL requires, among other things, the accurate assessment of the host rocks’ filtration characteristics. An accurate assessment of the filtration properties of the host rocks allows optimizing the mining process and improving the quality of the ore reserve prediction. At the same time, in Kazakhstan, this calculation is still based on methods that were developed more than 50 years ago and, in some cases, produce inaccurate results. According to our estimates, this method provides a prediction of filtration properties with a determination coefficient R2 = 0.32. This paper describes a method of calculating the filtration coefficient of ore-bearing rocks using machine learning methods. The proposed approach was based on nonlinear regression models providing a 20–75% increase in the accuracy of the filtration coefficient assessment compared with the current methodology. The work used different types of machine learning algorithms based on the gradient boosting technique, bagging technique, feed-forward neural networks, support vector machines, etc. The results of logging, core sampling, and hydrogeological studies obtained during the exploration stage of the Inkai deposit were used as the initial data. All used machine learning models demonstrated significantly better results than the old method. This resulted in improved results compared with previous studies. The LightGBM regressor demonstrated the best result (R2 = 0.710).

Funder

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

the Slovak Research and Development Agency, Slovakia

Publisher

MDPI AG

Subject

Fluid Flow and Transfer Processes,Computer Science Applications,Process Chemistry and Technology,General Engineering,Instrumentation,General Materials Science

Reference49 articles.

1. (2023, June 28). Uranium Reserves, Which Countries Have the Largest Reserves?. Available online: https://www.energy.com.

2. World Nuclear Association (2023, June 30). “Recent Uranium Production”, The Nuclear Fuel Report: Expanded Summary—Global Scenarios for Demand and Supply Availability 2019–2040. Available online: https://world-nuclear.org/getmedia/b488c502-baf9-4142-8d12-42bab97593c3/nuclear-fuel-report-2019-expanded-summary-final.pdf.aspx.

3. International Energy Agency (IEA) (2023, June 30). Key World Energy Statistics. Available online: https://www.ourenergypolicy.org/wp-content/uploads/2016/09/KeyWorld2016.pdf.

4. Preliminary results of the assessment of lithological classifiers for uranium deposits of the infiltration type;Mukhamediev;Cloud Sci.,2020

5. (2023, June 15). Guidelines for Determining the Coefficient of Filtration of Water-Bearing Rocks by Experimental Pumping, Energoizdat. Available online: https://www.geokniga.org/books/17383.

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