Typing of rocks of the Achimov sequence by machine learning methods based on the construction of their volumetric-component model
https://doi.org/10.31660/0445-0108-2025-6-43-56
EDN: ZCFTVQ
Abstract
Achimov sequence sediments in northern West Siberia are a classic example of a complex-built reservoir. Traditional petrophysical interpretation methods often fall short for such reservoir due to high geological heterogeneity, which manifests in wide variety in mineral composition and reservoir properties. The main method for enhancing the reliability of geological interpretation of well log data (WLD) in these sediments is robust lithological typing of the rocks. In this article, the authors suggest an approach to lithological typing based on the development of a Volumetric-Component Model (VCM). In the first stage, the researchers built two VCMs. The number of components for each model is determined using two distinct sets of WLD: an extended set (including Gamma Ray, Neutron Porosity, Litho-Density, Elemental Spectroscopy) and a standard set (Gamma Ray, Neutron Porosity, Litho-Density). In the second stage, these VCMs serve as input data for configuring machine learning algorithms aimed at lithological typing of the rocks. This approach improves the accuracy of lithotype predictions in wells without core compared to the traditional statistical analysis performed directly on original well log curves.
About the Authors
I. R. MakhmutovРоссия
Ilshat R. Makhmutov, Petrophysics Expert; Postgraduate Student
Tyumen
S. K. Turenko
Россия
Sergey K. Turenko, Doctor of Engineering Sciences, Professor, Head of Department of Applied Geophysics
Tyumen
References
1. Makhmutov, I. R., Evdoshchuk, A. A., Grandov, D. V., Plitkina Yu. A., Amosova, I. N., & Volkov, V. A. (2020). Substantiation of rocks typification in the fields of the Vankor cluster: application of modern well logging methods and machine learning algorithms. Russian oil and gas geology (6), pp. 77-86. (In Russian). DOI: 10.31087/0016-7894-2020-6-77-86.
2. Freedman, R., Herron, S., Anand, V., Herron, M., May, D., & Rose, D. (2015). New Method for Determining Mineralogy and Matrix Properties from Elemental Chemistry Measured by Gamma Ray Spectroscopy Logging Tools. SPE Reservoir Evaluation & Engineering, 18(04), pp. 599-608. (In English).
3. Rakaev, I. M., Gadelshin, E. V., Khanafin, I. A., Basyrov, M. A., Zyryanova, I. A., Yatsenko, V. M., … & Kopylov, S. I. (2022). Developing market of domestic hi-tech well survey appliances. Oil industry, (12), pp. 78-82. (In Russian). DOI: 10.24887/0028-2448-2022-12-78-82.
4. Doveton, J. H. (2014). Principles of Mathematical Petrophysics. New York, Oxford University Press Publ., 253 p. (In English).
5. Alekseev, A. D., & Gavrilov, A. E. (2019). Methodical bases for the construction of integrated petrophysical models of unconventional and complex reservoirs based on the special core analysis results. PROneft. Professionals about oil, 3(13), pp. 25-34. (In Russian). DOI: 10.24887/2587-7399-2019-3-25-34.
6. Kossovskaya, A. G., Drits, V. A., & Shutov, V. D. Clay minerals – indicators of deep alteration of terrigenous rocks. Collection of papers “Geochem., mineral. and petr. sedimentary formations”. Moscow, Publishing House of the USSR Academy of Sciences Publ., 1964. (In Russian).
7. Herron, M. M., & Matteson, A. (1993). Elemental Composition and Nuclear Parameters of Some Common Sedimentary Minerals. Nuclear Geophysics (International Journal of Radiation Applications and Instrumentation, Part E); (United Kingdom), 7(3), pp. 383-406. (In English).
8. Model evaluation module. (In Russian). Availabl at: https://scikitlearn.ru/stable/modules/model_evaluation.html (accessed: 15.10.2025).
9. Модуль оценки модели. – Текст : электронный // scikit-learn. ru: сайт. — URL: https://scikit-learn.ru/stable/modules/model_evaluation.html (дата обращения: 15.10.2025).
10. Nesterenko, A. O., Zhizhimontov, I. N., Makhmutov, I. R., & Khramtsov, A. V. (2022). Etrophysical modeling on the basis of the lithological and facial analysis of achimov sediments in northern West Siberia. Karotazhnik, 6(320), рр. 118-131. (In Russian).
Review
For citations:
Makhmutov I.R., Turenko S.K. Typing of rocks of the Achimov sequence by machine learning methods based on the construction of their volumetric-component model. Oil and Gas Studies. 2025;(6):43-56. (In Russ.) https://doi.org/10.31660/0445-0108-2025-6-43-56. EDN: ZCFTVQ
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