An evaluation of the effectiveness of implementing technological solutions based on digital technologies to improve well casing quality

Author:

Shalyapin D. V.1,Bakirov D. L.2,Kuznetsov V. G.3

Affiliation:

1. Industrial University of Tyumen; KogalymNIPIneft Branch of LUKOIL-Engineering LLC

2. LUKOIL-Engineering LLC

3. Industrial University of Tyumen

Abstract

The article presents the process of forming measures based on digital technologies to improve the quality of well cementing at the fields of Western Siberia. The problem associated with the low quality of input information due to the use of several independent sources was identified and solved. The economic efficiency of the developed methods for reducing the labour costs of data collection for modelling using machine learning algorithms is demonstrated. If the solutions developed are implemented, there is a prospect of reducing the cost of repair and insulation work. Key information is provided about the hypotheses generated and their objectives. The authors of the article describe the method of using various mathematical algorithms to analyze the results of industrial experimental work. The efficiency of the developed solutions is evaluated by comparing the results of cementing experimental wells and wells built using the basic technology. The dynamics of cement quality growth in the fields of Western Siberia are summarised as a general result. As a result of the experience gained, the solutions have been adapted and are in the process of being re-implemented in order to make a final assessment of their effectiveness.

Publisher

Industrial University of Tyumen

Subject

General Medicine

Reference10 articles.

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2. Bakirov, D. L., Fattakhov, M. M., Barannikov, Ya. I., Vityaz, A. V., & Abdrahmanov, R. R. (2018). Оptimization of drilling costs and construction of a field facilities in conditions of geological uncertainty. Construction of Oil and Gas Wells on Land and Sea, (10), pp. 22-28. (In Russian). DOI: 10.30713/0130-3872-2018-10-22-28

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4. Vipulanandan, C., Krishnamoorti, R., Saravanan, R., Liu, J., Qu, Q., Narvaez, G.,… Pappas, J. M. (2014). Development and Characterization of Smart Cement for Real Time Monitoring of Ultra-Deepwater Oil Well Cementing Applications. Offshore Technology Conference, Texas, USA, May, 5-8, 2014. (In English). Available at: https://doi.org/10.4043/25099-MS

5. Gurina, E., Klyuchnikov, N., Zaytsev, A., Romanenkova, E., Antipova, K., Simon, I., Makarov, V., & Koroteev, D. (2020). Application of Machine Learning to accidents detection at directional drilling. Journal of Petroleum Science and Engineering, 184. (In English). Available at: https://doi.org/10.1016/j.petrol.2019.106519

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