Oil production management based on neural network optimization of well operation at the pilot project site of the Vatyeganskoe field (Territorial Production Enterprise Povkhneftegaz)

Author:

Brilliant Leonid1,Dulkarnaev Marat2,Danko Mikhail1,Elisheva Aleksandra1,Nabiev Dinar1,Khutornaya Anastasiya1,Malkov Ivan1

Affiliation:

1. Tyumen Oil & Gas Institute

2. ООО LUKOIL-Zapadnaya Sibir TPE Povkhneftegaz

Abstract

Optimization of the “mature” fields development in machine learning algorithms is one of the urgent problems nowadays. The task is set to extend the effective operation of wells, optimize production management at the late stage of field development. Based on the task set, the article provides an overview of possible solutions in waterflooding management problems. Production management technology is considered as an alternative to intensification of operation, which is associated with an increase in the produciton rate and involves finding solutions aimed at reducing the water cut of well production. The practical implementation of the “Neural technologies for production improvement” includes the following steps: evaluation, selection, predictive analytics. The result is a digital technological regime of wells that corresponds to the set goal and the solution of the optimization problem in artificial intelligence algorithms using the software and hardware complex “Atlas – Waterflood Management”. “Neural technologies for production improvement” have been successfully tested at the pilot project site of the productive formation of the Vatyeganskoe field. The article provides a thorough and detailed analysis of the work performed, describes the algorithms and calculation results of the proxy model using the example of the pilot area, as well as the integration of the “Atlas – Waterflood Management” and the organization of the workflow with the field professionals of the Territorial Production Enterprise Povkhneftegaz.

Publisher

Georesursy

Subject

Geology,Geophysics

Reference19 articles.

1. Albertoni, Alejandro & Lake, Larry (2003). Inferring Interwell Connectivity Only From Well-Rate Fluctuations in Waterfloods. SPE Reservoir Evaluation & Engineering, 6, pp. 6–16. https://doi.org/10.2118/83381-PA

2. Arefiev S.V., Yunusov R.R., Valeev A.S., Kornienko A.N., Dulkarnaev M.R., Labutin D.V., Brilliant L.S., Pecherkin M.F., Kokorin D.A., Grandov D.V., Komyagin A.I. (2017). Methodical foundations and experience in the implementation of digital technologies for operational planning and management of the operating modes of production and injection wells in the OPR area of the Yuv1 reservoir of the Vatjeganskoye deposit of the Povkhneftegaz TPP (OOO Lukoil-Western Siberia). Nedropolzovanie XXI vek, 6(69), pp. 60–81. (In Russ.)

3. Brilliant L.S. (2018). Digital Solutions for Production Management at Mature Oil Fields. Neft. Gaz. Novatsii, 4, pp. 61–64. (In Russ.)

4. Brilliant L.S., Dulkarnaev M.R., Danko M.Yu., Elisheva A.O., Tsinkevich O.V. (2020). Challenges of efficient brownfield development: architecture of digital solutions in control of well operation conditions. Nedropolzovanie XXI vek, 4(87), pp. 98–107. (In Russ.)

5. Brilliant L.S., Komyagin A.I., Blyashuk M.M., Tsinkevich O.V., Zhuravleva A.A. (2017). The method of operational control of waterflooding. Patent RF 2614338; publ. 24.03.2017.

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