Mining of Mineral Deposits

ISSN 2415-3443 (Online)

ISSN 2415-3435 (Print)

Flag Counter

Neural network analysis of safe life of the oil and gas industrial structures

Yurii Vynnykov1, Maksym Kharchenko1, Svitlana Manhura1, Aleksej Aniskin2, Andrii Manhura3

1National University “Yuri Kondratyuk Poltava Polytechnic”, Poltava, Ukraine

2University North, Varaždin, Croatia

3Ukrainian Research Institute of Natural Gases, Kharkiv, Ukraine


Min. miner. depos. 2024, 18(1):37-44


https://doi.org/10.33271/mining18.01.037

Full text (PDF)


      ABSTRACT

      Purpose is to study safe life of industrial (metal) structures under long-time operation in the corrosive-active media of oil and gas wells with the help of neural network analysis.

      Methods. The MATLAB system (MATrix LABoratory) was selected as the tool environment for interface modelling; the system is developed by Math Works Inc. and is a high-level programming language for technical computations. Of the three existing learning paradigms, we used the “with teacher” learning process, as we believed that a neural network had correct answers (network outputs) for each input example. The coefficients were adjusted so that the network gave answers being as close as possible to the known correct answers.

      Findings. An artificial neural network has helped obtain a generalized diagram of the expected areas of high viscoplastic characteristics of carbon steels used to manufacture metal structures in the oil and gas industry. While applying the trained neural networks, generalized dependences of the corrosion rates of structural steels on the parameters of media with different concentrations of chlorine ions, sulphate ions, hydrogen sulphide, carbon dioxide, carbon dioxide, and oxygen ions were obtained; they were the basis to predict corrosion behaviour of steels.

      Originality. For the first time, the possibility of applying neural network modelling to predict local corrosion damage of structural pipe steels has been shown in terms of the “steel 20 – oxygen and chloride-containing medium” system. For the first time, the technological possibility has been demonstrated to use neural network analysis for engineering predictive assessment of corrosion activity of binary systems of simulated solutions, which are most often found under industrial conditions of the oil and gas sector of the economy.

      Practical implications. The proposed technology of using the neural network analysis will make it possible to expand a range of predicted values beyond experimental data, i.e. to predict the value of Vcor in very dilute or concentrated salt solutions within the acidified and neutral pH ranges. It should be noted that the error of the prediction results shown by the neural network will increase along with distancing from the scope of experimental data.

      Keywords: corrosion, crack resistance, ions, neuron, modelling, pitting


      REFERENCES

  1. Makarenko, V., & Shatilo, S. (1999). Increasing desulphurisation of the metal of welded joints in oil pipelines. Welding International, 13(12), 991-995. https://doi.org/10.1080/09507119909452086
  2. Radkevych, O., P’yasets’kyi, O., & Vasylenko, I. (2000). Corrosion-mechanical resistance of pipe steel in hydrogen-sulfide containing media. Materials Science, 36(3), 425-430. https://doi.org/10.1007/bf02769606
  3. Martinez, F., Briones, F., Villarroel, M., & Vera, R. (2018). Effect of atmospheric corrosion on the mechanical properties of SAE 1020 structural steel. Materials (Basel), 11(4), 591. https://doi.org/10.3390/ma11040591
  4. Raffik, M., & Salleh, S. (2017). Effect of heat-treatment on the hardness and mechanical properties of boron alloyed steel. MATEC Web of Conference, 90, 01014. https://doi.org/10.1051/matecconf/20179001014
  5. Makarenko, V., Vynnykov, Yu., & Manhura, A. (2020). Investigation of the mechanical properties of pipes for long-term cooling systems. International Conference on Building Innovations, 73, 151-160. https://doi.org/10.1007/978-3-030-42939-3_17
  6. Zhou, F., Dai, J., Gao, J., Zhou, Q., & Li, L. (2020). The X80 pipeline steel produced by a novel ultra fast cooling process. Journal of Physics: Conference Series, 1676, 012102. https://doi.org/10.1088/1742-6596/1676/1/012102
  7. Prifiharni, S., Sugandi, M., Pasaribu, R., Sunardi, S., & Mabruri, E. (2019). Investigation of corrosion rate on the modified 410 martensitic stainless steel in tempered condition. IOP Conference Series: Materials Science and Engineering, 541, 012001. https://doi.org/10.1088/1757-899X/541/1/012001
  8. Makarenko, V., Manhura, A., & Makarenko, I. (2020) Calculation method of safe operation resource evaluation of metal constructions for oil and gas purpose. Proceedings of the 2nd International Conference on Building Innovations, 73, 641-649. https://doi.org/10.1007/978-3-030-42939-3_63
  9. Vynnykov, Y., Kharchenko, M., Manhura, S., Aniskin, A., Hajiyev, M., & Manhura, A. (2022). Analysis of corrosion fatigue steel strength of pump rods for oil wells. Mining of Mineral Deposits, 16(3), 31-37. https://doi.org/10.33271/mining16.03.031
  10. Figueredo, R., Oliveira, M., Paula, L., Acciari, H., & Codaro, E. (2018). A comparative study of hydrogen-induced cracking resistances of API 5L B and X52MS carbon steels. International Journal of Corrosion, 2018, 1604507. https://doi.org/10.1155/2018/1604507
  11. Ismail, N., Khatif, N., Kecik, M., & Shaharudin, M. (2016). The effect of heat treatment on the hardness and impact properties of medium carbon steel. IOP Conference Series: Materials Science and Engineering, 114, 012108. https://doi.org/10.1088/1757-899X/114/1/012108
  12. Yuzevych, L., Yankovska, L., Sopilnyk, L., Yuzevych, V., Skrynkovskyy, R., Koman, B., Yasinska-Damri, L., Heorhiadi, N., Dzhala, R., & Yasinskyi, M. (2019). Improvement of the toolset for diagnosing underground pipelines of oil and gas enterprises considering changes in internal working pressure. Eastern-European Journal of Enterprise Technologies, 6(5(102)), 23-29. https://doi.org/10.15587/1729-4061.2019.184247
  13. El May, M., Saintier, N., Palin-Luc, T., Devos, O., & Brucelle, O. (2018). Modelling of corrosion fatigue crack initiation on martensitic stainless steel in high cycle fatigue regime. Corrosion Science, 133, 397-405. https://doi.org/10.1016/j.corsci.2018.01.034
  14. Gopalaswami, N., Liu, Y., Laboureur, D.M., Zhang, B., & Mannan, M. (2019). Experimental study on propane jet fire hazards: Comparison of main geometrical features with empirical models. Journal of Loss Prevention in the Process Industries, 41, 365-375. https://doi.org/10.1016/j.jlp.2016.02.003
  15. Hu, J., Du, L., Xie, H., Gao, X., & Misra, R. (2014). Microstructure and mechanical properties of TMCP heavy plate microalloyed steel. Materials Science and Engineering: A, 607, 122-131. https://doi.org/10.1016/j.msea.2014.03.133
  16. Wang, X., Yuan, G., Zhao, J., & Wang, G. (2020). Microstructure and strengthening/toughening mechanisms of heavy gauge pipeline steel processed by ultrafast cooling. Metals, 10(10), 1323. https://doi.org/10.3390/met10101323
  17. Qin, M., Li, J., Chen, S., & Qu, Y. (2016). Experimental study on stress corrosion crack propagation rate of FV520B in carbon dioxide and hydrogen sulfide solution. Results in Physics, 6, 365-372. https://doi.org/10.1016/j.rinp.2016.06.012
  18. Yuzevych, V., Dzhala, R., & Koman, B. (2018). Analysis of metal corrosion under conditions of mechanical impacts and aggressive environments. Metallofizika i Novitni Tekhnologii, 39(12), 1655-1667. https://doi.org/10.15407/mfint.39.12.1655
  19. Zulkifli, F., Ali, N., Yusof, M., Khairul, W., Rahamathullah, R., Isa, M., & Wan Nik, W. (2017). The effect of concentration of Lawsonia inermis as a corrosion inhibitor for aluminum alloy in seawater. Advances in Physical Chemistry, 2017, 8521623. https://doi.org/10.1155/2017/8521623
  20. Makarenko, V., Manhura, S., Kharchenko, M., Melnikov, O., & Manhura, A. (2021). Study of corrosion and mechanical resistance of structural pipe steels of long-term operation in hydrogen sulfur containing. Materials Science Forum, 1045, 203-211. https://doi.org/10.4028/www.scientific.net/MSF.1045.203
  21. Colorado-Garrido, D., Ortega-Toledo, D., Hernández, J., González-Rodrí-guez, J., & Uruchurtu, J. (2008). Neural networks for Nyquist plots prediction during corrosion inhibition of a pipeline steel. Journal of Solid State Electrochemistry, 13(11), 1715-1722. https://doi.org/10.1007/s10008-008-0728-7
  22. Liao, K., Yao, Q., Wu, X., & Jia, W. (2012). Numerical corrosion rate prediction method for direct assessment of wet gas gathering pipelines internal corrosion. Energies, 5(10), 3892-3907. https://doi.org/10.3390/en5103892
  23. Zhang, K., Shen, Y., Palulli, R., Ghobadian, A., Nouri, J., & Duwig, C. (2023). Combustion characteristics of steam-diluted decomposed ammonia in multiple-nozzle direct injection burner. International Journal of Hydrogen Energy, 48(42), 16083-16099. https://doi.org/10.1016/j.ijhydene.2023.01.091
  24. Bukhamseen, N.Y., & Ertekin, T. (2017). The use of artificial neural networks to quantify the effect of formation damage on well production response. SPE Kingdom of Saudi Arabia Annual Technical Symposium and Exhibition, SPE-188094-MS. https://doi.org/10.2118/188094-MS
  25. Allegrini, E., Vadenbo, C., Boldrin, A., & Astrup, T. (2015). Life cycle assessment of resource recovery from municipal solid waste incineration bottom ash. Journal of Environmental Management, 151, 132-143. https://doi.org/10.1016/j.jenvman.2014.11.032
  26. Esmaeili, A., Elahifar, B., Fruhwirth, R., & Thonhauser, G. (2012). ROP modeling using neural network and drill string vibration data. SPE Kuwait International Petroleum Conference and Exhibition, 1-13. https://doi.org/10.2118/163330
  27. Lozovan, V., Dzhala, R., Skrynkovskyy, R., & Yuzevych, V. (2019). Detection of specific features in the functioning of a system for the anti-corrosion protection of underground pipelines at oil and gas enterprises using neural networks. Eastern-European Journal of Enterprise Technologies, 1(5(97)), 20-27. https://doi.org/10.15587/1729-4061.2019.154999
  28. Lozovan, V., Skrynkovskyy, R., Yuzevych, V., Yasinskyi, M., & Pawlowski, G. (2019). Forming the toolset for development of a system to control quality of operation of underground pipelines by oil and gas enterprises with the use of neural networks. Eastern-European Journal of Enterprise Technologies, 2(5(98)), 41-48. https://doi.org/10.15587/1729-4061.2019.161484
  29. Alloush, R., Elkatatny, S., Mohmoud, M., Moussa, T., Ali, A., & Abdulraheem, A. (2017). Estimation of geomechanical failure parameters from well logs using artificial intelligence techniques. Kuwait Oil & Gas Show and Conference, 9(10), 165-177 https://doi.org/10.2118/187625-MS
  30. Лицензия Creative Commons