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A New Model for Estimation of Bubble Point Pressure Using a Bayesian Optimized Least Square Gradient Boosting Ensemble

Author

Listed:
  • Saad Alatefi

    (Department of Petroleum Engineering Technology, College of Technological Studies, PAAET, P.O. Box 42325, Shuwaikh 70654, Kuwait)

  • Abdullah M. Almeshal

    (Department of Electronic Engineering Technology, College of Technological Studies, PAAET, P.O. Box 42325, Shuwaikh 70654, Kuwait)

Abstract

Accurate estimation of crude oil Bubble Point Pressure (Pb) plays a vital rule in the development cycle of an oil field. Bubble point pressure is required in many petroleum engineering calculations such as reserves estimation, material balance, reservoir simulation, production equipment design, and optimization of well performance. Additionally, bubble point pressure is a key input parameter in most oil property correlations. Thus, an error in a bubble point pressure estimate will definitely propagate additional error in the prediction of other oil properties. Accordingly, many bubble point pressure correlations have been developed in the literature. However, they often lack accuracy, especially when applied for global crude oil data, due to the fact that they are either developed using a limited range of independent variables or developed for a specific geographic location (i.e., specific crude oil composition). This research presents a utilization of the state-of-the-art Bayesian optimized Least Square Gradient Boosting Ensemble (LS-Boost) to predict bubble point pressure as a function of readily available field data. The proposed model was trained on a global crude oil database which contains (4800) experimentally measured, Pressure–Volume–Temperature (PVT) data sets of a diverse collection of crude oil mixtures from different oil fields in the North Sea, Africa, Asia, Middle East, and South and North America. Furthermore, an independent (775) PVT data set, which was collected from open literature, was used to investigate the effectiveness of the proposed model to predict the bubble point pressure from data that were not used during the model development process. The accuracy of the proposed model was compared to several published correlations (13 in total for both parametric and non-parametric models) as well as two other machine learning techniques, Multi-Layer Perceptron Neural Networks (MPL-ANN) and Support Vector Machines (SVM). The proposed LS-Boost model showed superior performance and remarkably outperformed all bubble point pressure models considered in this study.

Suggested Citation

  • Saad Alatefi & Abdullah M. Almeshal, 2021. "A New Model for Estimation of Bubble Point Pressure Using a Bayesian Optimized Least Square Gradient Boosting Ensemble," Energies, MDPI, vol. 14(9), pages 1-21, May.
  • Handle: RePEc:gam:jeners:v:14:y:2021:i:9:p:2653-:d:549239
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    References listed on IDEAS

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    1. Salaheldin Elkatatny & Tamer Moussa & Abdulazeez Abdulraheem & Mohamed Mahmoud, 2018. "A Self-Adaptive Artificial Intelligence Technique to Predict Oil Pressure Volume Temperature Properties," Energies, MDPI, vol. 11(12), pages 1-14, December.
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    Cited by:

    1. Naser Golsanami & Bin Gong & Sajjad Negahban, 2022. "Evaluating the Effect of New Gas Solubility and Bubble Point Pressure Models on PVT Parameters and Optimizing Injected Gas Rate in Gas-Lift Dual Gradient Drilling," Energies, MDPI, vol. 15(3), pages 1-25, February.

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