An Optimized Hybrid Intelligent System for High-Accuracy Dewpoint Pressure Estimation

Authors

  • Ibrahim Ali Farea Emirates International University image/svg+xml Author
  • Abdelrigeeb Al-Gathe Department of Petroleum Engineering, Faculty of Engineering and Petroleum, University of Hadhramout, Al-Al-Mukulla, Yemen Author
  • Abdulrahman A. Kadi Department of oil and gas Engineering, Faculty of Engineering and Computing, University of Science & Technology, Aden, Yemen Author
  • Abdulla Ali Aldambi Faculty of Science, Department of geology, University of Aden Aden, Yemen Author

DOI:

https://doi.org/10.20428/jst.v30i10.3222

Keywords:

Artificial intelligence , Hybrid models , Neuro-Fuzz , PSONN , Dewpoint Pressure

Abstract

Dewpoint pressure (DPP) is a critical property of gas condensate reservoir development. Accurately estimating this property remains a significant challenge. Existing empirical correlations and iterative methods lack sufficient accuracy due to complexity and computational intensity. However, despite their utilization involving complex computations, they have not achieved sufficient accuracy. Several individual intelligent systems have been utilized to predict this property with good accuracy, but the application of hybrid models is less common. Therefore, this study proposes two hybrid intelligent models—Particle Swarm Optimization combined with Neural Networks (PSONN) and Neuro-Fuzzy (NFuzzy)—to enhance prediction accuracy of dewpoint pressure. Approximately 860 collected data points were used to develop these hybrid models. Inputs such as temperature (T), hydrocarbon composition, specific gravity, and molecular weight of heptane plus were utilized to predict the dewpoint pressure. In this study, the performance of both intelligent hybrid systems is compared to the most widely published Artificial Intelligence (AI) models. Based on statistical error analysis results, the new hybrid models outperform the published models. The results confirm that the PSONN hybrid model achieved the best performance with an absolute percent relative error (APRE) of 2.47%.

Author Biography

  • Ibrahim Ali Farea, Emirates International University

    Ibrahim Ali Farea

    Department of Oil and Gas Engineering, faculty of Engineering and IT, Emirates International University, Sanaa, Yemen
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Published

2025-10-10

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How to Cite

Farea, I. A., Al-Gathe, A., A. Kadi, A., & Aldambi, A. A. (2025). An Optimized Hybrid Intelligent System for High-Accuracy Dewpoint Pressure Estimation. Emirates International University Digital Repository, 1(1). https://doi.org/10.20428/jst.v30i10.3222

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