Machine Learning Prediction of Gas Hydrates Phase Equilibrium in Porous Medium

被引:3
作者
Beheshtian, Saeed [1 ]
Roodbari, Sara Kishan [2 ]
Ghorbani, Hamzeh [3 ]
Azodinia, Mohamadreza [4 ]
Mudabbir, Mohamed [5 ]
机构
[1] Islamic Azad Univ, Dept Petr Engn, Omidiyeh Branch, Omidiyeh, Iran
[2] Petr Univ Technol, Gas Engn Dept, Ahvaz, Iran
[3] Univ Tradit Med Armenia, Fac Gen Med, Yerevan, Armenia
[4] Obuda Univ, John Von Neumann Fac Informat, Budapest, Hungary
[5] Obuda Univ, Doctoral Sch Appl Informat & Appl Math, Budapest, Hungary
来源
18TH INTERNATIONAL SYMPOSIUM ON APPLIED COMPUTATIONAL INTELLIGENCE AND INFORMATICS, SACI 2024 | 2024年
关键词
Gas hydrate reservoirs; Thermodynamic aspects; Artificial intelligence techniques; Light Gradient Boosting Machine (LightGBM); Predicting gas hydrate pressure;
D O I
10.1109/SACI60582.2024.10619733
中图分类号
TP18 [人工智能理论];
学科分类号
081104 ; 0812 ; 0835 ; 1405 ;
摘要
Gas hydrate (GH) reservoirs play an important role in the economy of countries and various industries depend on it. Since these reservoirs display specific behavior, understanding their thermodynamic aspects can help engineers to find their behavior. In this study, 1005 data points were collected from an Iranian gas reservoir for the construction and development of three novel machine learning techniques: Extra Tree (ET), Gene Expression Programming (GEP), and Light Gradient Boosting Machine (LightGBM) to predict gas hydrate pressure (P-H). From the total data, 70% was utilized for constructing artificial intelligence algorithms, 15% for testing, and another 15% for validating outputs. Based on analyzing the algorithm results and comparing statistical errors, it is concluded that the LightGBM algorithm exhibits higher performance accuracy compared to other algorithms (RMSE = 1.875 and R2 = 0.97). The LightGBM algorithm has several advantages, including high accuracy, high speed, and high efficiency, as well as a histogram-based approach that enhances performance accuracy through short memory retention. This algorithm utilizes parallel computations, making it suitable for large datasets. Through gradient-based learning, LightGBM captures complex relationships and provides accurate predictions, even with nonlinear patterns. Additionally, it seamlessly handles classification features, eliminates preprocessing needs, and limits excessive internal regularization. Its ability to determine matching meta-parameters and handle unbalanced data enhances its performance.
引用
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页码:417 / 423
页数:7
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