Machine-learning based prediction of hydrogen/methane mixture solubility in brine

被引:0
|
作者
Farag M. A. Altalbawy [1 ]
Mustafa Jassim Al-saray [2 ]
Krunal Vaghela [3 ]
Nodira Nazarova [4 ]
Raja Praveen K. N. [5 ]
Bharti Kumari [6 ]
Kamaljeet Kaur [7 ]
Salima B. Alsaadi [8 ]
Sally Salih Jumaa [9 ]
Ahmed Muzahem Al-Ani [10 ]
Mohammed Al-Farouni [11 ]
Ahmad Khalid [12 ]
机构
[1] University College of Duba,Department of Chemistry
[2] University of Tabuk,Department of Anesthesia Techniques
[3] Al-Manara College for Medical Sciences,Department of Computer Engineering, Faculty of Engineering & Technology
[4] Marwadi University Research Center,Department of Mathematics and Information Technologies in Education
[5] Marwadi University,Department of Computer Science and Engineering, School of Engineering and Technology
[6] Tashkent State Pedagogical University,NIMS School of Petroleum & Chemical Engineering
[7] JAIN (Deemed to be University),Department of Computer Science and Engineering
[8] NIMS University Rajasthan,Department of Dentistry
[9] Chandigarh College of Engineering,Department of Medical Engineering
[10] Chandigarh Group of Colleges-Jhanjeri,Department of Medical Engineering
[11] Al-Hadi University College,Department of Computers Techniques Engineering, College of Technical Engineering
[12] National University of Science and Technology,Department of Computers Techniques Engineering, College of Technical Engineering
[13] Al-Nisour University College,Department of Computers Techniques Engineering, College of Technical Engineering
[14] The Islamic University,Faculty of Engineering
[15] The Islamic University of Al Diwaniyah,undefined
[16] The Islamic University of Babylon,undefined
[17] Sana’a University,undefined
关键词
Machine learning; Data-driven models; Relevancy factor; Outlier detection;
D O I
10.1038/s41598-024-80959-1
中图分类号
学科分类号
摘要
With regard to underground hydrogen storage projects, presuming that the hydrogen storage site has served as a repository for methane, the coexistence of a blend of methane and hydrogen is anticipated during the incipient stage of hydrogen storage. Therefore, the solubility of hydrogen/methane mixtures in brine becomes imperative. On the contrary, laboratory tasks of such measurements are hard because of its extreme corrosion ability and flammability, hence modeling methodologies are highly preferred. Therefore, in this study, we seek to create accurate data-driven intelligent models based upon laboratory data using hybrid models of adaptive neuro-fuzzy inference system (ANFIS) and least squares support vector machine (LSSVM) optimized with either particle swarm optimization (PSO), genetic algorithm (GA) and coupled simulated annealing (CSA) to predict hydrogen/methane mixture solubility in brine as a function of pressure, temperature, hydrogen mole fraction in hydrogen/methane mixture and brine salt concentration. The results indicate that almost all the gathered experimental data are technically suitable for the model development. The sensitivity study shows that pressure and hydrogen mole fraction in the mixture are strongly related with the solubility data with direct and indirect effects, respectively. The analyses of evaluation indexes and graphical methods indicates that the developed LSSVM-GA and LSSVM-CSA models are the most accurate as they exhibit the lowest AARE% and MSE values and the highest R-squared values. These findings show that machine learning methods could be a useful tool for predicting hydrogen solubility in brine encountered in underground hydrogen storage projects, aiding in the advancement of intelligent, affordable, and secure hydrogen storage technologies.
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