On the prediction of methane adsorption in shale using grey wolf optimizer support vector machine approach

被引:0
|
作者
Rahmad Syah [1 ]
Mohammad Hossein Towfighi Naeem [2 ]
Reza Daneshfar [3 ]
Hossein Dehdar [3 ]
Bahram Soltani Soulgani [3 ]
机构
[1] DS&CI Research Group,Universitas Medan Area
[2] Department of Petroleum Engineering, Faculty of Chemical Engineering, Tarbiat Modares University
[3] Department of Petroleum Engineering, Ahwaz Faculty of Petroleum Engineering, Petroleum University of
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中图分类号
TE319 [模拟理论与计算机技术在开发中的应用];
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摘要
With the advancement of technology, gas shales have become one of the most prominent energy sources all over the world. Therefore, estimating the amount of adsorbed gas in shale resources is necessary for the technical and economic foresight of the production operations. This paper presents a novel machine learning method called grey wolf optimizer support vector machine(GWO-SVM) to predict adsorbed gas.For this purpose, a data set containing temperature, pressure, total organic carbon(TOC), and humidity has been collected from several sources, and the GWO-SVM model was created based on it. The results show that this model has R-squared and root mean square error equal to 0.982 and 0.08, respectively.Also, the results ensure that the proposed model gives an excellent prediction of the amount of adsorbed gas compared to previously proposed models. Besides, according to the sensitivity analysis, among the input parameters, humidity has the highest effect on gas adsorption.
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页码:264 / 269
页数:6
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