Evolving support vector regression using Grey Wolf optimization; forecasting the geomechanical properties of rock

被引:0
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作者
Chuanhua Xu
Menad Nait Amar
Mohammed Abdelfetah Ghriga
Hocine Ouaer
Xiliang Zhang
Mahdi Hasanipanah
机构
[1] Sinosteel Maanshan Institute of Mining Research,State Key Laboratory of Safety and Health for Metal Mines
[2] Co.,Département Etudes Thermodynamiques
[3] Ltd.,Institut des Sciences Analytiques et de Physico
[4] Division Laboratoires,Chimie Pour l’Environnement et les Matériaux, IPREM, UMR 5254
[5] CNRS Université de Pau et des Pays de l’Adour/E2S,Laboratoire Génie Physique des Hydrocarbures, Faculté des Hydrocarbures et de la Chimie
[6] Université M’Hamed Bougara de Boumerdes,Département Gisement Miniers et Pétroliers
[7] Université M’Hamed Bougara de Boumerdes,State Key Laboratory of Safety and Health for Metal Mines
[8] Sinosteel Maanshan Institute of Mining Research,Institute of Research and Development
[9] Co.,undefined
[10] Ltd.,undefined
[11] Duy Tan University,undefined
来源
关键词
Uniaxial compressive strength; Shear strength; Support vector regression; Optimization algorithms;
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学科分类号
摘要
The geomechanical properties of rock, including shear strength (SS) and uniaxial compressive strength (UCS), are very important parameters in designing rock structures. To improve the accuracy of SS and UCS prediction, this study presented an evolving support vector regression (SVR) using Grey Wolf optimization (GWO). To examine the feasibility and applicability of the SVR-GWO model, the differential evolution (DE) and artificial bee colony (ABC) algorithms were also used. In other words, the SVR hyperparameters were tuned using the GWO, DE, and ABC algorithms. To implement the proposed models, a comprehensive database accessible in an open-source was used in this study. Finally, the comparative experiments such as root mean square error (RMSE) were conducted to show the superiority of the proposed models. The SVR-GWO model predicted the SS and UCS with RMSE of 0.460 and 3.208, respectively, while, the SVR-DE model predicted the SS and UCS with RMSE of 0.542 and 5.4, respectively. Furthermore, the SVR-ABC model predicted the SS and UCS with RMSE of 0.855 and 5.033, respectively. The aforementioned results clearly exhibited the applicability as well as the usability of the proposed SVR-GWO model in the prediction of both SS and UCS parameters. Accordingly, the SVR-GWO model can be also applied to solving various complex systems, especially in geotechnical and mining fields.
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页码:1819 / 1833
页数:14
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