Modeling of tensile strength of rocks materials based on support vector machines approaches
暂无分享,去创建一个
Pijush Samui | Umut Okkan | Nurcihan Ceryan | Sener Ceryan | P. Samui | U. Okkan | Nurcihan Ceryan | S. Ceryan | N. Ceryan
[1] M. Ziya Kırmacı,et al. Origin of dolomite in the Late Cretaceous–Paleocene limestone turbidites, Eastern Pontides, Turkey , 2005 .
[2] Ebru Akcapinar Sezer,et al. Artificial neural networks and nonlinear regression techniques to assess the influence of slake durability cycles on the prediction of uniaxial compressive strength and modulus of elasticity for carbonate rocks , 2012 .
[3] Manoj Khandelwal,et al. Evaluation and prediction of blast induced ground vibration using support vector machine , 2010 .
[4] Amir Hossein Alavi,et al. A robust data mining approach for formulation of geotechnical engineering systems , 2011 .
[5] Samui Pijush,et al. Application of Least Square Support Vector Machine (LSSVM) for Determination of Evaporation Losses in Reservoirs , 2011 .
[6] Yossef H. Hatzor,et al. The Influence of Porosity on Tensile and Compressive Strength of Porous Chalks , 2004 .
[7] A. Aydin,et al. The use of Brazilian Test as a Quantitative Measure of Rock Weathering , 2006 .
[8] Okan Fistikoglu,et al. Statistical Downscaling of Monthly Precipitation Using NCEP/NCAR Reanalysis Data for Tahtali River Basin in Turkey , 2011 .
[9] Yen Chin Chou,et al. Determining elastic constants of transversely isotropic rocks using Brazilian test and iterative procedure , 2008 .
[10] I. Yilmaz. Comparison of landslide susceptibility mapping methodologies for Koyulhisar, Turkey: conditional probability, logistic regression, artificial neural networks, and support vector machine , 2010 .
[11] R. Nova,et al. On the Measurement of the Tensile Strength of Soft Rocks , 2005 .
[12] Caijun Shi,et al. Prediction of elastic modulus of normal and high strength concrete by support vector machine , 2010 .
[13] P. Samui. Slope stability analysis: a support vector machine approach , 2008 .
[14] Vojislav Kecman,et al. Learning and Soft Computing: Support Vector Machines, Neural Networks, and Fuzzy Logic Models , 2001 .
[15] B. Amadei,et al. Determination of deformability and tensile strength of anisotropic rock using Brazilian tests , 1998 .
[16] Tian Yingjie,et al. Analysis of soil erosion characteristics in small watersheds with particle swarm optimization, support vector machine, and artificial neuronal networks , 2010 .
[17] Harsha Vardhan,et al. Prediction of Uniaxial Compressive Strength, Tensile Strength and Porosity of Sedimentary Rocks Using Sound Level Produced During Rotary Drilling , 2011 .
[18] Sukumar Bandopadhyay,et al. Machine Learning Algorithms and Their Application to Ore Reserve Estimation of Sparse and Imprecise Data , 2010, J. Intell. Learn. Syst. Appl..
[19] Chuntian Cheng,et al. Using support vector machines for long-term discharge prediction , 2006 .
[20] Ye Jianhong,et al. Estimation of the tensile elastic modulus using Brazilian disc by applying diametrically opposed concentrated loads , 2009 .
[21] R. Nova,et al. AN INVESTIGATION INTO THE TENSILE BEHAVIOUR OF A SCHISTOSE ROCK , 1990 .
[22] Pijush Samui. Least square support vector machine and relevance vector machine for evaluating seismic liquefaction potential using SPT , 2011 .
[23] M. Cai. Practical Estimates of Tensile Strength and Hoek–Brown Strength Parameter mi of Brittle Rocks , 2010 .
[24] Deng Ka-zhong,et al. Study of the method to calculate subsidence coefficient based on SVM , 2009 .
[25] Amir Hossein Alavi,et al. Prediction of principal ground-motion parameters using a hybrid method coupling artificial neural networks and simulated annealing , 2011 .
[26] Jianhua Wang,et al. A support-vector-machine-based method for predicting large-deformation in rock mass , 2010, 2010 Seventh International Conference on Fuzzy Systems and Knowledge Discovery.
[27] A. Shabri,et al. A comparison of time series forecasting using support vector machine and artificial neural network model , 2010 .
[28] Lale Özbakir,et al. Prediction of compressive and tensile strength of limestone via genetic programming , 2008, Expert Syst. Appl..
[29] Rajib Maity,et al. Potential of support vector regression for prediction of monthly streamflow using endogenous property , 2010 .
[30] Ayhan Kesimal,et al. Application of Generalized Regression Neural Networks in Predicting the Unconfined Compressive Strength of Carbonate Rocks , 2012, Rock Mechanics and Rock Engineering.
[31] C. L. Mallows. Some comments on C_p , 1973 .
[32] Chuntian Cheng,et al. A comparison of performance of several artificial intelligence methods for forecasting monthly discharge time series , 2009 .
[33] Bernard Bobée,et al. Daily reservoir inflow forecasting using artificial neural networks with stopped training approach , 2000 .
[34] Amir Hossein Gandomi,et al. Genetic programming and orthogonal least squares: a hybrid approach to modeling the compressive strength of CFRP-confined concrete cylinders , 2010 .
[35] U. Okkan,et al. Reservoir inflow modeling with artificial neural networks: the case of Kemer Dam in Turkey. , 2011 .
[36] Zacharias Agioutantis,et al. Influence of Specimen Shape on the Indirect Tensile Strength of Transversely Isotropic Dionysos Marble Using the Three‐Point Bending Test , 2009 .
[37] O. Ks. Multi-layer perceptrons with Levenberg-Marquardt training algorithm for suspended sediment concentration prediction and estimation , 2004 .
[38] Johan A. K. Suykens,et al. Financial time series prediction using least squares support vector machines within the evidence framework , 2001, IEEE Trans. Neural Networks.
[39] M. Heidari,et al. Predicting the Uniaxial Compressive and Tensile Strengths of Gypsum Rock by Point Load Testing , 2012, Rock Mechanics and Rock Engineering.
[40] Pijush Samui,et al. Machine learning modelling for predicting soil liquefaction susceptibility , 2011 .
[41] Jens Sadowski,et al. Comparison of Support Vector Machine and Artificial Neural Network Systems for Drug/Nondrug Classification , 2003, J. Chem. Inf. Comput. Sci..
[42] T. G. Sitharam,et al. OCR Prediction Using Support Vector Machine Based on Piezocone Data , 2008 .
[43] Arindam Basu,et al. Categorizing weathering grades of quartzitic materials and assessing Brazilian tensile strength with reference to assigned grades , 2012 .
[44] Murat Karakus,et al. Function identification for the intrinsic strength and elastic properties of granitic rocks via genetic programming (GP) , 2011, Comput. Geosci..
[45] M. Çimen,et al. Estimation of daily suspended sediments using support vector machines , 2008 .
[46] Francisco F. Martins,et al. Prediction of the mechanical behavior of the Oporto granite using Data Mining techniques , 2012, Expert Syst. Appl..
[47] Pijush Samui,et al. Application of support vector machine and relevance vector machine to determine evaporative losses in reservoirs , 2012 .
[48] B. Bohloli,et al. A laboratory and full-scale study on the fragmentation behavior of rocks , 2007 .
[49] J. Franklin,et al. The slake-durability test , 1972 .
[50] Johan A. K. Suykens,et al. Benchmarking Least Squares Support Vector Machine Classifiers , 2004, Machine Learning.
[51] L. Tham,et al. Landslide susceptibility mapping based on Support Vector Machine: A case study on natural slopes of Hong Kong, China , 2008 .
[52] T. N. Singh,et al. Prediction of strength properties of some schistose rocks from petrographic properties using artificial neural networks , 2001 .
[53] Johan A. K. Suykens,et al. Least Squares Support Vector Machines , 2002 .
[54] Johan A. K. Suykens,et al. Least Squares Support Vector Machine Classifiers , 1999, Neural Processing Letters.
[55] Özgür Kişi,et al. Multi-layer perceptrons with Levenberg-Marquardt training algorithm for suspended sediment concentration prediction and estimation / Prévision et estimation de la concentration en matières en suspension avec des perceptrons multi-couches et l’algorithme d’apprentissage de Levenberg-Marquardt , 2004 .
[56] D. Marquardt. An Algorithm for Least-Squares Estimation of Nonlinear Parameters , 1963 .
[57] Mohammad Bagher Menhaj,et al. Training feedforward networks with the Marquardt algorithm , 1994, IEEE Trans. Neural Networks.
[58] Bulent Tiryaki,et al. Predicting intact rock strength for mechanical excavation using multivariate statistics, artificial neural networks, and regression trees , 2008 .
[59] Chao-Shi Chen,et al. Measurement of Indirect Tensile Strength of Anisotropic Rocks by the Ring Test , 2001 .
[60] Ozgur Kisi,et al. Flow prediction by three back propagation techniques using k-fold partitioning of neural network training data , 2005 .
[61] N. Innaurato,et al. Indirect tensile testing of anisotropic rocks : 16F, 6T, 5R ROCK MECHANICS, V5, N4, 1973, P215–230 , 1974 .
[62] S. Kahraman,et al. Electrical resistivity measurement to predict uniaxial compressive and tensile strength of igneous rocks , 2010 .
[63] Murat Pala,et al. Tensile strength of basalt from a neural network , 2007 .