Support vector machine as an alternative method for lithology classification of crystalline rocks
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Heping Pan | Ahmed Amara Konaté | Chengxiang Deng | Sinan Fang | Ruidong Qin | H. Pan | A. Konaté | Sinan Fang | Chengxiang Deng | Ruidong Qin
[1] Zhang Ze,et al. Geochemistry of eclogites from the main hole (100 - 2050m) of the Chinese Continental Scientific Drilling Project , 2004 .
[2] S. Cuddy,et al. Litho-Facies and Permeability Prediction from Electrical Logs using Fuzzy Logic , 2000 .
[3] Hui Han,et al. Borderline-SMOTE: A New Over-Sampling Method in Imbalanced Data Sets Learning , 2005, ICIC.
[4] Nitesh V. Chawla,et al. SMOTE: Synthetic Minority Over-sampling Technique , 2002, J. Artif. Intell. Res..
[5] Corinna Cortes,et al. Support-Vector Networks , 1995, Machine Learning.
[6] Sid-Ali Ouadfeul,et al. Lithofacies Classification Using the Multilayer Perceptron and the Self-organizing Neural Networks , 2012, ICONIP.
[7] J. Asfahani,et al. Basalt identification by interpreting nuclear and electrical well logging measurements using fuzzy technique (case study from southern Syria). , 2015, Applied radiation and isotopes : including data, instrumentation and methods for use in agriculture, industry and medicine.
[8] Saumen Maiti,et al. Neural network modeling and an uncertainty analysis in Bayesian framework: A case study from the KTB borehole site , 2010 .
[9] Muhammad M. Saggaf,et al. A fuzzy logic approach for the estimation of facies from wire-line logs , 2003 .
[10] Laibin Zhang,et al. Predicting formation lithology from log data by using a neural network , 2008 .
[11] Charles L. Karr,et al. Determination of lithology from well logs using a neural network , 1992 .
[12] Tom Horrocks,et al. Evaluation of Automated Lithology Classification Architectures using Highly-Sampled Wireline Logs for Coal Exploration , 2015, Comput. Geosci..
[13] G. Wadge,et al. Inferring the lithology of borehole rocks by applying neural network classifiers to downhole logs: an example from the Ocean Drilling Program , 1999 .
[14] Li Rong,et al. Application of Principal Component Analysis and Least Square Support Vector Machine to Lithology Identification , 2009 .
[15] Lutz Hamel,et al. Advanced classification of carbonate sediments based on physical properties , 2015 .
[16] I. D. Gates,et al. Support vector regression for porosity prediction in a heterogeneous reservoir: A comparative study , 2010, Comput. Geosci..
[17] Heping Pan,et al. Capability of self-organizing map neural network in geophysical log data classification: Case study from the CCSD-MH , 2015 .
[18] Ali Salehi,et al. Lithology prediction by support vector classifiers using inverted seismic attributes data and petrophysical logs as a new approach and investigation of training data set size effect on its performance in a heterogeneous carbonate reservoir , 2015 .
[19] Wencai Yang,et al. Deep root of a continent–continent collision belt: Evidence from the Chinese Continental Scientific Drilling (CCSD) deep borehole in the Sulu ultrahigh-pressure (HP–UHP) metamorphic terrane, China , 2009 .
[20] Heping Pan,et al. Performance of the synergetic wavelet transform and modified K-means clustering in lithology classification using nuclear log , 2016 .
[21] Ian Witten,et al. Data Mining , 2000 .
[22] Zhizhang Wang,et al. Lithology identification using kernel Fisher discriminant analysis with well logs , 2016 .
[23] Si Wu,et al. Improving support vector machine classifiers by modifying kernel functions , 1999, Neural Networks.
[24] Zeming Zhang,et al. Mineral and fluid inclusions in zircon of UHP metamorphic rocks from the CCSD-main drill hole: A record of metamorphism and fluid activity , 2006 .
[25] H. C. Chen,et al. Identification of lithofacies using Kohonen self-organizing maps , 2002 .
[26] Günter Zimmermann,et al. Integrated log interpretation in the German Continental Deep Drilling Program: Lithology, porosity, and fracture zones , 1997 .
[27] Ian D. Gates,et al. A support vector machine algorithm to classify lithofacies and model permeability in heterogeneous reservoirs , 2010 .
[28] Chih-Jen Lin,et al. A comparison of methods for multiclass support vector machines , 2002, IEEE Trans. Neural Networks.
[29] Heping Pan,et al. Well logging responses of UHP metamorphic rocks from CCSD main hole in Sulu terrane, eastern central China , 2010 .
[30] Edward Y. Chang,et al. Class-Boundary Alignment for Imbalanced Dataset Learning , 2003 .
[31] R. K. Tiwari,et al. A Hybrid Monte Carlo Method Based Artificial Neural Networks Approach for Rock Boundaries Identification: A Case Study from the KTB Bore Hole , 2009 .
[32] L. N. Berry,et al. Determination of Lithology From Well Logs by Statistical Analysis , 1987 .
[33] Lutz Hamel,et al. Knowledge Discovery with Support Vector Machines , 2009 .
[34] Colin MacBeth,et al. Effects of Learning Parameters on Learning Procedure and Performance of a BPNN , 1997, Neural Networks.
[35] David Bosch,et al. Fuzzy Logic Determination of Lithologies from Well Log Data: Application to the KTB Project Data set (Germany) , 2013, Surveys in Geophysics.
[36] Saumen Maiti,et al. Neural network modelling and classification of lithofacies using well log data: A case study from KTB borehole site , 2007 .
[37] S. Rocky Durrans,et al. Lithofacies identification using multiple adaptive resonance theory neural networks and group decision expert system , 2000 .
[38] Bieng-Zih Hsieh,et al. Lithology identification of aquifers from geophysical well logs and fuzzy logic analysis: Shui-Lin Area, Taiwan , 2005, Comput. Geosci..
[39] Mohammad Ali Sebtosheikh,et al. Support vector machine method, a new technique for lithology prediction in an Iranian heterogeneous carbonate reservoir using petrophysical well logs , 2015, Carbonates and Evaporites.
[40] Jacques Pelissier-Combescure,et al. Faciolog - Automatic Electrofacies Determination , 1982 .
[41] Olivier Peyret,et al. Automatic Determination of Lithology From Well Logs , 1987 .
[42] Vojislav Kecman,et al. Support Vector Machines – An Introduction , 2005 .