Disruption prediction investigations using Machine Learning tools on DIII-D and Alcator C-Mod
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N. W. Eidietis | Kevin Montes | Cristina Rea | Robert S. Granetz | R. A. Tinguely | Jeremy M. Hanson | B Sammuli | R. A. Tinguely | C. Rea | N. Eidietis | R. Granetz | J. Hanson | K. Montes | B. Sammuli
[1] Stephen V. Stehman,et al. Selecting and interpreting measures of thematic classification accuracy , 1997 .
[2] H. Zohm,et al. Neoclassical Tearing Modes , 2000 .
[3] Wendell Horton,et al. Neural network prediction of some classes of tokamak disruptions , 1996 .
[4] Ethem Alpaydin,et al. Introduction to machine learning , 2004, Adaptive computation and machine learning.
[5] Cristina Rea,et al. A Customer Relationship Management Case Study Based on Banking Data , 2016, MOD.
[6] J. T. Scoville,et al. Critical error fields for locked mode instability in tokamaks , 1992 .
[7] Gaël Varoquaux,et al. Scikit-learn: Machine Learning in Python , 2011, J. Mach. Learn. Res..
[8] Pedro Larrañaga,et al. A review of feature selection techniques in bioinformatics , 2007, Bioinform..
[9] Plasma. Chapter 3: MHD stability, operational limits and disruptions , 1999 .
[10] J. Contributors,et al. Survey of disruption causes at JET , 2011 .
[11] L. Lao,et al. Reconstruction of current profile parameters and plasma shapes in tokamaks , 1985 .
[12] J. T. Scoville,et al. Nonaxisymmetric field effects on Alcator C-Moda) , 2005 .
[13] L. L. Lao,et al. Advanced tokamak research in DIII-D , 2004 .
[14] M. Preynas,et al. Advances in lower hybrid current drive technology on Alcator C-Mod , 2013 .
[15] E A Baltz,et al. Achievement of Sustained Net Plasma Heating in a Fusion Experiment with the Optometrist Algorithm , 2017, Scientific Reports.
[16] Cristina Rea,et al. Exploratory Machine Learning Studies for Disruption Prediction Using Large Databases on DIII-D , 2018 .
[17] Jet Efda Contributors,et al. A cross-tokamak neural network disruption predictor for the JET and ASDEX Upgrade tokamaks , 2005 .
[18] J. Stillerman,et al. The MDSplus data acquisition system, current status and future directions , 1999 .
[19] Piergiorgio Sonato,et al. Support Vector Machines for disruption prediction and novelty detection at JET , 2007 .
[20] T. Tajima,et al. Forecast of TEXT plasma disruptions using soft X rays as input signal in a neural network , 1999 .
[21] A. D. Turnbull,et al. Integrated modeling applications for tokamak experiments with OMFIT , 2015 .
[22] S. A. Sabbagh,et al. Detection of disruptions in the high-β spherical torus NSTX , 2013 .
[23] R. Yoshino. Neural-net disruption predictor in JT-60U , 2003 .
[24] R. E. Bell,et al. A reduced resistive wall mode kinetic stability model for disruption forecasting , 2017 .
[25] J. Vega,et al. Results of the JET real-time disruption predictor in the ITER-like wall campaigns , 2012 .
[26] Alessandra Fanni,et al. Disruption forecasting at JET using neural networks , 2002 .
[27] E. J. Strait,et al. Magnetic diagnostic system of the DIII-D tokamak , 2006 .
[28] Leo Breiman,et al. Random Forests , 2001, Machine Learning.
[29] Y. R. Martin,et al. Considerations on energy confinement time scalings using present tokamak databases and prediction for ITER size experiments , 2000 .
[30] N. W. Eidietis,et al. TokSearch: A search engine for fusion experimental data , 2018 .
[31] J. A. Leuer,et al. Tokamak disruption alarm based on a neural network model of the high- beta limit , 1997 .
[32] J. Contributors,et al. Statistical analysis of disruptions in JET , 2009 .
[33] L. L. Lao,et al. Real time equilibrium reconstruction for tokamak discharge control , 1998 .
[34] R. Sweeney,et al. Statistical analysis of m/n = 2/1 locked and quasi-stationary modes with rotating precursors at DIII-D , 2016, 1606.04183.
[35] Piergiorgio Sonato,et al. Automatic disruption classification at JET: comparison of different pattern recognition techniques , 2006 .
[36] K. F. Mast,et al. On-line prediction and mitigation of disruptions in ASDEX Upgrade , 2002 .
[37] Piergiorgio Sonato,et al. A prediction tool for real-time application in the disruption protection system at JET , 2007 .
[38] Leo Breiman,et al. Classification and Regression Trees , 1984 .