Machine Learning Investigation of the Rising Sun Magnetron Design and Operation
暂无分享,去创建一个
[1] M. Parsons,et al. Interpretation of machine-learning-based disruption models for plasma control , 2017 .
[2] Martin T. Hagan,et al. Neural network design , 1995 .
[3] Radford M. Neal. Pattern Recognition and Machine Learning , 2007, Technometrics.
[4] C. Nieter,et al. Accurately and Efficiently Studying the RF Structures Using a Conformal Finite-Difference Time-Domain Particle-in-Cell Method , 2014 .
[5] Michael S. Eldred,et al. DAKOTA : a multilevel parallel object-oriented framework for design optimization, parameter estimation, uncertainty quantification, and sensitivity analysis. Version 5.0, user's reference manual. , 2010 .
[6] J. Browning,et al. Simulation of a rising sun magnetron employing a faceted cathode with a continuous current source , 2014 .
[7] Robert J. Barker,et al. High-power microwave sources and technologies , 2001 .
[8] Gaël Varoquaux,et al. Scikit-learn: Machine Learning in Python , 2011, J. Mach. Learn. Res..
[9] Andriy Burkov,et al. The Hundred-Page Machine Learning Book , 2019 .
[10] Geoffrey E. Hinton,et al. Deep Learning , 2015, Nature.
[11] R. Lemke,et al. Effects that limit efficiency in relativistic magnetrons , 2000 .
[12] François Chollet,et al. Deep Learning with Python , 2017 .
[13] J. Cary,et al. VORPAL: a versatile plasma simulation code , 2004 .
[14] Andreas Christmann,et al. Support vector machines , 2008, Data Mining and Knowledge Discovery Handbook.
[15] Michael M. Kostreva,et al. Methods of Feasible Directions: A Review , 2000 .
[16] Sophia Lefantzi,et al. DAKOTA : a multilevel parallel object-oriented framework for design optimization, parameter estimation, uncertainty quantification, and sensitivity analysis. , 2011 .
[17] Andreas Müller,et al. Introduction to Machine Learning with Python: A Guide for Data Scientists , 2016 .
[18] Dynamic Phase-Control of a Rising Sun Magnetron Using Modulated and Continuous Current , 2016 .