Plasma Kink Classification Using Deep Learning
POSTER
Abstract
Contacts: mteng-levy@lanl.gov, bwolfe@lanl.gov
Many types of plasma instabilities are observed in laboratory plasma experiments. Even though the fundamental mechanisms are known, many phenomena and features of plasma instabilities are too complex to be fully describable by theory or even simulations. For example, in plasma jets, a rich variety of plasma kinks can arise, which differ in kink amplitudes, radial acceleration, temporal evolution, transition to Rayleigh-Taylor instability, and break-away of the plasma jet. Classification of plasma kinks using machine learning offers a new approach to study and understand the complexity of plasma kinks. Furthermore, accumulative plasma movies from Caltech offer a sufficiently large amount of data for this work [1]. We adopt deep neutral network classification methods such as alexnet, Resnet18 for the plasma kink image classification workflow. In biological terms, our longer term goal of classifying plasma kinks is to connect phenotypical features from the images to genotypical or physical interpretation of the observations.
[1] You, S., Yun, G. S., & Bellan, P. M. 2005, PhRvL, 95, 04500.
Many types of plasma instabilities are observed in laboratory plasma experiments. Even though the fundamental mechanisms are known, many phenomena and features of plasma instabilities are too complex to be fully describable by theory or even simulations. For example, in plasma jets, a rich variety of plasma kinks can arise, which differ in kink amplitudes, radial acceleration, temporal evolution, transition to Rayleigh-Taylor instability, and break-away of the plasma jet. Classification of plasma kinks using machine learning offers a new approach to study and understand the complexity of plasma kinks. Furthermore, accumulative plasma movies from Caltech offer a sufficiently large amount of data for this work [1]. We adopt deep neutral network classification methods such as alexnet, Resnet18 for the plasma kink image classification workflow. In biological terms, our longer term goal of classifying plasma kinks is to connect phenotypical features from the images to genotypical or physical interpretation of the observations.
[1] You, S., Yun, G. S., & Bellan, P. M. 2005, PhRvL, 95, 04500.
Presenters
-
Miles T Teng-Levy
Los Alamos National Laboratory
Authors
-
Miles T Teng-Levy
Los Alamos National Laboratory
-
Bradley T Wolfe
Los Alamos National Laboratory
-
Yi Zhou
Caltech
-
Ryan S Marshall
Caltech, TAE Technologies, Inc., TAE Technologies
-
Paul M Bellan
Caltech
-
Zhehui Wang
LLNL, Los Alamos Natl Lab