Bulletin of the American Physical Society
60th Annual Meeting of the APS Division of Plasma Physics
Volume 63, Number 11
Monday–Friday, November 5–9, 2018; Portland, Oregon
Session NP11: Poster Session V: Laser-plasma Particle Acceleration; HEDP; Turbulence and Transport; DIII-D Tokamak; Machine Learning, Data Science (9:30am-12:30pm)
Wednesday, November 7, 2018
OCC
Room: Exhibit Hall A1&A
Abstract ID: BAPS.2018.DPP.NP11.135
Abstract: NP11.00135 : Inferring time resolved electron temperature of imploded capsules using Convolutional Neural Networks*
Presenter:
Ji Hoon Kang
(Lawrence Livermore National Laboratory)
Authors:
Ji Hoon Kang
(Lawrence Livermore National Laboratory)
Shahab Khan
(Lawrence Livermore Natl Lab)
John E Field
(Lawrence Livermore Natl Lab)
Jayson Dean Lucius Peterson
(Lawrence Livermore Natl Lab)
Ryan Nora
(Lawrence Livermore Natl Lab)
Pravesh K Patel
(Lawrence Livermore Natl Lab)
Here, we illustrate the application of a deep neural network structure to aid in understanding the results from fusion experiments at the National Ignition Facility. X-ray data generated from capsule implosion experiments can be used to infer the temperature of the hot core within the implosion, which can reach several millions of degrees! In order to get the temperature, the measured x-ray data is used in a forward fit algorithm that compares the measurement to synthetic signal based on several models. Since the resulting temperature depends heavily on the model used, there is some uncertainty in this technique. As an alternative, a deep neural network is developed using thousands of 2-D and 3-D hydrodynamic simulations. Several experiments with known electron temperatures will be used as a bridge from simulations to data. This presentation will describe the deep learning technique employed, as well as the parameters and strategy used to match the simulations. The results from this approach will be compared with that obtained with analytical models.
*This work was performed under the auspices of the U.S. Department of Energy by Lawrence Livermore National Laboratory under Contract DE-AC52-07NA27344. LLNL-ABS-753539
To cite this abstract, use the following reference: http://meetings.aps.org/link/BAPS.2018.DPP.NP11.135
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