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research article

Full-Pulse Tomographic Reconstruction with Deep Neural Networks

Ferreira, Diogo R.
•
Carvalho, Pedro J.
•
Fernandes, Horacio
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January 1, 2018
Fusion Science And Technology

Plasma tomography consists of reconstructing a two-dimensional radiation profile of a poloidal cross section of a fusion device based on line-integrated measurements along several lines of sight. The reconstruction process is computationally intensive, and in practice, only a few reconstructions are usually computed per pulse. In this work, we trained a deep neural network based on a large collection of sample tomograms that have been produced at JET over several years. Once trained, the network is able to reproduce those results with high accuracy. More importantly, it can compute all the tomographic reconstructions for a given pulse in just a few seconds. This makes it possible to visualize several phenomena-such as plasma heating, disruptions, and impurity transport-over the course of the entire pulse.

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Type
research article
DOI
10.1080/15361055.2017.1390386
Web of Science ID

WOS:000436997000006

Author(s)
Ferreira, Diogo R.
Carvalho, Pedro J.
Fernandes, Horacio
Abduallev, S.
Abhangi, M.
Abreu, P.
Afzal, M.
Aggarwal, K. M.
Ahlgren, T.
Ahn, J. H.
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Date Issued

2018-01-01

Published in
Fusion Science And Technology
Volume

74

Issue

1-2

Start page

47

End page

56

Subjects

Nuclear Science & Technology

•

plasma tomography

•

deep learning

•

convolutional neural networks

•

impurity injection

•

bolometer system

•

jet

•

transport

Note

2nd International Atomic Energy Agency (IAEA) Technical Meeting (TM) on Fusion Data Processing, Validation, and Analysis (IAEA-TM), May 30-Jun 02, 2017, Cambridge, MA

Editorial or Peer reviewed

REVIEWED

Written at

EPFL

EPFL units
SPC  
Available on Infoscience
September 20, 2019
Use this identifier to reference this record
https://infoscience.epfl.ch/handle/20.500.14299/161382
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