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Deep neural networks for plasma tomography with applications to JET and COMPASS

Academic Article
Publication Date:
2019
abstract:
Convolutional neural networks (CNNs) have found applications in many image processing tasks, such as feature extraction, image classification, and object recognition. It has also been shown that the inverse of CNNs, so-called deconvolutional neural networks, can be used for inverse problems such as plasma tomography. In essence, plasma tomography consists in reconstructing the 2D plasma profile on a poloidal cross-section of a fusion device, based on line-integrated measurements from multiple radiation detectors. Since the reconstruction process is computationally intensive, a deconvolutional neural network trained to produce the same results will yield a significant computational speedup, at the expense of a small error which can be assessed using different metrics. In this work, we discuss the design principles behind such networks, including the use of multiple layers, how they can be stacked, and how their dimensions can be tuned according to the number of detectors and the desired tomographic resolution for a given fusion device. We describe the application of such networks at JET and COMPASS, where at JET we use the bolometer system, and at COMPASS we use the soft X-ray diagnostic based on photodiode arrays.
Iris type:
01.01 Articolo in rivista
Keywords:
Computerized Tomography (CT) and Computed Radiography (CR); Plasma diagnostics - interferometry spectroscopy and imaging
List of contributors:
Rigamonti, Davide; Schmuck, Stefan; Brunetti, Daniele; Mariani, Alberto; Murari, Andrea; Pomaro, Nicola; Sozzi, Carlo; Taliercio, Cesare; Ghezzi, FRANCESCO MAURO; Gervasini, Gabriele; Innocente, Paolo; Vianello, Nicola; Predebon, Italo; Terranova, David; Piovesan, Paolo; Figini, Lorenzo; Bonfiglio, Daniele; Brombin, Matteo; Lazzaro, Enzo; Nowak, Silvana; Laguardia, Laura; PERELLI CIPPO, Enrico; Ricci, Daria; Alessi, Edoardo; Giacomelli, LUCA CARLO; Puiatti, MARIA ESTER; Paccagnella, Roberto; Causa, Federica; Rebai, Marica; Muraro, Andrea; Uccello, Andrea; Valisa, Marco; Marchetto, Chiara; Tardocchi, Marco; Carraro, Lorella; Mantica, Paola; Manduchi, Gabriele; Pasqualotto, Roberto
Authors of the University:
ALESSI EDOARDO
BONFIGLIO DANIELE
BROMBIN MATTEO
CARRARO LORELLA
CAUSA FEDERICA
FIGINI LORENZO
GERVASINI GABRIELE
GHEZZI FRANCESCO MAURO
INNOCENTE PAOLO
LAGUARDIA LAURA
MANDUCHI GABRIELE
MARCHETTO CHIARA
MARIANI ALBERTO
MURARI ANDREA
MURARO ANDREA
PASQUALOTTO ROBERTO
PERELLI CIPPO ENRICO
POMARO NICOLA
PREDEBON ITALO
REBAI MARICA
RIGAMONTI DAVIDE
SOZZI CARLO
TARDOCCHI MARCO
TERRANOVA DAVID
UCCELLO ANDREA
VIANELLO NICOLA
Handle:
https://iris.cnr.it/handle/20.500.14243/366725
Published in:
JOURNAL OF INSTRUMENTATION
Journal
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URL

https://iopscience.iop.org/article/10.1088/1748-0221/14/09/C09011/meta
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