Disruptions remain the biggest threat to the safe operation of tokamaks. To efficiently mitigate the negative effects, it is now considered important not only to predict their occurrence but also to be able to determine, with high probability, the type of disruption about to occur. This paper reports the results obtained using the nonlinear generative topographic map manifold learning technique for the automatic classification of disruption types. It has been tested using an extensive database of JET discharges selected from JET campaigns from C15 (year 2005) up to C27 (year 2009). The success rate of the classification is extremely high, sometimes reaching 100%, and therefore the prospects for the deployment of this tool in real time are very promising.

Automatic disruption classification based on manifold learning for real-time applications on JET

A Murari;
2013

Abstract

Disruptions remain the biggest threat to the safe operation of tokamaks. To efficiently mitigate the negative effects, it is now considered important not only to predict their occurrence but also to be able to determine, with high probability, the type of disruption about to occur. This paper reports the results obtained using the nonlinear generative topographic map manifold learning technique for the automatic classification of disruption types. It has been tested using an extensive database of JET discharges selected from JET campaigns from C15 (year 2005) up to C27 (year 2009). The success rate of the classification is extremely high, sometimes reaching 100%, and therefore the prospects for the deployment of this tool in real time are very promising.
2013
Istituto gas ionizzati - IGI - Sede Padova
Inglese
53
9
11
http://iopscience.iop.org/0029-5515/53/9/093023/pdf/0029-5515_53_9_093023.pdf
Sì, ma tipo non specificato
-
This work was supported by the Euratom Communities under the contract of Association between EURATOM/ENEA. "Funding under Association Contract FU07-CT-2007-00053". / Article Number: 093023. La rivista è pubblicata anche online con ISSN 1741-4326.
6
info:eu-repo/semantics/article
262
Cannas, B; Fanni, A; Murari, A; Pau, A; Sias, G; EFDA Contributorsa, Jet
01 Contributo su Rivista::01.01 Articolo in rivista
none
   EU Fusion for ITER Applications
   EUFORIA
   FP7
   211804
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/20.500.14243/221126
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