Disruptions are a potential showstopper on the route to developing a tomakak fusion reactor. Since their consequences can be more severe the larger the devices, in the next generation of machines they will have to be carefully managed from the beginning of operation. On the other hand, in new devices coming on line, the diagnostic coverage is typically limited and there will be no opportunity to collect many examples for the training of traditional machine learning classifiers. It is therefore important to develop predictors that can ideally operate satisfactorily without training and with minimal diagnostic information. A technique capable of satisfying these requirements is described in the present work. It is based on converting the time series of macroscopic basic signals, such as the plasma current or the locked ML, into a string of symbols, before quantifying the complexity of the resulting sequences with permutation entropy. The application to a large dataset of discharges of JET with a metallic wall has provided very interesting results. In addition to good statistical performances, the warning times are sufficient not only for mitigation but also for the prevention of most disruptive events. The transfer of the technique to JET with a carbon wall has also been quite encouraging and therefore it is proposed to deploy the approach in new machines such as JT-60SA and DTT.

Craciunescu, T., Murari, A., Rossi, R., Vega, J., Gelfusa, M. (2025). Symbolic dynamics for disruption prediction in case of data scarcity and diagnostic limitations. PLASMA PHYSICS AND CONTROLLED FUSION, 67(8) [10.1088/1361-6587/adf463].

Symbolic dynamics for disruption prediction in case of data scarcity and diagnostic limitations

Riccardo Rossi;Michela Gelfusa
2025-01-01

Abstract

Disruptions are a potential showstopper on the route to developing a tomakak fusion reactor. Since their consequences can be more severe the larger the devices, in the next generation of machines they will have to be carefully managed from the beginning of operation. On the other hand, in new devices coming on line, the diagnostic coverage is typically limited and there will be no opportunity to collect many examples for the training of traditional machine learning classifiers. It is therefore important to develop predictors that can ideally operate satisfactorily without training and with minimal diagnostic information. A technique capable of satisfying these requirements is described in the present work. It is based on converting the time series of macroscopic basic signals, such as the plasma current or the locked ML, into a string of symbols, before quantifying the complexity of the resulting sequences with permutation entropy. The application to a large dataset of discharges of JET with a metallic wall has provided very interesting results. In addition to good statistical performances, the warning times are sufficient not only for mitigation but also for the prevention of most disruptive events. The transfer of the technique to JET with a carbon wall has also been quite encouraging and therefore it is proposed to deploy the approach in new machines such as JT-60SA and DTT.
2025
Pubblicato
Rilevanza internazionale
Articolo
Esperti anonimi
Settore PHYS-03/A - Fisica sperimentale della materia e applicazioni
Settore PHYS-04/A - Fisica teorica della materia, modelli, metodi matematici e applicazioni
Settore IIND-07/C - Fisica dei reattori nucleari
English
Chaos onset; Concept drift; Disruptions; Permutation entropy; Symbolic dynamics; Tokamaks; Transfer learning
Craciunescu, T., Murari, A., Rossi, R., Vega, J., Gelfusa, M. (2025). Symbolic dynamics for disruption prediction in case of data scarcity and diagnostic limitations. PLASMA PHYSICS AND CONTROLLED FUSION, 67(8) [10.1088/1361-6587/adf463].
Craciunescu, T; Murari, A; Rossi, R; Vega, J; Gelfusa, M
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/2108/447024
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