PHAD: a phase-oriented disruption prediction strategy for avoidance, prevention, and mitigation in JET
Academic Article
Publication Date:
2021
abstract:
The ideal operational scenario for the future tokamak reactor is disruption-free operation.
However, so far all the experimental evidence indicates that disruptions are unavoidable and
can occur with alarming frequency when approaching reactor conditions (low q95, high
radiated fraction, divertor detachment, etc). In this article, a unified strategy for disruption
avoidance, prevention, and mitigation is proposed and validated on JET data. The approach is
based on three phase-oriented predictors to detect the main instabilities leading to the
undesired and sudden end of the discharge. The first model detects dangerous profiles as an
early indication of a critical situation. The second is designed to identify multifaceted
asymmetric radiation from the edge and other abnormal radiative events. The third model is
devoted to mitigation, and triggers alarms around few tens of ms before the beginning of the
current quench. The models have been trained and tested with a database of almost 1000 JET
discharges of recent campaigns with the ITER-like wall. The overall performances are very
close to 100% of successful detections with a few percent of false alarms. In addition to the
first systematic use of visible cameras for disruption prevention in JET, the most relevant
aspect of this work is related to the distribution of the alarms of the three predictors, which do
not overlap and are sequential. Consequently, the three predictors are meant to work in parallel
over running discharges and, depending on which one triggers the alarm, the cause can be
determined and approximate remaining time to intervene can be estimated, potentially
allowing for the optimisation of the remedial actions.
Iris type:
01.01 Articolo in rivista
Keywords:
disruptions; prevention; mitigation; profile indicators; MARFEs; genetic algorithms; avoidance
List of contributors:
Murari, Andrea
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