Real-time disruption prediction in multi-dimensional spaces leveraging diagnostic information not available at execution time
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Identifiers
ISSN: 0029-5515
Publication date
Abstract
This article describes the use of privileged information to train supervised classifiers, applied for
the first time to the prediction of disruptions in tokamaks. The objective consists of making
predictions with real-time signals during the discharges (as usual) but after training the predictor
also with any kind of data at training time that is not available during discharge execution. The
latter kind of data is known as privileged information. Taking into account the limited number
of foreseen real time signals for disruption prediction at the beginning of operation in JT-60SA,
a predictor with a line integrated density signal and the mode lock signal as privileged
information has been developed and tested with 1437 JET discharges. The success rate with
positive warning time has been improved from 45.24% to 90.48% and the tardy detection rate
has diminished from 50% to 8.33%. The use of privileged information in an adaptive way also
provides a remarkable reduction of false alarms from 11.53% to 1.15%. The potential of the
methodology, exemplified with data relevant to the beginning of JT-60SA operation, is
absolutely general and can be applied to any combination of diagnostic signals.

