Disruption predictors are implemented as data-driven models obtained from machine learning techniques. These data-driven models are deduced from a training process with thousands of discharges (both disruptive and non-disruptive). ITER or DEMO, the next step devices cannot afford to wait for hundreds of disruptions to start predicting. A novelty approach for disruption prediction is to avoid the use of past discharges for learning purposes. The objective is to learn in every discharge how a safe plasma evolution is and to trigger an alarm when anomalies in the data flow appear. Of course, these anomalies have to be signatures of the phenomenon's precursors. By applying these ideas in JET to a dataset of more than 1700 non-disruptive shots and more than 550 that ended in a disruption, the success rate is about 90% and the false alarm rate is slightly above 7%. On average, the alarm is triggered with an anticipation time above 200 ms.

Review of disruption predictors in nuclear fusion: Classical, from scratch and anomaly detection approaches

Murari A;
2016

Abstract

Disruption predictors are implemented as data-driven models obtained from machine learning techniques. These data-driven models are deduced from a training process with thousands of discharges (both disruptive and non-disruptive). ITER or DEMO, the next step devices cannot afford to wait for hundreds of disruptions to start predicting. A novelty approach for disruption prediction is to avoid the use of past discharges for learning purposes. The objective is to learn in every discharge how a safe plasma evolution is and to trigger an alarm when anomalies in the data flow appear. Of course, these anomalies have to be signatures of the phenomenon's precursors. By applying these ideas in JET to a dataset of more than 1700 non-disruptive shots and more than 550 that ended in a disruption, the success rate is about 90% and the false alarm rate is slightly above 7%. On average, the alarm is triggered with an anticipation time above 200 ms.
2016
Istituto gas ionizzati - IGI - Sede Padova
Inglese
PROCEEDINGS OF THE IECON 2016 - 42ND ANNUAL CONFERENCE OF THE IEEE INDUSTRIAL ELECTRONICS SOCIETY
42nd Annual Conference of the IEEE-Industrial-Electronics-Society (IECON)
6375
6379
5
9781509034741
http://ieeexplore.ieee.org/abstract/document/7794130/
October 24-27, 2016
Florence, Italy
Anomaly detection
Disruption prediction
Nuclear fusion
http://www.scopus.com/inward/record.url?eid=2-s2.0-85010046954&partnerID=q2rCbXpz / This work was partially funded by the Spanish Ministry of Economy and Competitiveness under the Projects No ENE2015-64914-C3-1-R, ENE2015-64914-C3-2-R and ENE2015-64914-C3-3-R. This work has been carried out within the framework of the EUROfusion Consortium and has received funding from the Euratom research and training programme 2014-2018 under grant agreement No 633053.
9
none
Vega, J; Moreno, R; Pereira, A; Ratta, Ga; Murari, A; Dormidocanto, S; Esquembri, S; Barrera, E; Ruiz, M
273
info:eu-repo/semantics/conferenceObject
04 Contributo in convegno::04.01 Contributo in Atti di convegno
   Implementation of activities described in the Roadmap to Fusion during Horizon 2020 through a Joint programme of the members of the EUROfusion consortium
   EUROfusion
   H2020
   633053
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/20.500.14243/328378
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