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On the transfer of adaptive predictors between different devices for both mitigation and prevention of disruptions
- Source :
- Nuclear Fusion, Nuclear fusion 60 (2020): 056003-1–056003-18. doi:10.1088/1741-4326/ab77a6, info:cnr-pdr/source/autori:Murari A.; Rossi R.; Peluso E.; Lungaroni M.; Gaudio P.; Gelfusa M.; Ratta G.; Vega J./titolo:On the transfer of adaptive predictors between different devices for both mitigation and prevention of disruptions/doi:10.1088%2F1741-4326%2Fab77a6/rivista:Nuclear fusion/anno:2020/pagina_da:056003-1/pagina_a:056003-18/intervallo_pagine:056003-1–056003-18/volume:60
- Publication Year :
- 2020
-
Abstract
- Notwithstanding the efforts exerted over many years, disruptions remain a major impediment on the route to a magnetic confinement reactor of the Tokamak type. Machine learning predictors, relying on adaptive strategies, have recently proved to achieve very good performance. Even if their last generation implement a "from scratch" approach to learning, i.e. they can start predicting after the first example of each class (safe and disruptive), it would be extremely useful to profit from the experience of previous devices, when new machines come on online, to reduce excessive errors at the beginning of the learning process. In this paper, adaptive predictors, based on ensemble classifiers, have been operated on a series of AUG campaigns and then they have been deployed on several JET campaigns with the ILW, all together covering more than order of magnitude in plasma current. The criteria to normalise the signals and to translate the parameters of the predictors from one device to the other are discussed in detail. With regard to mitigation, the overall performance, both in terms of success rate and false alarms, are quite positive (98% success rate and only 1.9% false alarm rate). Encouraging results have also been obtained for prevention (94.2% success rate and only 7.7 % false alarm rate), by providing as inputs to the classifiers appropriate profile indicators. Even if they require significant refinements, adaptive predictors, capable of capitalising on the experience of smaller devices, have therefore become a serious candidate for deployment in the next generation of machines.
- Subjects :
- Settore FIS/01
Nuclear and High Energy Physics
Adaptive strategies
ensembles of classifier
Computer science
Settore ING-IND/18 - Fisica dei Reattori Nucleari
adaptive learning
transfer learning
Condensed Matter Physics
disruptions
01 natural sciences
Profit (economics)
010305 fluids & plasmas
Reliability engineering
Plasma current
Constant false alarm rate
mitigation
prevention
Software deployment
machine learning predictors
0103 physical sciences
Adaptive learning
Overall performance
010306 general physics
Transfer of learning
Subjects
Details
- ISSN :
- 00295515, 14024896, 07413335, and 10495258
- Database :
- OpenAIRE
- Journal :
- Nuclear Fusion
- Accession number :
- edsair.doi.dedup.....467a869f41d4268df58bee91d65c7f15
- Full Text :
- https://doi.org/10.1088/1741-4326/ab77a6