Nalazite se na CroRIS probnoj okolini. Ovdje evidentirani podaci neće biti pohranjeni u Informacijskom sustavu znanosti RH. Ako je ovo greška, CroRIS produkcijskoj okolini moguće je pristupi putem poveznice www.croris.hr
izvor podataka: crosbi

Adaptive learning for disruption prediction in non-stationary conditions (CROSBI ID 272753)

Prilog u časopisu | izvorni znanstveni rad | međunarodna recenzija

(JET Contributors) Murari, A. ; Lungaroni, M. ; Gelfusa, M. ; Peluso, E. ; Vega, J. Adaptive learning for disruption prediction in non-stationary conditions // Nuclear fusion, 59 (2019), 8; 086037, 11. doi: 10.1088/1741-4326/ab1ecc

Podaci o odgovornosti

Murari, A. ; Lungaroni, M. ; Gelfusa, M. ; Peluso, E. ; Vega, J.

JET Contributors

engleski

Adaptive learning for disruption prediction in non-stationary conditions

For many years, machine learning tools have proved to be very powerful disruption predictors in tokamaks. On the other hand, the vast majority of the techniques deployed assume that the input data is independent and is sampled from exactly the same probability distribution for the training set, the test set and the final real time deployment. This hypothesis is certainly not verified in practice, since the experimental programmes evolve quite rapidly, resulting typically in ageing of the predictors and consequent suboptimal performance. This paper describes various adaptive training strategies that have been tested to maintain the performance of disruption predictors in non- stationary conditions. The proposed approaches have been implemented using new ensembles of classifiers, explicitly developed for the present application. The improvements in performance are unquestionable and, given the difficulties encountered so far in translating predictors from one device to another, the proposed adaptive methods from scratch can therefore be considered a useful option in the arsenal of alternatives envisaged for the next generation of devices, particularly at the very beginning of their operation.

disruptions ; machine learning predictors ; adaptive training ; de-learning ; obsolescence ; ensembles of classifiers

nije evidentirano

nije evidentirano

nije evidentirano

nije evidentirano

nije evidentirano

nije evidentirano

Podaci o izdanju

59 (8)

2019.

086037

11

objavljeno

0029-5515

1741-4326

10.1088/1741-4326/ab1ecc

Povezanost rada

Fizika

Poveznice
Indeksiranost