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Disruption prediction with artificial intelligence techniques in tokamak plasmas

Cited 27 time in Web of Science Cited 27 time in Scopus
Authors

Vega, J.; Murari, A.; Dormido-Canto, S.; Ratta, G. A.; Gelfusa, M.; JET Contributors; Na, Yong Su

Issue Date
2022-07
Publisher
Nature Publishing Group
Citation
Nature Physics, Vol.18 No.7, pp.741-750
Abstract
© 2022, Springer Nature Limited.In nuclear fusion reactors, plasmas are heated to very high temperatures of more than 100 million kelvin and, in so-called tokamaks, they are confined by magnetic fields in the shape of a torus. Light nuclei, such as deuterium and tritium, undergo a fusion reaction that releases energy, making fusion a promising option for a sustainable and clean energy source. Tokamak plasmas, however, are prone to disruptions as a result of a sudden collapse of the system terminating the fusion reactions. As disruptions lead to an abrupt loss of confinement, they can cause irreversible damage to present-day fusion devices and are expected to have a more devastating effect in future devices. Disruptions expected in the next-generation tokamak, ITER, for example, could cause electromagnetic forces larger than the weight of an Airbus A380. Furthermore, the thermal loads in such an event could exceed the melting threshold of the most resistant state-of-the-art materials by more than an order of magnitude. To prevent disruptions or at least mitigate their detrimental effects, empirical models obtained with artificial intelligence methods, of which an overview is given here, are commonly employed to predict their occurrence—and ideally give enough time to introduce counteracting measures.
ISSN
1745-2473
URI
https://hdl.handle.net/10371/185198
DOI
https://doi.org/10.1038/s41567-022-01602-2
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