Disruptions are dangerous events in tokamaks that require mitigation methods to alleviate its detrimental effects. A prerequisite to trigger any mitigation action is the existence of a reliable disruption predictor. This article assesses a predictor that relates in a linear way consecutive samples of a single quantity (in particular, the magnetic perturbation time derivative signal has been used). With this kind of predictor, the recognition of disruptions does not depend on how large the signal amplitude is but on how large the signal increments are: small increments mean smooth plasma evolution whereas abrupt increments reflect a non-smooth evolution and potential risk of disruption. Results are presented with data from the JT-60U tokamak...
A disruption is an event in which the plasma current suddenly shuts down in a tokamak reactor. Estab...
For many years, machine learning tools have proved to be very powerful disruption predictors in toka...
International audienceThe aim of this paper is to present a signal processing algorithm that, applie...
Disruption is a critical phenomenon in a tokamak reactor. Although disruption causes serious damage ...
Understanding the many aspects of tokamak physics requires the development of quite sophisticated mo...
In large-scale tokamaks disruptions have the potential to create serious damage to the facility. Hen...
In large-scale Tokamaks disruptions have the potential to create serious damage to the facility. He...
In this paper we lay the groundwork for a robust cross-device comparison of data-driven disruption p...
Prediction and likelihood identification of high-beta disruption in JT-60U has been discussed by mea...
A disruption prediction system, based on neural networks, is presented in this paper. The system is ...
A disruption prediction system, based on neural networks, is presented in this paper. The system is ...
Disruptions have the potential to create serious damage to large reactor-scale. Thus, disruption de...
Likelihood of high-beta disruption has been discussed from feature extraction using exhaustive searc...
A disruption is an event in which the plasma current suddenly shuts down in a tokamak reactor. Estab...
For many years, machine learning tools have proved to be very powerful disruption predictors in toka...
International audienceThe aim of this paper is to present a signal processing algorithm that, applie...
Disruption is a critical phenomenon in a tokamak reactor. Although disruption causes serious damage ...
Understanding the many aspects of tokamak physics requires the development of quite sophisticated mo...
In large-scale tokamaks disruptions have the potential to create serious damage to the facility. Hen...
In large-scale Tokamaks disruptions have the potential to create serious damage to the facility. He...
In this paper we lay the groundwork for a robust cross-device comparison of data-driven disruption p...
Prediction and likelihood identification of high-beta disruption in JT-60U has been discussed by mea...
A disruption prediction system, based on neural networks, is presented in this paper. The system is ...
A disruption prediction system, based on neural networks, is presented in this paper. The system is ...
Disruptions have the potential to create serious damage to large reactor-scale. Thus, disruption de...
Likelihood of high-beta disruption has been discussed from feature extraction using exhaustive searc...
A disruption is an event in which the plasma current suddenly shuts down in a tokamak reactor. Estab...
For many years, machine learning tools have proved to be very powerful disruption predictors in toka...
International audienceThe aim of this paper is to present a signal processing algorithm that, applie...