Neural networks are trained to evaluate the risk of plasma disruptions in a tokamak experiment using several diagnostic signals as inputs. A saliency analysis confirms the goodness of the chosen inputs, all of which contribute to the network performance. Tests that were carried out refer to data collected from succesfully terminated and disruption terminated pulses performed during two years of JET tokamak experiments. Results show the possibility of developing a neural network predictor that intervenes well in advance in order to avoid plasma disruption or mitigate its effects
Nuclear fusion is one of the most promising sources of clean and sustainable energy, but it still re...
A disruption is an event in which the plasma current suddenly shuts down in a tokamak reactor. Estab...
In this paper, a neural predictor has been built using plasma discharges selected from two years of ...
Neural networks are trained to evaluate the risk of plasma disruptions in a tokamak experiment using...
This paper presents a neural network-based disruption predictor wherein multiple plasma diagnostic s...
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 ...
Nuclear fusion is one of the best options to achieve a virtually limitless energy source in the futu...
The sudden loss of the plasma magnetic confinement, known as disruption, is one of the major issue i...
In this paper, dynamic neural networks are proposed to predict the plasma disruptions in a nuclear f...
The sudden loss of the plasma magnetic confinement, known as disruption, is one of the major issue i...
In view of the future high power nuclear fusion experiments, the early identification of disruptions...
n this paper, a Multi Layer Perceptron is trained to act as disruptions predictor at ASDEX Upgrade. ...
Disruptions have the potential to create serious damage to large reactor-scale. Thus, disruption de...
Reliable disruption prediction (DP) and disruption mitigation systems are considered unavoidable dur...
Nuclear fusion is one of the most promising sources of clean and sustainable energy, but it still re...
A disruption is an event in which the plasma current suddenly shuts down in a tokamak reactor. Estab...
In this paper, a neural predictor has been built using plasma discharges selected from two years of ...
Neural networks are trained to evaluate the risk of plasma disruptions in a tokamak experiment using...
This paper presents a neural network-based disruption predictor wherein multiple plasma diagnostic s...
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 ...
Nuclear fusion is one of the best options to achieve a virtually limitless energy source in the futu...
The sudden loss of the plasma magnetic confinement, known as disruption, is one of the major issue i...
In this paper, dynamic neural networks are proposed to predict the plasma disruptions in a nuclear f...
The sudden loss of the plasma magnetic confinement, known as disruption, is one of the major issue i...
In view of the future high power nuclear fusion experiments, the early identification of disruptions...
n this paper, a Multi Layer Perceptron is trained to act as disruptions predictor at ASDEX Upgrade. ...
Disruptions have the potential to create serious damage to large reactor-scale. Thus, disruption de...
Reliable disruption prediction (DP) and disruption mitigation systems are considered unavoidable dur...
Nuclear fusion is one of the most promising sources of clean and sustainable energy, but it still re...
A disruption is an event in which the plasma current suddenly shuts down in a tokamak reactor. Estab...
In this paper, a neural predictor has been built using plasma discharges selected from two years of ...