Title of article
Forecast of TEXT plasma disruptions using soft X rays as input signal in a neural network
Author/Authors
Vannucci، A. نويسنده , , Oliveira، K.A. نويسنده , , Tajima، T. نويسنده ,
Issue Information
روزنامه با شماره پیاپی سال 1999
Pages
-254
From page
255
To page
0
Abstract
A feedforward neural network with two hidden layers is used to forecast major and minor disruptive instabilities in TEXT tokamak discharges. Using the experimental data of soft X ray signals as input data, the neural network is trained with one disruptive plasma discharge, and a different disruptive discharge is used for validation. After being properly trained, the networks, with the same set of weights, are used to forecast disruptions in two other plasma discharges. It is observed that the neural network is able to predict the occurrence of a disruption more than 3 ms in advance. This time interval is almost 3 times longer than the one already obtained previously when a magnetic signal from a Mirnov coil was used to feed the neural networks. Visually no indication of an upcoming disruption is seen from the experimental data this far back from the time of disruption. Finally, by observing the predictive behaviour of the network for the disruptive discharges analysed and comparing the soft X ray data with the corresponding magnetic experimental signal, it is conjectured about where inside the plasma column the disruption first started.
Keywords
Helianthus annuus L. , hull-kernel ratio , Pakistan , seed-kernel ratio , seed source
Journal title
Nuclear Fusion
Serial Year
1999
Journal title
Nuclear Fusion
Record number
32670
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