<empty>
Home Trabalhos Científicos Artigos em Revistas Científicas Nuclear Fusion

Nuclear Fusion

Automatic disruption classification at JET: comparison of different pattern recognition techniques

 

Cannas, B., F. Cau, A. Fanni, P. Sonato, M.K. Zedda and JET EFDA contributors

  2006
  DOI
 
Resumo
 

In this paper, different pattern recognition techniques have been tested in order to implement an automatic tool for disruption classification in a tokamak experiment. The methods considered refer to clustering and classification techniques. In particular, the investigated clustering techniques are self-organizing maps and K-means, while the classification techniques are multi-layer perceptrons, support vector machines, and k- nearest neighbours. Training and testing data have been collected selecting suitable diagnostic signals recorded over 4 years of EFDA-JET experiments. Multi-layer perceptron classifiers exhibited the best performance in classifying mode lock, density limit/high radiated power, H-mode/L-mode transition and internal transport barrier plasma disruptions. This classification performance can be increased using multiple classifiers. In particular the outputs of five multi-layer perceptron classifiers have been combined using multiple classifier techniques in order to obtain a more robust and reliable classification tool, that is presently implemented at JET.

 

Versão Portuguesa Englsih Version Páginia Inicial / Main Page

[ Artigos em Revistas Científicas ] [ Comunicações a Reuniões Científicas ] [ Teses de Mestrado ] [ Teses de Doutoramento ] [ Relatórios Internos ]

Webmaster
Copyright © 2008 Centro de Fusão Nuclear