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.
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