Title of article :
Improved feature selection based on genetic algorithms for real time disruption prediction on JET
Author/Authors :
Rattل، نويسنده , , G.A. and Vega، نويسنده , , J. and Murari، نويسنده , , A.، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2012
Pages :
9
From page :
1670
To page :
1678
Abstract :
The early prediction of disruptions is an important aspect of the research in the field of Tokamak control. A very recent predictor, called “Advanced Predictor Of Disruptions” (APODIS), developed for the “Joint European Torus” (JET), implements the real time recognition of incoming disruptions with the best success rate achieved ever and an outstanding stability for long periods following training. In this article, a new methodology to select the set of the signals’ parameters in order to maximize the performance of the predictor is reported. The approach is based on “Genetic Algorithms” (GAs). With the feature selection derived from GAs, a new version of APODIS has been developed. The results are significantly better than the previous version not only in terms of success rates but also in extending the interval before the disruption in which reliable predictions are achieved. Correct disruption predictions with a success rate in excess of 90% have been achieved 200 ms before the time of the disruption. The predictor response is compared with that of JETʹs Protection System (JPS) and the ADODIS predictor is shown to be far superior. Both systems have been carefully tested with a wide number of discharges to understand their relative merits and the most profitable directions of further improvements.
Keywords :
feature extraction , Prediction , disruptions , JET , Genetic algorithms
Journal title :
Fusion Engineering and Design
Serial Year :
2012
Journal title :
Fusion Engineering and Design
Record number :
2370236
Link To Document :
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