Article

Progress on statistical learning systems as data mining tools for the creation of automatic databases in Fusion environments

JET_EFDA, Culham Science Center, OX14 3DB, Abingdon, UK; Asociación EURATOM/CIEMAT para Fusión. Avda. Complutense, 22, 28040 Madrid, Spain; Associazione EURATOM-ENEA per la Fusione, Consorzio RFX, 4-35127 Padova, Italy; Dpto. Informática y Automática, UNED, Madrid, Spain
Fusion Engineering and Design DOI:10.1016/j.fusengdes.2009.10.011 pp.399-402

ABSTRACT Nowadays, processing all information of a fusion database is a much more important issue than acquiring more data. Although typically fusion devices produce tens of thousands of discharges, specialized databases for physics studies are normally limited to a few tens of shots. This is due to the fact that these databases are almost always generated manually, which is a very time consuming and unreliable activity. The development of automatic methods to create specialized databases ensures first, the reduction of human efforts to identify and locate physical events, second, the standardization of criteria (reducing the vulnerability to human errors) and, third, the improvement of statistical relevance. Classification and regression techniques have been used for these purposes. The objective has been the automatic recognition of physical events (that can appear in a random and/or infrequent way) in waveforms and video-movies. Results are shown for the JET database.

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Keywords

databases
 
fusion database
 
fusion devices
 
human efforts
 
human errors
 
infrequent way
 
JET database
 
physical events
 
physics studies
 
regression techniques
 
specialized databases
 
specialized databases ensures first
 
standardization
 
statistical relevance
 
thousands
 
unreliable activity
 
vulnerability