Publication Date:
2021
abstract:
In nuclear fusion experiments, massive databases of time series signals
store all relevant information about the plasma evolution. However, most
of the physics knowledge remains hidden due to two factors. On the one
hand, most measurements are taken by indirect methods and the
inversion techniques are quite complex. On the other hand, the plasma
shows highly non-linear interactions that are difficult to model. The ITER
database is expected to store more than 1 Tbyte of data per discharge
(about 1 million signals, mainly time series and video-movies) and the
extraction of hidden knowledge will be essential. One of the most
important aspects in ITER will be the automatic recognition of off-normal events as the plasma evolves. A crucial objective is the real-time
determination of this kind of events. However, this is an extremely difficult
task not tackled so far that requires off-line analysis of the databases to
develop proper methods to be applied under real-time requirements. This
work presents a three step off-line method to perform the temporal location
of anomalies, the unsupervised grouping of events and the potential
analysis of causal relationships. An example of the latter can be the
sequence of events that can produce different types of plasma disruptions.
The first step of the method is the recognition and temporal location of
anomalies by analyzing multi-dimensional parameter spaces made up of
plasma quantities. The second step consists of determining characteristic
time lengths of such anomalies. The third step is the unsupervised
classification of the events in order to assign labels to each class of
physics event. The unsupervised classification into different classes is
used to filter out those groups without statistical relevance.
Iris type:
04.02 Abstract in Atti di convegno
Keywords:
Nuclear fusion; Data mining; Unsupervised classification
List of contributors: